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Do older adults take action to reduce fall risk after attending a community-based fall risk screening?

  • Received: 24 May 2024 Revised: 13 October 2024 Accepted: 29 October 2024 Published: 07 November 2024
  • We investigated whether older adults take action to reduce their fall risk after attending a community-based fall risk screening and receiving individual fall prevention recommendations. Older adults attending a free community-based fall risk screening received tailored advice from occupational and physical therapists based on their risk factors. Approximately three months after the screening, participants completed an interview survey via phone to understand actions taken due to the screening and recommendations. Sixteen participants completed the follow-up, and eleven took action or made behavioral changes. The most reported changes included being more cautious with functional mobility, walking speed, or stance, increased physical activity or exercise participation, and increased awareness of environmental hazards. Community-based fall risk screenings may motivate older adults to make behavioral changes to reduce fall risk; however, further research is needed to identify ways to improve the impact of community fall risk screenings and fall prevention recommendations.

    Citation: John V. Rider, Shannon Martin, Erin Vieira. Do older adults take action to reduce fall risk after attending a community-based fall risk screening?[J]. AIMS Medical Science, 2024, 11(4): 464-479. doi: 10.3934/medsci.2024032

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  • We investigated whether older adults take action to reduce their fall risk after attending a community-based fall risk screening and receiving individual fall prevention recommendations. Older adults attending a free community-based fall risk screening received tailored advice from occupational and physical therapists based on their risk factors. Approximately three months after the screening, participants completed an interview survey via phone to understand actions taken due to the screening and recommendations. Sixteen participants completed the follow-up, and eleven took action or made behavioral changes. The most reported changes included being more cautious with functional mobility, walking speed, or stance, increased physical activity or exercise participation, and increased awareness of environmental hazards. Community-based fall risk screenings may motivate older adults to make behavioral changes to reduce fall risk; however, further research is needed to identify ways to improve the impact of community fall risk screenings and fall prevention recommendations.



    1. Introduction

    The Cahn–Hilliard system

    {ut=κΔμ, κ>0,μ=αΔu+f(u), α>0, (1.1)

    and, equivalently, the Cahn–Hilliard equation

    ut+ακΔ2uκΔf(u)=0 (1.2)

    play an essential role in materials science as they describe important qualitative features of two-phase systems related with phase separation processes, assuming isotropy and a constant temperature. This can be observed, e.g., when a binary alloy is cooled down sufficiently. One then observes a partial nucleation (i.e., the apparition of nuclides in the material) or a total nucleation, known as spinodal decomposition: the material quickly becomes inhomogeneous, resulting in a very finely dispersed microstructure. In a second stage, which is called coarsening, occurs at a slower time scale and is less understood, these microstructures coarsen. Such phenomena play an essential role in the mechanical properties of the material, e.g., strength, hardness, fracture toughness and ductility. We refer the reader to, e.g., [58,60,255,259,276,277,311,313] for more details.

    Here, u is the order parameter (one usually considers a rescaled density of atoms or concentration of one of the material's components which takes values between 1 and 1, 1 and 1 corresponding to the pure states; the density of the second component is 1u, meaning that the total density is a conserved quantity) and μ is the chemical potential. Furthermore, f is the derivative of a double-well potential F whose wells correspond to the phases of the material. A thermodynamically relevant potential F is the following logarithmic function which follows from a mean-field model:

    F(s)=θc2(1s2)+θ2[(1s)ln(1s2)+(1+s)ln(1+s2)], s(1,1), 0<θ<θc, (1.3)

    i.e.,

    f(s)=θcs+θ2ln1+s1s, (1.4)

    although such a function is very often approximated by regular ones, typically, F(s)=14(s21)2, i.e., f(s)=s3s; more generally, one can take F(s)=14(s2β2)2, βR. The logarithmic terms in (1.3) correspond to the entropy of mixing and θ and θc are proportional to the absolute temperature (assumed constant during the process) and a critical temperature, respectively; the condition θ<θc ensures that F has indeed a double-well form and that phase separation can occur. Also note that the polynomial approximation is reasonable when the quench is shallow, i.e., when the absolute temperature is close to the critical one. Finally, κ is the mobility and α is related to the surface tension at the interface.

    We assume in this article that the mobility is a strictly positive constant. Actually, κ is often expected to depend on the order parameter and to degenerate at the singular points of f in the case of a logarithmic nonlinear term (see [59,138,139,178,370]; see also [373] for a discussion in the context of immiscible binary fluids). Note however that this essentially restricts the diffusion process to the interfacial region and is observed, typically, when the movements of atoms are confined to this region (see [330]). In that case, the first equation of (1.1) reads

    ut=div(κ(u)μ),

    where, typically, κ(s)=1s2. In particular, the existence of solutions to the Cahn–Hilliard equation with degenerate mobilities and logarithmic nonlinearities is proved in [138]. The asymptotic behavior, and, more precisely, the existence of attractors, of the Cahn–Hilliard equation with nonconstant mobilities is studied in [342,343].

    From a phenomenological point of view, the Cahn–Hilliard system can be derived as follows. One considers the following (total) free energy, called Ginzburg–Landau free energy:

    ΨΩ(u,u)=Ω(α2|u|2+F(u))dx, (1.5)

    where || denotes the usual Euclidean norm and ΩRn, n=1, 2 or 3, is the domain occupied by the material.

    We can note that the gradient term in the Ginzburg–Landau free energy accounts for the fact that the interactions between the material's components are assumed to be short-ranged. Actually, this term is obtained by approximation of a nonlocal term which also accounts for long-ranged interactions (see [60]). The Cahn–Hilliard equation, with a nonlocal term, was derived rigorously by G. Giacomin and J.L. Lebowitz in [188,189], based on stochastic arguments, by considering a lattice gas with long range Kac potentials (i.e., the interaction energy between two particles at x and y (x, yZn) is given by γnK(γ|xy|), γ>0 being sent to 0 and K being a smooth function). In that case, the (total) free energy reads

    ΨΩ(u)=Tn[f(u(x))+u(x)TnK(|xy|)(1u(y))dy]dx, (1.8)

    where Tn is the n-dimensional torus. Furthermore, rewriting the total free energy in the form

    ΨΩ(u)=Tn[f(u(x))+k1(x)u(x)(1u(x))+12TnK(|xy|)|u(x)u(y)|2dy]dx,

    where k1(x)=TnK(|xy|)dy, one can, by expanding the last term and keeping only some terms in the expansion, recover the Ginzburg–Landau free energy (this is reasonable when the scale on which the free energy varies is large compared with γ1; the macroscopic evolution is observed here on the spatial scale γ1 and time scale γ2). Such models were studied, e.g., in [2,23,162,168] (see also [72,216,217,218] for the numerical analysis and simulations).

    One then has the mass balance

    ut=divh, (1.6)

    where h is the mass flux which is related to the chemical potential μ by the following (postulated) constitutive equation which resembles the Fick's law:

    h=κμ. (1.7)

    The usual definition of the chemical potential is that it is the derivative of the free energy with respect to the order parameter. Here, such a definition is incompatible with the presence of u in the free energy. Instead, μ is defined as a variational derivative of the free energy with respect to u, which yields (assuming proper boundary conditions)

    μ=αΔu+f(u), (1.8)

    whence the Cahn–Hilliard system.

    The Cahn–Hilliard system/equation is now well understood, at least from a mathematical point of view. In particular, one has a rather complete picture as far as the existence, the uniqueness and the regularity of solutions and the asymptotic behavior of the associated dynamical system are concerned. We refer the reader to (among a huge literature), e.g., [4,31,53,88,91,116,123,132,134,138,140,143,163,164,172,245,258,264,274,301,302,305,307,308,309,310,311,313,326, 329,335,349,368,376]. As far as the asymptotic behavior of the system is concerned, one has, in particular, the existence of finite-dimensional attractors. Such sets give information on the global/ all possible dynamics of the system. Furthermore, the finite dimensionality means, very roughly speaking, that, even though the initial phase space is infinite-dimensional, the limit dynamics can be described by a finite number of parameters. We refer the interested reader to, e.g., [15,92,125,303,349] for more details and discussions on this. One also has the convergence of single trajectories to steady states.

    Now, it is interesting to note that the Cahn–Hilliard equation and some of its variants are also relevant in other phenomena than phase separation in binary alloys. We can mention, for instance, dealloying (this can be observed in corrosion processes, see [145]), population dynamics (see [95]), tumor growth (see [14,244]), bacterial films (see [253]), thin films (see [315,350]), chemistry (see [354]), image processing (see [24,25,66,73,124]) and even the rings of Saturn (see [353]) and the clustering of mussels (see [271]).

    In particular, several such phenomena can be modeled by the following generalized Cahn–Hilliard equation:

    ut+ακΔ2uκΔf(u)+g(x,u)=0, α, κ>0 (1.9)

    (here, α and κ do not necessarily have the same physical meaning as in the original Cahn–Hilliard equation). The above general equation contains, in particular, the following models:

    (ⅰ) Mixed Allen–Cahn/Cahn–Hilliard system. In that case, we consider the following system of equations:

    {ut=ε2DΔμμ, D, ε>0,μ=Δu+f(u)ε2,

    which can be rewritten, equivalently, as

    ut+ε2DΔ2uΔ(Df(u)+u)+f(u)ε2=0

    and is indeed of the form above. In particular, without the term ε2DΔμ in the first equation, we have the Allen–Cahn equation and, without the term μ, we have the Cahn–Hilliard equation. These equations were proposed in order to account for microscopic mechanisms such as surface diffusion and adsorption/desorption (see [238,240,241,281]) and were studied in [232,233,234,235,239].

    (ⅱ) Cahn–Hilliard–Oono equation (see [287,314,355]). In that case,

    g(x,s)=g(s)=βs, β>0.

    This function was proposed in [314] in order to account for long-ranged (i.e., nonlocal) interactions in phase separation, but also to simplify numerical simulations, due to the fact that we do not have to account for the conservation of mass (see below), although it seems that this equation has never been considered in simulations. A variant of this model, proposed in [90] to model microphase separation of diblock copolymers, consists in taking

    g(x,s)=g(s)=β(s1Vol(Ω)Ωu0(x)dx), β>0,

    where u0 is the initial condition. In that case, we have the conservation of mass and efficient simulations, based on multigrid solvers, were performed in [13]. This variant of the Cahn–Hilliard–Oono equation can also be coupled with the incompressible Navier–Stokes equations to model a chemically reacting binary fluid (see [228,229]; see also [43] for the mathematical analysis).

    (ⅲ) Proliferation term. In that case,

    g(x,s)=g(s)=λs(s1), λ>0.

    This function was proposed in [244] in view of biological applications and, more precisely, to model wound healing and tumor growth (in one space dimension) and the clustering of brain tumor cells (in two space dimensions); see also [354] for other quadratic functions with chemical applications and [14] for other polynomials with biological applications.

    (ⅳ) Fidelity term. In that case,

    g(x,s)=λ0χΩD(x)(sh(x)), λ0>0, DΩ, hL2(Ω),

    where χ denotes the indicator function, and we consider the following equation:

    ut+εΔ2u1εΔf(u)+g(x,u)=0, ε>0.

    Written in this way, ε corresponds to the interface thickness. This function g was proposed in [24,25] in view of applications to image inpainting. Here, h is a given (damaged) image and D is the inpainting (i.e., damaged) region. Furthermore, the fidelity term g(x,u) is added in order to keep the solution close to the image outside the inpainting region. The idea in this model is to solve the equation up to steady state to obtain an inpainted (i.e., restored) version u(x) of h(x).

    The generalized equation (1.9) was studied in [288,292] (see also [148]) under very general assumptions on the additional term g, when endowed with Dirichlet boundary conditions. In that case, one essentially recovers the results (well-posedness, regularity and existence of finite-dimensional attractors) known for the original Cahn–Hilliard equation. The case of Neumann boundary conditions is much more involved, due to the fact that one no longer has the conservation of mass, i.e., of the spatial average of the order parameter, when compared with the original Cahn–Hilliard equation with Neumann boundary conditions (see [73,74,85,148,149]).

    Another variant of the Cahn–Hilliard equation, which we will not address in this review, is concerned with higher-order Cahn–Hilliard models. More precisely, G. Caginalp and E. Esenturk recently proposed in [57] (see also [70]) higher-order phase-field models in order to account for anisotropic interfaces (see also [254,348,363] for other approaches which, however, do not provide an explicit way to compute the anisotropy). More precisely, these authors proposed the following modified free energy, in which we omit the temperature:

    ΨHOGL=Ω(12Mi=1|k|=iak|Dku|2+F(u))dx, MN, (1.10)

    where, for k=(k1,k2,k3)(N{0})3,

    |k|=k1+k2+k3

    and, for k(0,0,0),

    Dk=|k|xk11xk22xk33

    (we agree that D(0,0,0)v=v). The corresponding higher-order Cahn–Hilliard equation then reads

    utΔMi=1(1)i|k|=iakD2kuΔf(u)=0. (1.11)

    For M=1 (anisotropic Cahn–Hilliard equation), we have an equation of the form

    ut+Δ3i=1ai2ux2iΔf(u)=0

    and, for M=2 (sixth-order anisotropic Cahn–Hilliard equation), we have an equation of the form

    utΔ3i,j=1aij4ux2ix2j+Δ3i=1bi2ux2iΔf(u)=0.

    We studied in [81] the corresponding higher-order isotropic model, namely,

    utΔP(Δ)uΔf(u)=0, (1.12)

    where

    P(s)=Mi=1aisi, ak>0, M1, sR,

    and, in [82], the anisotropic higher-order model (1.11) (there, numerical simulations were also performed to illustrate the effects of the higher-order terms and of the anisotropy). Furthermore, these models contain sixth-order Cahn–Hilliard models. We can note that there is currently a strong interest in the study of sixth-order Cahn–Hilliard equations. Such equations arise in situations such as strong anisotropy effects being taken into account in phase separation processes (see [352]), atomistic models of crystal growth (see [24,25,144,173]), the description of growing crystalline surfaces with small slopes which undergo faceting (see [341]), oil-water-surfactant mixtures (see [200,201]) and mixtures of polymer molecules (see [115]). We refer the reader to [68,208,213,214,215,227,256,257,278,279,287,289,290,291,293,316,317,322,323,356,357,367] for the mathematical and numerical analysis of such models.

    We can also note that the variant (1.9) can be relevant in the context of higher-order models (we can mention, for instance, anisotropic effects in tumor growth). We refer the reader to [83] for the analysis and numerical simulations of such models.

    Our aim in this article is to review and discuss some of the aforementioned Cahn–Hilliard models (1.9). More precisely, we will focus on the last three examples mentioned above. We also discuss the original Cahn–Hilliard equation, with an emphasis on the thermodynamically relevant logarithmic nonlinear terms.


    2. The Cahn–Hilliard and Cahn–Hilliard–Oono equations

    The Cahn–Hilliard system, in a bounded and regular domain Ω of Rn, n=1, 2 or 3, usually is endowed with Neumann boundary conditions, namely,

    μν=0, on Γ, (2.1)

    meaning that there is no mass flux at the boundary (note that h.ν=κμν), and

    uν=0, on Γ, (2.2)

    which is a natural variational boundary condition (it also yields that the interface is orthogonal to the boundary). Here, Γ=Ω and ν is the unit outer normal to the boundary. In particular, it follows from the first boundary condition that we have the conservation of mass, i.e., of the spatial average of the order parameter, obtained by (formally) integrating the first equation of (1.1) over Ω,

    u(t)=1Vol(Ω)Ωu(t,x)dx=u(0), t0. (2.3)

    If we have in mind the fourth-order in space Cahn–Hilliard equation, we can rewrite these boundary conditions, equivalently, as

    uν=Δuν=0, on Γ. (2.4)

    Remark 2.1. We can also consider periodic boundary conditions (in which case Ω=Πni=1(0,Li), Li>0, i=1,\..., n).

    As mentioned in the introduction, the Cahn–Hilliard equation is now well understood from a mathematical point of view. This is in particular the case for the usual cubic nonlinear term f(s)=s3s, but also for more general regular nonlinear terms.

    Now, the case of the thermodynamically relevant logarithmic nonlinear terms is more difficult. Indeed, in order to prove the existence of a solution, one generally approximates the singular nonlinear term by regular ones (e.g., by polynomials as in [116]; we also mention [4,301] for different approaches, based on semigroup theory and a regularization by the viscous Cahn–Hilliard equation proposed in [310], respectively) and one then passes to the limit. But then, when passing to the limit, one must make sure that the order parameter stays in the physically relevant interval ((1,1) in our case); otherwise the equations would not make sense. From a physical point of view, this separation property says that, in the phase separation process, one never completely reaches the pure states.

    Remark 2.2. It would be interesting to see whether, for a regular nonlinear term and, in particular, for the usual cubic one, the order parameter also remains in the physically relevant interval. This is however not the case and one can construct simple counterexamples, already in one space dimension (see [324]).

    We now give a proof of existence of a solution which is based on proper approximations of the logarithmic nonlinear term and which can be easily extended to more general singular nonlinear terms (see also [140]).

    We actually consider the following more general initial and boundary value problem:

    ut+βu=Δμ, β0, (2.5)
    μ=Δu+f(u), (2.6)
    uν=μν=0, on Γ, (2.7)
    u|t=0=u0. (2.8)

    When β=0, we recover the original Cahn–Hilliard equation, and, when β>0, we have the Cahn–Hilliard–Oono equation (here, we have set the other parameters equal to 1).

    Remark 2.3. (ⅰ) As mentioned in the introduction, the term βu, β>0, models nonlocal interactions. In particular, short-ranged interactions tend to homogenize the system, whereas long-ranged ones forbid the formation of too large structures; the competition between these two effects translates into the formation of a micro-separated state (also called super-crystal) with a spatially modulated order parameter, defining structures with a uniform size (see [355] for more details and references).

    (ⅱ) Actually, it can be surprising that nonlocal interactions can be described by such a simple linear term. This can be seen by noting that the equations are obtained by considering the free energy

    ψ=|u|2+F(u)+Ωu(y)g(y,x)u(x)dy, (2.9)

    where the function g describes the long-ranged interactions. In particular, in Oono's model and, e.g., in three space dimensions, one takes

    g(y,x)=4πβ|yx|, β>0. (2.10)

    Note that the long-ranged interactions are repulsive when u(y) and u(x) have opposite signs and thus favor the formation of interfaces (see [355] and the references therein). We finally write, as in the derivation of the classical Cahn–Hilliard equation,

    ut=uψ, (2.11)

    where u denotes the variational derivative with respect to u. Noting that 1|yx| is the Green function associated with the Laplace operator and defining μ as above, we obtain (2.5)-(2.6) (see [355] and the references therein for more details).

    Remark 2.4. It is easier to prove the existence of a weak solution to the Cahn–Hilliard system with the degenerate mobility κ(s)=1s2 and the thermodynamically relevant logarithmic nonlinear term (1.4). Indeed, one uses the fact that κ(s)f(s) is bounded (see [138] for details). Here, we can adapt the techniques in [138] to the Cahn–Hilliard–Oono equation.

    As far as the nonlinear term f is concerned, we assume more generally that

    fC1(1,1), f(0)=0, (2.12)
    lims±1f(s)=±, lims±1f(s)=+. (2.13)

    In particular, it follows from these assumptions that

    fc0, c00, (2.14)
    c1F(s)f(s)s+c2, c1, c20, s(1,1), (2.15)

    where F(s)=s0f(r)dr (in particular, in order to obtain the second of (2.15), we can study the variations of the function sf(s)sF(s)+c02s2, whose derivative has, owing to (2.14), the sign of s).

    Remark 2.5. In particular, the thermodynamically relevant logarithmic functions (1.4) satisfy the above assumptions.

    Next, we define, for NN, the approximated functions fNC1(R) by

    fN(s)={f(1+1N)+f(1+1N)(s+11N), s<1+1N,f(s), |s|11N,f(11N)+f(11N)(s1+1N), s>11N.

    We thus have

    fNc0 (2.16)

    and, setting FN(s)=s0fN(r)dr,

    c3FN(s)c4fN(s)s+c5, c4>0, c3, c50, sR, (2.17)
    fN(s)sc6|fN(s)|c7, c6>0, c70, (2.18)

    where the constants ci, i=3, ..., 7, are independent of N (see [305]). Actually, there holds, more generally, for N large enough (see [301], Proposition A.1, and [305] for details),

    fN(s+m)scm(|fN(s+m)|+FN(s+m))cm, (2.19)
    cm>0, cm0, sR, m(1,1),

    where the constants cm and cm are independent of N and depend continuously and boundedly on m.

    We finally introduce the approximated problems

    uNt+βuN=ΔμN,  (2.20)
    μN=ΔuN+fN(uN), (2.21)
    uNν=μNν=0, on Γ, (2.22)
    uN|t=0=u0. (2.23)

    We denote by ((,)) the usual L2-scalar product, with associated norm . We further set 1=(Δ)12, where (Δ)1 denotes the inverse minus Laplace operator associated with Neumann boundary conditions and acting on functions with null spatial average. More generally, X denotes the norm on the Banach space X.

    We set, for vL1(Ω),

    v=1Vol(Ω)Ωvdx,

    and, for vH1(Ω),

    v=1Vol(Ω)v,1H1(Ω),H1(Ω).

    We note that

    v(vv21+v2)12

    is a norm on H1(Ω) which is equivalent to the usual norm. Similarly,

    v(vv2+v2)12

    and

    v(v2+v2)12

    are norms on L2(Ω) and H1(Ω), respectively, which are equivalent to their usual norms.

    We further set

    W={vH1(Ω), v=0}

    and note that, on W, the generalized Poincaré's inequality

    vcv

    holds. Moreover, we have the continuous embedding H1(Ω)W.

    In what follows, the same letters c, c and c denote (generally positive) constants which may vary from line to line and which are independent of N.


    2.1. A priori estimates

    Our aim in this subsection is to derive a priori estimates for the solutions uN and μN to (2.20)-(2.23). These a priori estimates are independent of N and are formal, i.e., we assume that uN and μN are as smooth as needed. The crucial step, to prove the existence of a solution, consists in deriving an a priori estimate independent of N on fN(uN) in L2((0,T)×Ω), T>0.

    Classically, these a priori estimates allow us to obtain the existence of a solution to (2.20)-(2.23) by implementation of a Galerkin approximation (see, e.g., [287] for more details). This will also allow us to pass to the limit N+ in the approximated system (2.20)-(2.23).

    From now on, we assume that

    u0L(Ω)1δ, δ(0,1), (2.24)

    where δ is a fixed constant.

    First, integrating (2.20) over Ω, we find

    duNdt+βuN=0, (2.25)

    which yields

    uN(t)=eβtu0, t0. (2.26)

    We thus deduce from (2.26) that

    |uN(t)||u0|, t0, (2.27)

    whence, in view of (2.24),

    |uN(t)|1δ, t0, (2.28)

    i.e., uN is strictly separated from the pure states ±1.

    Then, setting, for a function φ defined in Ω, ¯φ=φφ, we can rewrite (2.20) in the equivalent form

    ¯uNt+β¯uN=ΔμN,  (2.29)
    μN=Δ¯uN+fN(uN), (2.30)

    owing to (2.25).

    In a next step, we multiply (2.29) by μN. Integrating over Ω and by parts, we obtain

    μN2+((¯uNt,μN))+β((¯uN,μN))=0. (2.31)

    Furthermore, it follows from (2.30) that

    ((¯uNt,μN))+β((¯uN,μN))=12ddt¯uN2+ddtΩFN(uN)dx (2.32)
    ((duNdt,fN(uN)))+β¯uN2+β((¯uN,fN(uN))).

    Noting that it follows from (2.25) that

    ((duNdt,fN(uN)))=β((uN,fN(uN))), (2.33)

    we finally deduce from (2.18) and (2.31)-(2.33) the differential inequality

    ddt(¯uN2+2ΩFN(uN)dx) (2.34)
    +c(¯uN2+fN(uN)L1(Ω)+μN2)c, c>0.

    We then multiply (2.30) by ¯uN and find, owing to (2.19) (taking s=¯uN and m=uN) and to the Poincaré inequality on W,

    ¯uN2+c(fN(uN)L1(Ω)+ΩFN(uN)dx)c+((μN,¯uN))=c+((¯μN,¯uN))
    c+c¯uNμN,

    where the constants c, c and c depend on δ, but are independent of N, at least for N large enough, whence

    ¯uN2+c(fN(uN)L1(Ω)+ΩFN(uN)dx)c+cμN2, c>0. (2.35)

    Summing (2.34) and ξ1 times (2.35), where ξ1>0 is small enough, we have the differential inequality

    dENdt+c(EN+fN(uN)L1(Ω)+μN2)c, c>0, (2.36)

    where

    EN=uN2+¯uN2+2ΩFN(uN)dx. (2.37)

    We now rewrite (2.29) in the equivalent form

    (Δ)1¯uNt+β(Δ)1¯uN=¯μN (2.38)

    (note indeed that ¯uNt=0). Multiplying (2.38) by ¯uNt, we obtain

    β2ddt¯uN21+¯uNt21=((¯μN,¯uNt)). (2.39)

    We note that, thanks to the Poincaré inequality on W,

    |((¯μN,¯uNt))|c¯uNt1μN (2.40)
    14¯uNt21+cμN2.

    It thus follows from (2.39) that

    βddt¯uN21+¯uNt21cμN2. (2.41)

    Next, we note that it follows from (2.30) that

    ¯μN=Δ¯uN+¯fN(uN). (2.42)

    Multiplying (2.42) by Δ¯uN, we find, owing to (2.16),

    Δ¯uN2c0¯uN2((¯μN,Δ¯uN))
    c0¯uN2+12Δ¯uN2+cμN2,

    which yields

    Δ¯uN22c0¯uN2+cμN2. (2.43)

    Summing (2.36) and ξ2 times (2.43), where ξ2>0 is small enough, we have the differential inequality

    dENdt+c(EN+¯uN2H2(Ω)+fN(uN)L1(Ω)+μN2)c, c>0. (2.44)

    We also note that (2.42) implies

    ¯fN(uN)c(¯uNH2(Ω)+μN), (2.45)

    which, combined with (2.44), yields

    dENdt+c(EN+¯uN2H2(Ω)+fN(uN)L1(Ω)+¯fN(uN)2+μN2) (2.46)
    c, c>0.

    Finally, taking s=¯uN and m=uN in (2.19) and integrating over Ω, we obtain, owing to (2.28),

    Ω|fN(uN)|dxc|ΩfN(uN)¯uNdx|+c,

    where the constants c and c only depend on δ (and are, in particular, independent of N), so that

    |fN(uN)|c|Ω¯fN(uN)¯uNdx|+c

    and

    |fN(uN)|c¯uN¯fN(uN)+c. (2.47)

    Since

    fN(u)2c(¯fN(uN)2+|fN(uN)|2),

    it follows from (2.47) that

    fN(uN)L2((0,T)×Ω) (2.48)
    c(¯fN(uN)L2((0,T)×Ω)+¯uNL(0,T;L2(Ω))¯fN(uN)L2((0,T)×Ω))+c, T>0.

    Now, Poincaré's inequality and (2.46) imply that

    ¯fN(uN)2L2((0,T)×Ω)cEN(0)+cT

    and

    ¯uN2L(0,T;L2(Ω))c¯uN2L(0,T;L2(Ω)n)cEN(0)+cT.

    It thus follows from (2.48) that

    fN(uN)L2((0,T)×Ω)cT,δ(u02H1(Ω)+1), T>0, (2.49)

    where the constant cT,δ is independent of N, at least for N large enough. Here, we have used the fact that, owing to (2.24), if N is large enough, FN(u0)=F(u0), so that we can handle the term ΩFN(u0)dx which appears in the right-hand side when integrating (2.46) with respect to time.

    We also note that (2.46) and Gronwall's lemma imply the dissipative estimate

    EN(t)ectEN(0)+c, c>0, t0, (2.50)

    which yields

    uN(t)H1(Ω)cδect(u0H1(Ω)+1)+c, c>0, t0. (2.51)

    Finally, noting that μN=fN(uN), it follows from (2.46) and (2.49) that

    μNL2(0,T;H1(Ω))cT,δ(u02H1(Ω)+1), T>0. (2.52)

    2.2. Existence of solutions

    We have the

    Theorem 2.6. We assume that u0 is given such that u0H1(Ω) and u0L(Ω)<1. Then, (2.5)-(2.8) possesses at least one (weak) solution such that, T>0,

    uC([0,T];H1(Ω)w)L2(0,T;H2(Ω)),
    utL2(0,T;H1(Ω)),
    μL2(0,T;H1(Ω)),

    where the subscript w stands for the weak topology, and

    ddt((u,q))+β((u,q))=((μ,q)),
    ((μ,Ξ))=((u,Ξ))+((f(u),Ξ)),

    a.e. t[0,T], q, ΞCc(Ω),

    u(0)=u0.

    Furthermore, uC([0,T];H1η(Ω)), η>0, and 1<u(t,x)<1, a.e. (t,x).

    Proof. We consider a solution (uN,μN) to the approximated problem (2.20)-(2.23) (the proof of existence of such a solution having the above regularity can be obtained by a standard Galerkin scheme).

    Furthermore, since the estimates derived in the previous section are independent of N, this solution converges, up to a subsequence which we do not relabel, to a limit function (u,μ) in the following sense:

    uNu in L(0,T;H1(Ω)) weak star and in L2(0,T;H2(Ω)) weakly,
    uNtut in L2(0,T;H1(Ω)) weakly,
    uNu a.e. (t,x) and in L2((0,T)×Ω),
    μNμ in L2(0,T;H1(Ω)) weakly.

    Here, we have used (2.41), (2.51)-(2.52) and classical Aubin–Lions compactness results.

    The only difficulty, when passing to the limit, is to pass to the limit in the nonlinear term fN(uN).

    First, it follows from (2.46) that fN(uN) is bounded, independently of N, in L1((0,T)×Ω). Then, it follows from the explicit expression of fN that

    meas(EN,M)φ(1N), NM,

    where

    EN,M={(t,x)(0,T)×Ω, |uM(t,x)|>11N}

    and

    φ(s)=cmax(|f(1s)|,|f(s1)|).

    Here, the constant c is independent of N and M. Note indeed that there holds

    T0Ω|fM(uM)|dxdtEN,M|fM(uM)|dxdtcmeas(EN,M)1φ(1N), (2.53)

    where the constant c is independent of N and M. We can pass to the limit M+ (employing Fatou's lemma, see (2.53)) and then N+ (noting that lims0φ(s)=0) to find

    meas{(t,x)(0,T)×Ω, |u(t,x)|1}=0,

    so that

    1<u(t,x)<1, a.e. (t,x). (2.54)

    Next, it follows from the above almost everywhere convergence of uN to u, from (2.54) and the explicit expression of fN that

    fN(uN)f(u), a.e. (t,x)(0,T)×Ω. (2.55)

    Finally, since, owing to (2.49), fN(uN) is bounded, independently of N, in L2((0,T)×Ω), it follows from (2.55) that fN(uN)f(u) in L2((0,T)×Ω) weakly, which finishes the proof of the passage to the limit.

    Remark 2.7. We consider the particular case of the physically relevant nonlinear term (1.4). In that case, it is not difficult to see that the function F(s)=s0f(r)dr is bounded on (1,1). Noting then that the function FN(s)=s0fN(r)dr is given by

    FN(s)={F(1+1N)+f(1+1N)(s+11N)+12f(1+1N)(s+11N)2, s<1+1N,F(s), |s|11N,F(11N)+f(11N)(s1+1N)+12f(11N)(s1+1N)2, s>11N,

    elementary computations show that FN is also bounded on (1,1). Therefore, we can relax the assumptions of Theorem 2.6 and assume that u0 only satisfies 1<u0(x)<1, a.e. xΩ, and |u0|<1. Indeed, we deduce from the above that ΩFN(u0)dx is bounded independently of N and we do not need the strict separation property (2.24) to derive the a priori estimates on uN, namely, when integrating (2.46) with respect to time.

    Remark 2.8. (ⅰ) It is not difficult to prove the uniqueness of solutions. Indeed, let u1 and u2 be two solutions with initial conditions u10 and u20, respectively, such that u10=u20. Then, we have, setting u=u1u2 and u0=u10u20 and noting that u=0,

    (Δ)1ut+β(Δ)1uΔu+f(u1)f(u2)f(u1)f(u2)=0, (2.56)
    uν=0, on Γ, (2.57)
    u|t=0=u0. (2.58)

    Multiplying (2.56) by u, we obtain, in view of (2.14),

    12ddtu21+βu21+u2c0u2. (2.59)

    Employing the interpolation inequality

    u2cu1u, (2.60)

    we deduce that

    ddtu21+cu2H1(Ω)cu21, c>0. (2.61)

    It follows from (2.61) and Gronwall's lemma that

    u(t)H1(Ω)cectu0H1(Ω), t0, (2.62)

    whence the continuous dependence with respect to the initial conditions (in the H1-norm) and the uniqueness (for u; the uniqueness for μ is then straightforward).

    (ⅱ)) We set

    Φm={vH1(Ω)L(Ω), 1<v(x)<1, a.e. xΩ, v=m}, m(1,1).

    It follows from the above that we can define the continuous (for the H1-norm) family of solving operators

    S(t):Φm{vL(Ω), vL(Ω)<1}Φm, u0u(t), t0.

    Furthermore, it follows from (2.51) and Gronwall's lemma that S(t) is dissipative on Φm, i.e., it possesses a bounded absorbing set B0Φm (in the sense that, BΦm bounded, t0=t0(B) such that tt0 implies S(t)BB0). Note that, in the case of the thermodynamically relevant logarithmic potentials, the family of solving operators S(t), t0, forms a continuous (for the H1-norm) and dissipative semigroup on Φm. Furthermore, in all cases, it follows from (2.62) that we can extend (in a unique way and by continuity) S(t) to a semigroup acting on the closure of Φm in the H1-topology, i.e., on Lm={vL(Ω), vL(Ω)1, v=m}, meaning that we can now consider initial data which contain the pure states; note that S(t):LmΦm, as soon as t>0.

    (ⅲ) We can note that the pure states are not (weak) solutions to our problem. However, in [301], we were able to prove, by a careful study of the structure of attractors, that, in the case of the original Cahn–Hilliard equation, the pure states can indeed be considered as weak solutions, by setting S(t)(±1)=±1.

    Remark 2.9. We can also study the limit β goes to 0. In particular, we proved in [287] that, for regular nonlinear terms, the asymptotic behavior of the Cahn–Hilliard–Oono equation and the limit Cahn–Hilliard equation are close in some proper sense when β is small. The case of logarithmic nonlinear terms is much more involved and we only proved in [300] the convergence of solutions on finite time intervals.


    2.3. Further regularity and strict separation

    A natural way to obtain further regularity is to first differentiate the equation for u with respect to time. However, for β>0, such a technique cannot be applied in a direct way and is more involved. Indeed, we recall that we have the equation

    (Δ)1¯uNt+β(Δ)1¯uN=¯μN. (2.63)

    Differentiating (2.63) with respect to time, we have

    (Δ)1t¯uNt+β(Δ)1¯uNt=¯μNt, (2.64)

    where

    ¯μNt=Δ¯uNt+¯fN(uN)uNt. (2.65)

    Multiplying (2.64) by ¯uNt, we obtain, owing to (2.65),

    12ddt¯uNt21+β¯uNt21+¯uNt2+((fN(uN)uNt,¯uNt))=0. (2.66)

    We infer from (2.16) that

    ((fN(uN)uNt,¯uNt))c0¯uNt2+((fN(uN)uNt,¯uNt)),

    which yields, owing to a proper interpolation inequality,

    ddt¯uNt21+2β¯uNt21+¯uNt2c¯uNt212((fN(uN)uNt,¯uNt)). (2.67)

    The problem is that we now need to estimate the term

    ((fN(uN)uNt,¯uNt))=βVol(Ω)uNfN(uN)¯uNt

    (when β=0, this term vanishes) and we are not able to estimate it uniformly with respect to N. Note that, if u0=0, then u(t)=0, t0, and we do not have this problem.

    In order to avoid dealing with this term, we write instead that

    ((fN(uN)uNt,¯uNt))=((fN(uN)uNt,uNt))uNt((fN(uN)uNt,1))
    c0uNt2uNtddtΩFN(uN)dx
    =c0uNt2ddt(uNtΩFN(uN)dx)+2uNt2ΩFN(uN)dx.

    Setting

    Λ=12¯uNt21uNtΩFN(uN)dx,

    we infer from (2.66) the differential inequality

    dΛdt+β¯uNt21+¯uNt2c0uNt22uNt2ΩFN(uN)dx,

    which yields, employing a proper interpolation inequality,

    dΛdt+β¯uNt21+12¯uNt2c(¯uNt21+|uNt|2)2uNt2ΩFN(uN)dx. (2.68)

    Recalling (2.26) and (2.50), we can see that Λ is bounded from below,

    Λ12¯uNt21c,

    for some positive constant c which is independent of N. Similarly, we can easily prove that the last two terms in the right-hand side of (2.68) are bounded from above. We thus end up with a differential inequality of the form

    dΛdt+β¯uNt21+12¯uNt2c(¯uNt21+u02+EN(0)2+1), (2.69)

    where the positive constant c is independent of N, and we can conclude by using, e.g., the uniform Gronwall's lemma (see, e.g., [349]). We thus see that the additional term βu in the Oono's model brings essential difficulties.

    Having this, we can go further and prove additional regularity on uN (see, e.g., [132]). Note however that some corresponding constants may a priori depend on N.

    A related question is the strict separation from the pure states, namely, an estimate of the form

    u(t)L(Ω)1δ, δ(0,1).

    From a physical point of view, this would mean that not only we never have the pure states during the phase separation process, but we also stay in some sense far from the pure states. From a mathematical point of view, this would mean that we actually have the same problem, but with a regular nonlinear term (actually, even better: with a bounded and globally Lipschitz continuous nonlinear term). Studying further regularity on u and the asymptotic behavior of the problem would then be straightforward tasks. This strict separation property is however related with the aforementioned question of the additional regularity; to be more precise, this requires proper estimates on f(u) (see [301]).

    As mentioned above, in [301], one regularizes the Cahn–Hilliard equation by the viscous Cahn–Hilliard equation

    εuεt+(Δ)1uεtΔuε+f(uε)f(uε)=0, ε>0, (2.70)
    uεν=0, on Γ, (2.71)
    uε|t=0=u0. (2.72)

    One advantage of the viscous Cahn–Hilliard equation is that one has the strict separation from the pure states. More precisely, one can prove the

    Theorem 2.10. We assume that ε>0 and u0Dεm, |m|1η, η(0,1), where

    Dεm={qH2(Ω), qν=0, on Γ, qL(Ω)1, q=m,
    f(q)L2(Ω), εϕL2(Ω), ϕH1(Ω), ϕ=(εI+(Δ)1)1(Δqf(q)+f(q))}.

    Then, for every ξ>0, there holds

    uε(t)L(Ω)1δε,η,ξ, tξ, (2.73)

    where the constant δε,η,ξ(0,1) is independent of t and uε. Furthermore, if

    u0L(Ω)1δ0, (2.74)

    for some δ0(0,1), then

    uε(t)L(Ω)1δε,η,δ0,u0Dεm, t0, (2.75)

    where

    q2Dεm=q2H2(Ω)+f(q)2L2(Ω)+εϕ2L2(Ω)+ϕ2H1(Ω)

    and the constant δε,η,δ0,u0Dεm(0,1) is independent of t and uε.

    Remark 2.11. It follows from the above that, if u0L(Ω)1, then any solution uε to the viscous Cahn–Hilliard equation is a priori strictly separated from the singularities of f as soon as t>0. Furthermore, if the initial datum is strictly separated from ±1, then uε remains uniformly a priori strictly separated from ±1 for all times.

    Remark 2.12. (ⅰ) Unfortunately, both constants δε,η,ξ and δε,η,δ0,u0Dεm tend a priori to 0+ as ε0+, so that the above theorem does not say anything on strict separation properties for the solutions to the Cahn–Hilliard equation.

    (ⅱ) Actually, we can prove similar strict separation properties for the solutions to the Cahn–Hilliard equation if we further assume that

    |f(s)|c(|f(s)|2+1), s(1,1),

    for some positive constant c. In particular, this inequality holds if f has a growth of the form ±1(1s2)p, p1 (we can actually improve this and take p>37, see [301]), close to ±1, but does not hold for the physically relevant logarithmic potentials.

    (ⅲ) In one space dimension, owing to the continuous embedding H1(Ω)C(¯Ω), we can easily prove the above strict separation properties for the Cahn–Hilliard equation. Furthermore, in two space dimensions, using the embedding of H1(Ω) into a proper Orlicz space, we can prove these properties, provided that

    |f(s)|ec|f(s)|+c, s(1,1),

    for some positive constants c and c (see [301] for details). In particular, the physically relevant logarithmic potentials satisfy these assumptions. Now, in three space dimensions, the strict separation from the singularities is an open problem for the thermodynamically relevant logarithmic nonlinear terms.

    An alternative proof, in two space dimensions, based again on the Orlicz embedding and also valid for the Cahn–Hilliard–Oono equation, was given in [192] (see also [119,165,193,195]). There, in order to avoid dealing with the the viscous Cahn–Hilliard equation and differentiating the equation for u with respect to time, we used instead proper truncations and difference quotients. Having the strict separation property (for, say, t2 in our case), we can then prove the existence of finite-dimensional attractors and the convergence of single trajectories to steady states.

    Remark 2.13. We refer the reader to [129] for the study of the Cahn–Hilliard system with a singular potential in unbounded cylindrical domains (in that case, the equations are endowed with Dirichlet boundary conditions).


    2.4. Dynamic boundary conditions

    The question of how the phase separation process (i.e., the spinodal decomposition) is influenced by the presence of walls has gained much attention (see [155,156,246] and the references therein). This problem has mainly been studied for polymer mixtures (although it should also be important for other systems, such as binary metallic alloys): from a technological point of view, binary polymer mixtures are particularly interesting, since the occurring structures during the phase separation process may be frozen by a rapid quench into the glassy state; microstructures at surfaces on very small length scales can be produced in this way.

    We also recall that the usual variational boundary condition uν=0 on the boundary yields that the interface is orthogonal to the boundary, meaning that the contact line, when the interface between the two components meets the walls, is static, which is not reasonable in many situations. This is the case, e.g., for mixtures of two immiscible fluids: in that case, the contact angle should be dynamic, due to the movements of the fluids. This can also be the case in the context of binary alloys, whence the need to define dynamic boundary conditions for the Cahn–Hilliard equation.

    In that case, we again write that there is no mass flux at the boundary (i.e., that (2.1) still holds). Then, in order to obtain the second boundary condition, following the phenomenological derivation of the Cahn–Hilliard system, we consider, in addition to the usual Ginzburg–Landau free energy and assuming that the interactions with the walls are short-ranged, a surface free energy of the form

    ΨΓ(u,Γu)=Γ(αΓ2|Γu|2+G(u))dσ, αΓ>0, (2.76)

    where Γ is the surface gradient and G is a surface potential. Thus, the total free energy of the system reads

    Ψ=ΨΩ+ΨΓ. (2.77)

    Writing finally that the system tends to minimize the excess surface energy, we are led to postulate the following boundary condition:

    1dutαΓΔΓu+g(u)+αuν=0, on Γ, (2.78)

    i.e., there is a relaxation dynamics on the boundary (note that it follows from the boundary conditions that

    dΨdt=1κut2H1(Ω)1dut2L2(Γ)0),

    where ΔΓ is the Laplace–Beltrami operator, g=G and d>0 is some relaxation parameter, which is usually referred to as dynamic boundary condition, in the sense that the kinetics, i.e., ut, appears explicitly. Furthermore, in the original derivation, one has G(s)=12aΓs2bΓs, where aΓ>0 accounts for a modification of the effective interaction between the components at the walls and bΓ characterizes the possible preferential attraction (or repulsion) of one of the components by the walls (when bΓ vanishes, there is no preferential attraction). We also refer the reader to [26,157] for other physical derivations of the dynamic boundary condition, obtained by taking the continuum limit of lattice models within a direct mean-field approximation and by applying a density functional theory, respectively, to [328] for the derivation of dynamic boundary conditions in the context of two-phase fluid flows and to [337,341] for an approach based on concentrated capacity.

    Remark 2.14. Actually, it would seem more reasonable, in the case of nonpermeable walls, to write the conservation of mass both in the bulk Ω and on the boundary Γ, i.e.,

    ddt(Ωudx+Γudσ)=0.

    Indeed, due to the interactions with the walls, one should expect some mass on the boundary. We assume that the first equation of (1.1) still holds. Then, writing that

    μ=uΨ,

    where is the variational derivative mentioned above (note that, in the original derivation, one has μ=uΨΩ), we obtain the second equation of (1.1), together with the boundary condition

    μ=αΓΔΓu+g(u)+αuν, on Γ.

    We now note that, owing to the first equation of (1.1), the above mass conservation reads

    Γ(ut+κμν)dσ=0.

    A class of boundary conditions which ensure this mass conservation reads

    ut+βΓΔΓu+κμν=0, on Γ, βΓ0.

    We can thus see that, when βΓ>0, we also have a Cahn–Hilliard type system on the boundary. Note that, when βΓ=0, it follows from the above that

    dΨdt=κμ2L2(Ω)n0.

    We refer the reader to [77,197] for the study of this problem (see also [282,291] for higher-order models and [163,164,172] for similar dynamic boundary conditions in the case of semipermeable walls).

    Again, for regular nonlinear terms, the problem is well understood from a mathematical point of view (see, e.g., [88,163,164,172,302,326,329,368]).

    The first proof of existence of solutions to the Cahn–Hilliard equation with singular (and, in particular, logarithmic) potentials and dynamic boundary conditions is given in n [190] (see also [191]), assuming that the (regular in our case; see [104,190] for singular surface nonlinear terms) surface nonlinearity g has the right sign at the singular points of the bulk nonlinearity f, namely,

    ±g(±1)>0 (2.79)

    (see also [80] for a similar result for the Caginalp phase-field system; note that the Cahn–Hilliard equation can also be derived as a singular limit of the Caginalp phase-field system, see [54,55,56]). Roughly speaking, these conditions force the order parameter to stay away from the pure states ±1 on the boundary.

    A first natural question is what happens when the above sign conditions are not satisfied.

    An important feature of the Cahn–Hilliard equation with a singular potential and dynamic boundary conditions is that one can have nonexistence of classical (i.e., in the sense of distributions) solutions (of course, when the sign conditions (2.79) are not satisfied), already in one space dimension.

    We will illustrate this by considering the following simple scalar ODE:

    yf(y)=0, in (1,1), y(±1)=K>0. (2.80)

    We assume that f is odd and singular at ±1 and that F has finite limits at ±1 (here, F is any antiderivative of f). In particular, these assumptions are satisfied by the physically relevant logarithmic potentials.

    Then, when K is small, one has the existence and uniqueness of a (classical) solution to (2.80) which is separated from the singular values of f (i.e., yL(1,1)<1). Furthermore, it follows from standard interior regularity estimates that

    |y(x)|c0, x(12,12), (2.81)

    where the positive constant c0 is independent of K.

    Multiplying (2.80) by y and integrating over (0,1), we obtain

    |12K2F(y(1))|c1, (2.82)

    where, owing to (2.81), the positive constant c1 is independent of K. Since F is bounded, independently of K, this shows that the above inequality cannot hold when K is large, meaning that there cannot be a classical solution to (2.80).

    Finally, noting that y is odd, we can rewrite (2.80) in the equivalent form

    yf(y)=yf(y), in (1,1), y(±1)=K,

    which corresponds to the one-dimensional stationary Cahn–Hilliard equation (with κ=α=1) with dynamic boundary conditions (with surface potential gK; note that, in one space dimension, the Laplace–Beltrami operator does not make sense and does not appear).

    Thus, when the sign conditions are not satisfied, we should expect to have nonexistence of classical solutions. However, we will see below that, approximating the singular nonlinear term by regular ones, we can prove that, at least for a subsequence, the corresponding solutions converge to some limit function.

    We first rewrite the problem in the following form (where, for simplicity, we have set all physical constants equal to 1):

    {ut=Δμ, μν|Γ=0,μ=Δu+f0(u)+λu, λR,vtΔΓv+g0(v)+v+uν=0, on Γ, v=u|Γ, (2.83)

    where f=f0+λI and g=g0+I.

    We then make the following assumptions:

    f0C2(1,1), f0(0)=0, f00, sgn(s)f0(s)0, s(1,1), (2.84)
    lims±1f0(s)=±, lims±1f0(s)=+, (2.85)
    g0C2(R), g0C2(R)<+. (2.86)

    We can note that the physically relevant logarithmic functions f (1.4) can indeed be decomposed into a sum f0+λI, where f0 satisfies the above assumptions.

    We now introduce, as above, the following regular approximations of f0, for NN:

    f0,N(s)={f0(s), |s|11N,f0(11N)+f0(11N)(s1+1N), s>11N,f0(1+1N)+f0(1+1N)(s+11N), s<1+1N, (2.87)

    and we consider (2.83) in which f0 is replaced by f0,N, NN.

    The existence, uniqueness and regularity of the solution uN to this regularized problem is clear, since the nonlinear term is now regular (see [302]). Furthermore, we have the following estimates, for N large enough:

    uN(t)2Cη(Ω)+uN(t)2H2(Γ)+uN(t)2H2(Ωε)+uN(t)2H1(Ω)+uNt(t)2H1(Ω) (2.88)
    +uNt(t)2L2(Γ)+DτuN(t)2L2(Ω)(n1)n+f0,N(uN(t))L1(Ω)
    t+1t(uNt(s)2H1(Ω)+uNt(s)2H1(Γ))ds
    c1ec2t(1+uN(0)2H1(Ω)+uN(0)2H1(Γ)+uNt(0)2H1(Ω)+uNt(0)2L2(Γ))2+c3,

    where Ωε={xΩ, dist(x,Γ)>ε}, ε>0, DτuN=uNuNνν is the tangential part of the gradient (here, ν also denotes a smooth extension of the unit outer normal to the boundary in Ω) and the positive constants η<14 and ci, i=1,\..., 3, are independent of N.

    The only difficulty, to derive these estimates, is to obtain the estimate on the tangential part of the gradient and the interior H2-estimate. This is achieved by a proper variant of the nonlinear localization technique, see [305] for details.

    Remark 2.15. Actually, uN also belongs to H2(Ω), but the H2-norm of uN depends a priori on N and such a regularity does not pass to the limit.

    We also have the following (parabolic) regularization property on the solution uN to the regularized problem:

    uNt(t)2H1(Ω)+uNt(t)2L2(Γ) (2.89)
    ct(1+uN(0)uN(0)2H1(Ω)+uN(0)2L2(Γ)), t(0,1],

    where the positive constant c is independent of N.

    Finally, for any two solutions u1 and u2 to the regularized problem (for simplicity, we omit the index N here), with initial data having the same average (note that we still have the conservation of the average when considering dynamic boundary conditions), there holds

    u1(t)u2(t)H1(Ω)+u1(t)u2(t)L2(Γ) (2.90)
    cect(u1(0)u2(0)H1(Ω)+u1(0)u2(0)L2(Γ)), t0,

    where the positive constants c and c are independent of t, N and u1 and u2.

    In particular, it follows from (2.88) that, at least for a subsequence which we do not relabel, uN converges (at least weakly) to some function u in the corresponding spaces. Now, recalling that one expects nonexistence of classical solutions in general, u cannot be a (classical) solution to the Cahn–Hilliard system (2.83) with the original singular nonlinearity f0 in general. However, we will see below that uN converges to the solution to some variational inequality, derived from (2.83).

    Our aim now is to pass rigorously to the limit in the regularized problems associated with (2.83). As already mentioned, as the limit is not a classical solution to (2.83) in general, we first need to define a proper weak formulation of the problem. More precisely, this will be done by considering a variational inequality (see also [197,209] for a very close approach, but at an abstract level, i.e., based on duality arguments).

    To do so, we first introduce the bilinear form

    B(w,z)=((w,z))Ω+λ((w,z))Ω+L(((Δ)1¯w,¯z))Ω+((Γw,Γz))Γ,

    (w,z)H1(Ω)H1(Γ)={qH1(Ω), q|ΓH1(Γ)}, where the positive constant L is chosen such that the following coercivity relation holds:

    w2L2(Ω)n+λw2L2(Ω)+Lw2H1(Ω)12w2H1(Ω), wH1(Ω) such that w=0.

    Furthermore, Δ denotes again the minus Laplace operator with Neumann boundary conditions and acting on functions with null average, ¯w=ww and ((,))Ω and ((,))Γ denote the scalar products in L2(Ω) and L2(Γ), respectively.

    We then rewrite the problem in the following equivalent form:

    {(Δ)1utΔu+f0(u)+λuμ=0,μ=Δu+f0(u)+λu,vtΔΓv+g(v)+uν=0, on Γ, v=u|Γ,u|t=0=u0, v|t=0=v0. (2.91)

    We multiply the first equation of (2.91) by uw, where w=w(x) is such that

    u(t)w=0, t0,

    and have, owing to the boundary conditions,

    (((Δ)1ut,uw))Ω+((ut,uw))Γ+B(u,uw)+((f0(u),uw))Ω
    =L((u,(Δ)1(uw)))Ω((g(u),uw))Γ.

    Noting that B is positive and f0 is monotone increasing, we finally obtain the following variational inequality:

    (((Δ)1ut,uw))Ω+((ut,uw))Γ+B(w,uw)+((f0(w),uw))Ω (2.92)
    L((u,(Δ)1(uw)))Ω((g(u),uw))Γ

    (what is important here, when considering a singular nonlinear term f0, is that this function acts on the test functions).

    We now introduce the phase space

    Φ={(q,r)L(Ω)×L(Γ), qL(Ω)1, rL(Γ)1}

    and are in a position to give the definition of a variational (weak) solution.

    Definition 2.16. Let (u0,v0) belong to Φ. Then, a pair (u,v) is a variational solution to (2.91) if

    (ⅰ) (u,v)C([0,+);H1(Ω)×L2(Γ))L2(0,T;H1(Ω)×H1(Γ)), T>0.

    (ⅱ) (ut,vt)L2(τ,T;H1(Ω)×L2(Γ)), 0<τ<T.

    (ⅲ) f(u)L1((0,T)×Ω), T>0.

    (ⅳ) 1<u(t,x)<1, for almost every (t,x)R+×Ω.

    (ⅴ) u(0)=u0, v(0)=v0.

    (ⅵ) u(t)=u0, t0.

    (ⅶ) u(t)|Γ=v(t), for almost every t>0.

    (ⅷ) The variational inequality (2.92) is satisfied for almost every t>0 and for every test function w=w(x) such that wH1(Ω)H1(Γ), f(w)L1(Ω) and w=u0.

    Remark 2.17. Of course, a classical solution is a variational one. Furthermore, the notion of a variational solution also makes sense when f0 is regular and, in that case, the two notions of solutions are equivalent (see also [130]).

    Remark 2.18. We can note that, in the above definition, u(t)|Γ=v(t) only for t>0 and this condition does not necessarily hold for the initial data. However, as soon as t>0, v can be found, once u is known. This also justifies that we wrote the variational inequality (2.92) in terms of u only.

    We can now write the variational inequality (2.92) with u replaced by (a proper subsequence of) the solutions uN to the regularized problems (when u0 is not strictly separated from ±1 or u0|Γv0, we approximate the initial data by a sequence of smooth functions which satisfy these conditions) and, passing to the limit (owing to (2.88); one can proceed as in the proof of Theorem 2.6 to prove the separation property here), we have the

    Theorem 2.19. For every pair of initial data (u0,v0)Φ, (2.91) possesses a unique variational solution (u,v) which is the limit of a sequence of solutions to the regularized problems and which satisfies (2.88), the regularization property (2.89) and the Lipschitz continuity property (2.90).

    This result allows to define a semigroup S(t) acting on the phase space Φ and associated with the variational solutions to (2.91). Furthermore, this semigroup is Lipschitz continuous in the following sense:

    S(t)(u1,v1)S(t)(u2,v2)H1(Ω)×L2(Γ)cect(u1,v1)(u2,v2)H1(Ω)×L2(Γ), t0, (2.93)

    (u1,v1), (u2,v2)Φ such that u1=u2.

    Remark 2.20. We refer the reader to [305] for the study of finite-dimensional attractors for the semigroup S(t).

    Now, as already mentioned several times, a variational solution does not necessarily solve the Cahn–Hilliard system in the usual sense (this would be true if we had an H2-regularity on u, but, here, we a priori only have an interior H2-regularity, together with an L2-estimate on the gradient of the tangential derivatives). Actually, we can be more precise. Indeed, we can prove that a variational solution solves the bulk equation, namely,

    (Δ)1utΔu+f0(u)+λuμ=0,

    in the sense of distributions (and almost everywhere). However, it does not necessarily satisfy the dynamic boundary condition.

    Again, we can be more precise. First, it follows from (2.88) (for u) that the trace

    [uν]int=uν

    exists, say, in L(τ,T;L1(Γ)), 0<τ<T. Furthermore, the (proper subsequence of the) solutions to the regularized problems satisfy the dynamic boundary condition

    vNtΔΓvN+g(vN)+uNν=0, on Γ, vN=uN|Γ,

    in L(τ,T;L2(Γ)), 0<τ<T. We can then pass to the limit in this equation, which yields that the limit

    [uν]ext=limk+uNν

    exists in L(τ,T;L2(Ω)) weak star, 0<τ<T, whence, at the limit

    vtΔΓv+g(v)+[uν]ext=0, on Γ,

    almost everywhere, where [uν]ext and [uν]int do not necessarily coincide; in particular, a variational solution is a classical one when these two quantities coincide almost everywhere on the boundary.

    Remark 2.21. Coming back to the scalar ODE considered in the beginning of this subsection, namely,

    yf(y)=0, in (1,1), y(±1)=K>0,

    we can prove that there exists a critical value K0 of K such that, if K>K0, there is no classical solution. However, there exists a variational solution which is solution to the ODE

    yf(y)=0, in (1,1), y(±1)=±1,

    and, in that case,

    y|x=±1K.

    It is now natural and important to find sufficient conditions which ensure that a variational solution is a classical one (one such sufficient condition being the sign conditions (2.79) mentioned above). We saw that this is the case when the two quantities [uν]ext and [uν]int coincide almost everywhere on Γ. In particular, this is the case when u(t) belongs to H2(Ω), for almost every t>0, which, in turn, is related to the (strict) separation from the singularities. Indeed, we have the following result.

    Theorem 2.22. Let (u,v) be a variational solution and set, for δ(0,1) and T>0,

    Ωδ(T)={xΩ, |u(T,x)|<1δ}.

    Then, u(T)H2(Ωδ(T)) and

    u(T)H2(Ωδ(T))cδ,T,

    where cδ,T is independent of u.

    In particular, it follows from Theorem 2.22 that u(t) is H2-regular in each subdomain in which it is strictly separated from ±1. Furthermore, a consequence of this result is that, if

    |u(t,x)|<1, for almost every (t,x)R+×Γ, (2.94)

    then

    [uν]ext=[uν]int, for almost every (t,x)R+×Γ,

    and a variational solution is a classical one. We thus finally see that the existence of a classical solution is related to the separation of u from the singularities of the nonlinear term, now on the boundary Γ.

    Such a separation holds when f0 has sufficiently strong singularities (see also [78] for a similar result for the Caginalp phase-field system). More precisely, we have the

    Theorem 2.23. We assume that

    lims±1F0(s)=+,

    where F0 is any antiderivative of f0. Then, (2.94) holds and a variational solution is a classical one.

    In particular, this holds when f0 has a growth of the form

    ±1(1s2)p, p>1,

    close to the singular points ±1. Unfortunately, for the relevant logarithmic potentials, F0 is bounded, so that this theorem cannot be applied. In that case, we can have |u(t,x)|=1 on a set with nonzero measure on the boundary, or even on the whole boundary (see also the scalar ODE considered above).

    We finally recall the

    Theorem 2.24. We assume that

    ±g(±1)>0.

    Then, a variational solution is a classical one.

    As already mentioned, the sign conditions force the order parameter to stay away from the pure states on the boundary.


    2.5. Concluding remarks

    We mention in this subsection several important generalizations of the Cahn–Hilliard equation.

    A first one consists in studying systems of Cahn–Hilliard equations to describe phase separation in multicomponent alloys (see [51,91,107,139,140,146,178,179,180,298]).

    We also mention the stochastic Cahn–Hilliard equation (also called the Cahn–Hilliard–Cook equation) which takes into account thermal fluctuations (see [29,30,32,33,63,110,112,117,118,133,202,203,219]).

    Then, an important generalization of the Cahn–Hilliard equation is the viscous Cahn–Hilliard equation which accounts for viscosity effects in the phase separation of polymer/polymer systems (see [16,65,93,142,310]). The viscous Cahn–Hilliard equation can also be seen as a particular case of the generalizations proposed by M. Gurtin in [221] (which, in particular, account for anisotropy) and which are based on a microforce balance, i.e., a new balance law for interactions at a microscopic level (see [36,37,39,79,130,131,196,206,284,285,286,294,295,299,304,332,333,334,364] for the mathematical analysis); we also refer the reader to yet another approach proposed by P. Podio–Guidugli in [325] and studied in, e.g., [97,98,99,100,105].

    Another important generalization of the Cahn–Hilliard equation is the hyperbolic relaxation of the equation, proposed in [174,175,176,177,260] to model the early stages of spinodal decomposition in certain glasses (see also [38,184,185,210,211,212,340] for the mathematical analysis and [338,339] for the hyperbolic relaxation of the Cahn–Hilliard–Oono equation in the whole space). Actually, the hyperbolic relaxation of the equation is a particular case of more general memory relaxations (for an exponentially decreasing memory kernel) which were studied, e.g., in [106,109,186,187] (see also [327]).

    We also mention the convective Cahn–Hilliard equation which describes the dynamics of driven systems such as faceting of growing thermodynamically unstable crystal surfaces (see [126,127,128,198,267,361] for the mathematical analysis).

    It is important to note that, in realistic physical systems, quenches are usually carried out over a finite period of time, so that phase separation can begin before the final quenching is reached. It is thus important to consider nonisothermal Cahn–Hilliard models. Such models were derived and studied in [8,9,170,171,297,346].

    The Cahn–Hilliard equation can be coupled with the Allen–Cahn equation which describes the ordering of atoms during the phase separation process (see [7]). This problem was studied, e.g., in [28,114,269,296,312,374].

    It can also be coupled with the equations for elasticity or viscoelasticity, to account for mechanical effects (see, e.g., [12,27,34,35,64,121,179,180,181,284,285,318,319,320,321,331]).

    We also mention the coupling of the Cahn–Hilliard equation with the Navier–Stokes equations in the context of two-phase (multiphase) flows (see, e.g., [1,3,43,44,45,46,47,49,61,62,86,94,158,166,167,169,195,222,236,247,250,252,268,273,372,375]) and some related models such as the Cahn–Hilliard– Hele–Shaw and Cahn–Hilliard–Brinkman equations (see, e.g., [42,108,119,120,153,193,225,359,360,365,371]). Related models can also be used to model tumor growth (see, e.g., [96,101,102,103,113,159,182,237,272]).

    We finally refer the reader to, e.g., [5,6,10,11,16,17,18,19,20,21,22,40,46,47,48,49,50,52,67,69,71,87,89,111,122,135,136,137,141,147,150,151,152,154, 159,161,183,199,204,205,207,220,223,224,226,230,231,242,243,246,247,248,249,250,251,252,261,262,263,265,266, 270,275,280,283,306,330,336,344,345,347,351,358,362,366,369,377,378] for the numerical analysis and simulations of the Cahn–Hilliard equation (and several of its generalizations).


    3. The Cahn–Hilliard equation with a proliferation term

    We consider the following initial and boundary value problem in a bounded and regular domain Ω of Rn, n=1, 2 or 3, with boundary Γ:

    ut+Δ2uΔf(u)+g(u)=0, (3.1)
    uν=Δuν=0, on Γ, (3.2)
    u|t=0=u0, (3.3)

    where f is a smooth function defined on R (as already mentioned, typically, f(s)=s3s) and

    g(s)=qi=0bisi, bq0, q2. (3.4)

    The main feature of (3.1)-(3.2), together with a function g as in (3.4), is that we can have blow up in finite time.

    In order to exhibit blow up in finite time, we look for spatially homogeneous solutions, i.e., solutions of the form

    u(t,x)=y(t),

    whence the ODE

    y+qi=0biyi=0. (3.5)

    Let x0<x1<<xk be the real roots of g (we assume in what follows that k1, though the case k=0 is also contained in Theorem 3.1 below; see also Remark 3.2). We thus have

    g(s)=bqki=1(sxi)αiri=1(s2+λis+βi)ui (3.6)

    and

    1g(s)=1bq[ki=1(αij=1αi,j(sxi)j)+ri=1(uij=1bi,js+ci,j(s2+λis+βi)j)] (3.7)

    (here, we assume, without loss of generality, that r1).

    Therefore, (3.5) is equivalent to

    ψ(y)=bq(t+κ), (3.8)

    where ψ is an antiderivative of bqg(s) and

    κ=1bqψ(y0), y0=y(0). (3.9)

    Let ˜k be the number of roots of g which have an odd order (i.e., for which αi is odd).

    We have the

    Theorem 3.1. We assume that ˜k is even. Then, we have blow up in finite time.

    Proof. We first note that ψ has finite limits λ± as s tends to ±. Indeed, the only terms in (3.7) which yield infinite limits when taking an antiderivative can be written as

    ki=1αi,1sxi+ri=1bi,1s+ci,1s2+λis+βi.

    Then, when taking an antiderivative, we need to deal with the function

    h(s)=ki=1αi,1ln|sxi|+ri=1bi,12ln(s2+λis+βi).

    Now, noting that it follows from (3.7) that, necessarily,

    ki=1αi,1+ri=1bi,1=0 (3.10)

    and writing

    h(s)=ln(ki=1|sxi|αi,1ri=1(s2+λis+βi)bi,12),

    it follows from (3.10) that

    lims±h(s)=0. (3.11)

    Furthermore, since ˜k is even, then ψ is monotone increasing on ],x1[ and ψ(],x1[)=]λ,+[. Similarly, ψ is monotone increasing on ]xk,+[ and ψ(]xk,+[)=],λ+[.

    Let us first assume that bq>0. In that case, we take y0<x1 and there is a local (in time) solution to (3.5), with initial datum y0 (as long as y(t)<x1). Moreover,

    y(t)=ψ1(bq(t+κ)) (3.12)

    and this solution exists as long as

    bq(t+κ)>λ,

    i.e.,

    t<κλbq, (3.13)

    meaning that we have blow up in finite time.

    Similarly, if bq<0, we take y0>xk and we have a solution as long as

    bq(t+κ)<λ+,

    i.e.,

    t<κλ+bq, (3.14)

    whence again blow up in finite time.

    Remark 3.2. If k=0, then ψ maps increasingly R onto ]λ,λ+[ and we can easily conclude, proceeding as above and taking y0 arbitrarily.

    Now, when ˜k is odd, we have the

    Theorem 3.3. We assume that ˜k is odd and bq<0. Then, we have blow up in finite time.

    Proof. Proceeding as above, we see that ψ is monotone decreasing on ],x1[ and ψ(],x1[)=],λ[. Taking y0<x1, we have a solution to (3.5) as long as

    bq(t+κ)<λ,

    i.e.,

    t<κλbq, (3.15)

    meaning once more that we have blow up in finite time.

    Remark 3.4. More generally, we have blow up in finite time whenever g is continuous on an interval ],x0[ (resp., ]x0,+[) and maps increasingly (resp., decreasingly) ],x0[ (resp, ]x0,+[) onto ]λ,+[. Here, λ is finite.

    Example 3.5. We take

    g(s)=λs(s1), λ>0. (3.16)

    In that case, (3.1) has applications in wound healing and tumor growth and λ is a proliferation coefficient (see [244]). Here, ˜k=k=2 and bq=λ>0. It thus follows from Theorem 3.1 that we can have blow up in finite time (see also [85]). Furthermore, here, x0=0, so that blow up in finite time occurs when y0<0. We can note that, in this example, the biologically relevant interval is [0,1], so that a natural question is whether we can have blow up in finite time in (3.1) for initial data u0 such that u0(x)[0,1], a.e. in Ω. Numerical simulations performed in [85] suggest that this can indeed happen. Actually, what is important here is the choice of the nonlinear term f and, more precisely, the minima of the double-well potential F (we recall that f=F).

    Example 3.6. We take

    g(s)=λd2(1+s)λg(1+s)2(1s)2, λd, λg>0. (3.17)

    In that case, (3.1) has biological applications and λd and λg are death and growth coefficients, respectively (see [14]). Furthermore, a study of the function g shows that either ˜k=k=4 or ˜k=2 and k=2 or 3. Noting that bq=λg<0, it follows from Theorem 3.1 that we can have blow up in finite time which occurs when y0>1 (indeed, it is easy to show that, in this example, xk>1). Here, the biologically relevant interval is [1,1] and, again, a natural question is whether we can have blow up in finite time for (3.1) when u0(x)[1,1], a.e. in Ω. Numerical simulations suggest that, in that case, the solutions remain in the biologically relevant interval (see [14,149]).

    Remark 3.7. Another interesting question is whether the solutions to (3.1) remain in the biologically relevant interval, assuming that the initial condition u0 also belongs to this interval. It was proved in [85] that, for (3.16), this may not be the case (see also [324] for the Cahn–Hilliard equation). Let us now consider the function g defined in (3.17) and assume that f(s)=s3s. In one space dimension, (3.1) then reads, with obvious notation,

    ut+uxxxx(u3u)xx+g(u)=0. (3.18)

    We take the initial datum u0 such that u0(x)=11+λd24x4 in a neighborhood of 0 and extend it to a smooth function defined on (1,1) and taking values in [1,1]. We note that u0,x(0)=u0,xx(0)=0, while u0,xxxx=1λd. It thus follows from (3.18) that ut(0,0)=1, so that

    u0,t=1+t+o(t).

    Therefore, u(0,t)>1 for t>0 small, meaning that u does not stay in the biologically relevant interval.

    Remark 3.8. The above results also show that we can have blow up in finite time for the reaction-diffusion equation

    utΔu+g(u)=0, (3.19)

    associated with the Neumann boundary condition uν=0, on Γ, which is also relevant in view of biological applications. Actually, we can say more here. Indeed, let u0L(Ω) be an initial datum for (3.19) and let y± be the solutions to the ODE's

    y±+g(y±)=0, y±(0)=y±,0, (3.20)

    where y,0u0(x)y+,0, a.e. in Ω. Then, it follows from the comparison principle for second-order parabolic equations that

    y(t)u(t,x)y+(t), (3.21)

    meaning that, if u0 is properly chosen, u blows up in finite time. Similarly, the comparison principle also shows that, when u0 is properly chosen (i.e., when y±,0 yield solutions to (3.5) which do not blow up in finite time), then we have global (in time) existence; in particular, in the two examples above, we have global (in time) existence when u0 remains in the biologically relevant interval. Now, such a comparison principle does not hold for fourth-order parabolic equations, so that the results obtained in Theorems 3.1 and 3.3 do not say more on the qualitative behavior of the solutions to (3.1) in general. However, in [85], we were able to obtain a more complete picture in the particular case (3.16) by studying the evolution equation for the spatial average of u. More precisely, we proved that, if u is a solution to (3.1)-(3.2), then either u blows up in finite time or u exists globally in time and 0u(t)u0+1, t0. Furthermore, if u is a nonvanishing solution to (3.1)-(3.2) such that u(t)[0,1], t0, then u tends to 1 in H1(Ω) as t+. For a more general source term g (even polynomial), this seems much more complicated and will be studied elsewhere (see also [148,149]).

    Remark 3.9. When ˜k is odd and bq>0, then we do not have blow up in finite time. Indeed, in that case, necessarily, q is odd, q3, so that (3.5) is dissipative. Indeed, multiplying (3.5) by y, we easily obtain

    ddty2+bqyq+1c, (3.22)

    whence, in particular,

    ddty2+cy2c, c>0. (3.23)

    Here and below, the same letters c and c (and also c) denote constants which may change from line to line. We thus deduce from (3.23) that

    y2(t)y20ect+c, c>0, (3.24)

    and the solutions to (3.5) are indeed global in time. Furthermore, multiplying (3.1) by u and integrating over Ω, we find, assuming that the standard dissipativity assumption

    fc0, c00, (3.25)

    holds, a differential inequality of the form

    ddtu2L2(Ω)+Δu2L2(Ω)+bquq+1Lq+1(Ω)2c0u2L2(Ω)n+c. (3.26)

    It follows from (3.26) that

    ddtu2L2(Ω)+cu2H2(Ω)+bq2uq+1Lq+1(Ω)cu2H1(Ω)+c, c>0. (3.27)

    Employing the interpolation inequality

    uH1(Ω)cu12L2(Ω)u12H2(Ω),

    we deduce that

    ddtu2L2(Ω)+cu2H2(Ω)+bq2uq+1Lq+1(Ω)cu2L2(Ω)+c,

    whence, owing to Young's inequality,

    ddtu2L2(Ω)+cu2H2(Ω)+bq4uq+1Lq+1(Ω)c, c>0. (3.28)

    This yields that a solution to (3.1)-(3.2) (when it exists) is global in time and is dissipative in L2(Ω) (in the sense that it follows from Gronwall's lemma that u(t)2L2(Ω) is bounded independently of time and bounded sets of initial data for t large).


    4. The Cahn–Hilliard equation with a fidelity term

    We consider in this section the following generalization of the Cahn–Hilliard equation introduced in [24] in view of applications in image inpainting:

    ut+Δ2uΔf(u)+χΩD(x)(uh)=0, (4.1)

    where f is, for simplicity, the cubic function f(s)=s3s and hL2(Ω) (actually, we will take no image, h0, for simplicity). Here, we have taken all parameters equal to 1. This equation is endowed with the usual Neumann boundary conditions and the initial condition u|t=0=u0. Furthermore, D is an open bounded subset of Ω such that D⊂⊂Ω and χ denotes the indicator function.

    The first existence and uniqueness result was obtained in [25]. Then, to go further and, in particular, to prove the existence of finite-dimensional attractors, we need to derive a global in time and dissipative estimate. Obtaining such an estimate is not straightforward, due to the fact that we no longer have the conservation of mass.

    Indeed, integrating (4.1) over Ω, we have

    dudt+1Vol(Ω)ΩDudx=0.

    In order to deal with this equation, we write

    u=u+v,

    where v satisfies the equation

    t(Δ)1vΔv+f(u+v)f(u+v)
    +(Δ)1(χΩD(x)uχΩD(x)u)=0.

    Furthermore, we can see that

    dudt+c0u=1Vol(Ω)ΩDvdx, c0=Vol(ΩD)Vol(Ω).

    The left-hand side of the above equation is the simplest dissipative ODE and there just remains to control the right-hand side in order to have a global in time and dissipative estimate. To do so, we multiply the equation for v by v and integrate over Ω and by parts. However, in order to absorb bad terms which appear, we need some coercivity on the nonlinear term. More precisely, we write that

    ((f(u+v)f(u+v),v))=((f(u+v)f(u),v))
    c02Ω(v4+v2u2)dxv2,

    where ((,)) again denotes the usual L2-scalar product, with associated norm . This then allows to have a global in time and dissipative estimate on v, then on u and finally on u. Having this, we can go further and obtain further regularity results and the existence of finite-dimensional attractors. We refer the reader to [73] for more details.

    Remark 4.1. The question of the convergence of single trajectories to steady states is an important open problem. This question is all the more important that the final inpainting result is expected to be a steady state of the equation.

    Now, again, the case of the thermodynamically relevant logarithmic nonlinear terms is much more involved. Considering such nonlinear terms is relevant here. Indeed, numerical simulations performed in [74] suggest better inpainting results as far as the convergence time is concerned. Furthermore, the final inpainting result is much better, when the inpainting domain D is large.

    In what follows, we again take h0. However, for a nonvanishing image h, we would need a condition of the form

    ΩDhdx=0,

    meaning that we need some kind of symmetry.

    We have the

    Theorem 4.2. We assume that u0H1(Ω), |u0|<1 and 1<u0(x)<1, a.e. xΩ. Then, there exists T0=T0(u0) and a solution to the problem on [0,T0] such that uC([0,T0];H1(Ω))L(0,T0;H1(Ω))L2(0,T0;H2(Ω)) and utL2(0,T0;H1(Ω)). Furthermore, 1<u(t,x)<1, a.e. (t,x)(0,T0)×Ω.

    Proof. The proof is similar to the one performed in Section 2. However, we need to approximate the logarithmic nonlinear term in a careful way, as we need a coercivity property which is similar to the one obtained for the usual cubic nonlinear term for the approximated functions; this coercivity also needs to be uniform with respect to the approximation parameter.

    To do so, we write (see (1.3)) F(s)=θc2(1s2)+F1(s) and f1=F1. We then introduce, following [158] and for NN, the approximated functions F1,NC4(R) defined by

    F(4)1,N(s)={F(4)1(11N), s>11N,F(4)1(s), |s|11N,F(4)1(1+1N), s<1+1N, (4.2)
    F(k)1,N(0)=F(k)1(0), k=0, 1, 2, 3, (4.3)

    so that

    F1,N(s)={4k=01k!F(k)1(11N)(s1+1N)k, s>11N,F1(s), |s|11N,4k=01k!F(k)1(1+1N)(s+11N)k, s<1+1N. (4.4)

    Setting FN(s)=θc2(1s2)+F1,N(s), f1,N=F1,N and fN=FN, there holds

    f1,N0, fNθc, (4.5)
    FNc1, c10, (4.6)

    and (see [158,305])

    fN(s)sc2(FN(s)+|fN(s)|)c3, c2>0, c30, sR, (4.7)

    where the constants ci, i=1, 2 and 3, are independent of N, for N large enough. Furthermore, there holds, for N large enough,

    (fN(s+a)fN(a))sc4(s4+a2s2)c5, c4>0, c50, s, aR, (4.8)

    where the constants c4 and c5 are independent of N, which is the required coercivity property (see [74]).

    We consider, for NN, the approximated problems

    uNt+Δ2uNΔfN(uN)+χΩD(x)uN=0, (4.9)
    uNν=ΔuNν=0, on Γ, (4.10)
    uN|t=0=u0. (4.11)

    We first derive uniform (with respect to N) a priori estimates. In particular, a crucial step is to prove that, at least locally in time, the spatial average of uN is strictly separated from the pure states ±1 and fN(uN) is bounded in L2, which will allow to prove the (local in time) existence of a solution. All constants below are independent of N. Furthermore, the same letters denote constants which may vary from line to line.

    First, integrating (4.9) over Ω, we have

    duNdt+1Vol(Ω)ΩDuNdx=0. (4.12)

    Setting uN=uN+vN (so that vN=0), we can rewrite (4.12) as

    duNdt+c0uN=1Vol(Ω)ΩDvNdx, (4.13)

    where, as above, c0=Vol(ΩD)Vol(Ω) and vN is solution to

    vNt+Δ2vNΔ(fN(uN)fN(uN))+χΩD(x)uNχΩD(x)uN=0, (4.14)
    vNν=ΔvNν=0, on Γ, (4.15)
    vN|t=0=v0=u0u0. (4.16)

    We rewrite (4.14)-(4.15) in the equivalent form

    (Δ)1vNtΔvN+fN(uN)fN(uN) (4.17)
    +(Δ)1(χΩD(x)uNχΩD(x)uN)=0,
    vNν=0, on Γ. (4.18)

    We multiply (4.17) by vN to obtain

    12ddtvN21+vN2 (4.19)
    +((fN(uN)fN(uN),vN))+((χΩD(x)uN,(Δ)1vN))=0.

    Noting that

    ((fN(uN)fN(uN),vN))=((fN(uN)fN(uN),vN)),

    it follows from (4.8) that

    ((fN(uN)fN(uN),vN))c4(vN4L4(Ω)+uN2vN2)c. (4.20)

    Furthermore,

    |((χΩD(x)uN,(Δ)1vN))|c(vN2+|uN|vN) (4.21)
    c42(vN4L4(Ω)+uN2vN2)+c.

    We thus deduce from (4.19)-(4.21) that

    ddtvN21+vN2+c4(vN4L4(Ω)+uN2vN2)c. (4.22)

    Next, it follows from (4.13) that

    duN2dt+c0uN2cvN2,

    whence

    duN2dt+c0uN2c42(vN4L4(Ω)+uN2vN2)+c. (4.23)

    Summing (4.22) and (4.23), we find a differential inequality of the form

    dE1,Ndt+c(uN2H1(Ω)+vN4L4(Ω)+uN2vN2)c, c>0, (4.24)

    where

    E1,N=uN2+vN21

    satisfies

    E1,NcuN2H1(Ω), c>0. (4.25)

    We then multiply (4.9) by uN and have, owing to (4.5),

    ddtuN2+ΔuN22θcuN2+cuN2. (4.26)

    Summing (4.24) and (4.26) multiplied by δ1, where δ1>0 is chosen small enough, we obtain a differential inequality of the form

    dE2,Ndt+c(uN2H2(Ω)+vN4L4(Ω)+uN2vN2)c, c>0, (4.27)

    where

    E2,N=δ1uN2+E1,N

    satisfies

    E2,NcuN2, c>0. (4.28)

    We now rewrite (4.9)-(4.10) in the equivalent form

    uNt+χΩD(x)uN=ΔμN, (4.29)
    μN=ΔuN+fN(uN), (4.30)
    uNν=μNν=0, on Γ, (4.31)

    where, by analogy with the original Cahn–Hilliard equation, μN is called chemical potential.

    We multiply (4.29) by μN and (4.30) by uNt to find

    12ddt(uN2+2ΩFN(uN)dx)+μN2=((uN,χΩD(x)μN)). (4.32)

    Furthermore, multiplying (4.30) by χΩD(x)uN, we have

    ((uN,χΩD(x)μN))=((ΔuN,χΩD(x)uN))+ΩDfN(uN)uNdx. (4.33)

    We deduce from (4.7) and (4.32)-(4.33) that

    ddt(uN2+2ΩFN(uN)dx) (4.34)
    +c(μN2+ΩD|fN(uN)|dx+ΩDFN(uN)dx)cuN2H2(Ω), c>0.

    Summing (4.27) and (4.34) multiplied by δ2, where δ2>0 is chosen small enough, we obtain a differential inequality of the form

    dE3,Ndt+c(uN2H2(Ω)+vN4L4(Ω)+uN2vN2 (4.35)
    +ΩD|fN(uN)|dx+ΩDFN(uN)dx+μN2)c, c>0,

    where

    E3,N=δ2(uN2+2ΩFN(uN)dx)+E2,N

    satisfies

    E3,NcuN2H1(Ω)c, c>0. (4.36)

    Rewriting (4.29)-(4.30) in the equivalent form

    (Δ)1vNt+(Δ)1(χΩD(x)uNχΩD(x)uN)=(μNμN), (4.37)
    μNμN=ΔvN+fN(uN)fN(uN), (4.38)

    we deduce from (4.37) that

    vNt1c(uN+μN),

    whence, owing to (4.13),

    uNtH1(Ω)c(uN+μN). (4.39)

    Furthermore, (4.38) yields

    fN(uN)fN(uN)c(uNH2(Ω)+μN). (4.40)

    It thus follows from (4.35) and (4.39)-(4.40) that

    dE3,Ndt+c(uN2H2(Ω)+vN4L4(Ω)+uN2vN2 (4.41)
    +uNt2H1(Ω)+fN(uN)fN(uN)2
    +ΩD|fN(uN)|dx+ΩDFN(uN)dx+μN2)c, c>0.

    We can note that (4.41) is not sufficient to pass to the limit in the nonlinear term fN(uN) (say, in a variational formulation). To do so, we also need an estimate on |fN(uN)| (in order to have an estimate on fN(uN)). This could be done if we were able to prove that |uN(t)|1δ, t0, δ(0,1) (see [301]; see also below). Unfortunately, we are not able to prove such a result and, therefore, we will only be able to obtain a local (in time) result.

    We now assume that |u0|<1. Then, there exists δ(0,1) such that |u0|12δ. Therefore, since the function tuN(t) is continuous, there exists T0=T0(δ,N) such that, if t[0,T0], then |uN(t)|1δ.

    Actually, we can note that it follows from (4.13) that

    uN(t)=ec0tu0ec0tt0ec0sdsΩDvNdx,

    so that

    |uN(t)||u0|+cec0tt0ec0suNds (4.42)
    12δ+c(1ec0t),

    where we emphasize that c=c(u0) is independent of N (note indeed that it follows from (4.27)-(4.28) and Gronwall's lemma that uN is bounded uniformly with respect to time and N). We can thus find T0=T0(δ,u0) independent of N such that, if t[0,T0], then |uN(t)|1δ.

    Then, noting that we have a similar result for f (see [301]), it is not difficult to prove that, for N large enough,

    fN(s+m)scm|fN(s+m)|cm, cm>0, cm0, sR, m(1,1), (4.43)

    where the constants cm and cm depend continuously on m (see also [305]).

    Taking s=vN and m=uN in (4.43), integrating over Ω, noting that vN=0 and employing Hölder's inequality, it follows that, for NN0=N0(δ),

    |fN(uN)|cδvNfN(uN)fN(uN)+cδ, t[0,T0],

    whence

    T00|fN(uN)|2dscδvN2L(0,T0;L2(Ω))fN(uN)fN(uN)2L2((0,T0)×Ω)+cδ. (4.44)

    Therefore, noting that v(|v|2+vv2)12 is a norm on L2(Ω) which is equivalent to the usual L2-norm, (4.40) and (4.44) yield that

    fN(uN)L2((0,T0)×Ω) (4.45)
    cδ(uNL(0,T0;L2(Ω))+1)(uNL2(0,T0;H2(Ω))+μNL2((0,T0)×Ω)n)+cδ.

    Noting finally that μN=fN(uN), we deduce that

    μNL2(0,T0;H1(Ω)) (4.46)
    cδ(uNL(0,T0;L2(Ω))+1)(uNL2(0,T0;H2(Ω))+μNL2((0,T0)×Ω)n)+cδ.

    Having this, we can now proceed exactly as in Section 2 to pass to the limit and prove the separation property.

    Remark 4.3. Actually, a more careful treatment of the equation for the spatial average of the order parameter allows to prove the global in time existence of solutions (see [194]). Indeed, rewriting (4.1) as

    ut+Δ2uΔf(u)+uχD(x)u=0,

    we have, integrating this equation over Ω,

    dudt+u=1Vol(Ω)Dudx.

    This yields that

    u(t)=etu0+1Vol(Ω)ett0esdsDudx.

    Then, as long as the solution exists, necessarily, |u(t)|1, so that

    |u(t)|et|u0|+Vol(D)Vol(Ω)ett0esds,

    whence

    |u(t)|et|u0|+Vol(D)Vol(Ω)(1et).

    We now consider the function

    φ(t)=et|u0|+Vol(D)Vol(Ω)(1et).

    Then,

    φ(t)=(|u0|+Vol(D)Vol(Ω))et.

    If |u0|+Vol(D)Vol(Ω)0, then φ is monotone increasing and

    φ(0)φ(t)limt+φ(t),

    that is,

    |u0|φ(t)Vol(D)Vol(Ω).

    Furthermore, if |u0|+Vol(D)Vol(Ω)0, then φ is monotone decreasing and

    limt+φ(t)φ(t)φ(0),

    that is

    Vol(D)Vol(Ω)φ(t)|u0|.

    It thus follows that

    |u(t)|max(|u0|,Vol(D)Vol(Ω)),

    whence

    |u(t)|1δ,

    where δ=δ(u0)(0,1) is independent of time. Therefore, the solutions are indeed global in time.

    Remark 4.4. The uniqueness of solutions, as well as further regularity results, are important open problems in the case of logarithmic nonlinear terms and will be addressed in [194].

    Remark 4.5. The Cahn–Hilliard inpainting model studied in this section was extended to color images in [75], by considering systems of Cahn–Hilliard equations, and to grayscale images in [76], by considering a complex version of the Cahn–Hilliard inpainting model; see also [41], where systems of Cahn–Hilliard equations were used for grayscale images.

    Remark 4.6. As far as the numerical simulations are concerned, the authors in [24,25] proposed a dynamic two-steps algorithm based on the interface thickness ε. More precisely, one first takes a large value of ε in order to join the edges (indeed, when the inpainting domain is large, the inpainting may fail if the interface thickness is too small) and then switches to a smaller value of ε in order to obtain the final restored image. This algorithm is very efficient as far as the computation time and the quality of the restored images are concerned. In [73,74,75], we proposed instead a one-step algorithm with threshold. Namely, we take an intermediate value of ε and then threshold, i.e., when the order parameter is larger than some given value, we take it equal to 1 (say, black) and, when it is smaller, we take it equal to 0 (white); of course, such an algorithm does not make sense for grayscale images. We observed that we can obtain results which are comparable with those in [24,25], when the inpainting domain is not too large, but with a smaller computation time. When the inpainting domain is large, this algorithm may fail, but, as already mentioned, taking logarithmic nonlinear terms instead of polynomial ones, improves the simulations.


    Acknowledgments

    The author wishes to thank A. Giorgini for several useful comments.


    Conflict of Interest

    The author declares no conflicts of interest in this paper.




    Ethics approval of research and informed consent



    Institutional Review Board Approval was granted by Touro University Nevada (TUNIRB000194).

    Conflict of interest



    The authors declare no conflict of interest.

    [1] Bergen G, Stevens MR, Burns ER (2016) Falls and fall injuries among adults aged ≥65 years—United States, 2014. MMWR Morb Mortal Wkly Rep 65: 993-998. https://doi.org/10.15585/mmwr.mm6537a2
    [2] Centers for Disease Control and Prevention, Leading Causes of Nonfatal Injury. USA Centers for Disease Control and Prevention, 2023. Available from: https://wisqars.cdc.gov/lcnf/?y1=2022&y2=2022&ct=10&cc=0&s=0&g=00&a=lcd1age&a1=0&a2=199&d=0. Updated 2023 Apr 17; cited 2023 May 5
    [3] Centers for Disease Control and Prevention, Facts About Falls. USA Centers for Disease Control and Prevention, 2023. Available from: https://www.cdc.gov/falls/facts.html. Updated 2023 May 12; cited 2023 Jun 2
    [4] Stevens JA, Ballesteros MF, Mack KA, et al. (2012) Gender differences in seeking care for falls in the aged Medicare population. Am J Prev Med 43: 59-62. https://doi.org/10.1016/j.amepre.2012.03.008
    [5] Eckstrom E, Parker EM, Lambert GH, et al. (2017) Implementing STEADI in academic primary care to address older adult fall risk. Innov Aging 1: igx028. https://doi.org/10.1093/geroni/igx028
    [6] Stevens JA, Phelan EA (2013) Development of STEADI: a fall prevention resource for health care providers. Health Promot Pract 14: 706-714. https://doi.org/10.1177/1524839912463576
    [7] Stevens JA (2013) The STEADI tool kit: a fall prevention resource for health care providers. IHS Prim Care Provid 39: 162-166.
    [8] Centers for Disease Control and Prevention, STEADI—Older Adult Fall Prevention. USA Centers for Disease Control and Prevention, 2023. Available from: https://www.cdc.gov/steadi/index.html. Updated 2023 Apr 13; cited 2023 Jun 10
    [9] Loman MC, Crow RS, DiMilia PR, et al. (2017) Operationalisation and validation of the Stopping Elderly Accidents, Deaths, and Injuries (STEADI) fall risk algorithm in a nationally representative sample. J Epidemiol Community Health 71: 1191-1197. https://doi.org/10.1136/jech-2017-209769
    [10] Ness KK, Gurney JG, Ice GH (2003) Screening, education, and associated behavioral responses to reduce risk for falls among people over age 65 years attending a community health fair. Phys Ther 83: 631-637. https://doi.org/10.1093/ptj/83.7.631
    [11] Karlsson L, Doe K, Gerry M, et al. (2020) Outcomes of a physical therapist-led, statewide, community-based fall risk screening. J Geriatr Phys Ther 43: 185-193. https://doi.org/10.1519/JPT.0000000000000228
    [12] Vincenzo JL, Patton SK (2021) Older adults' experience with fall prevention recommendations derived from the STEADI. Health Promot Pract 22: 236-247. https://doi.org/10.1177/1524839919861967
    [13] Elliot SJ, Ivanescu A, Leland NE, et al. (2012) Feasibility of interdisciplinary community-based fall risk screening. Am J Occup Ther 66: 161-168. https://doi.org/10.5014/ajot.2012.002444
    [14] Knecht-Sabres LJ, Hanke TA, Lee MM, et al. (2022) A pilot interdisciplinary falls screening and educational event: perceptions of community-dwelling older adults. Internet J Allied Health Sci Pract 20: 1-10. https://doi.org/10.46743/1540-580X/2022.2110
    [15] World Health Organization (2007) WHO global report on falls prevention in older adults. Available from: https://extranet.who.int/agefriendlyworld/wp-content/uploads/2014/06/WHo-Global-report-on-falls-prevention-in-older-age.pdf
    [16] Panel of prevention of falls in older persons, American Geriatrics Society and British Geriatrics Society (2011) Summary of the updated American Geriatrics Society/British Geriatrics Society clinical practice guideline for prevention of falls in older persons. J Am Geriatr Soc 59: 148-157. https://doi.org/10.1111/j.1532-5415.2010.03234.x
    [17] Goetzel R, Staley P, Ogden L, et al. (2011) A framework for patient-centered health risk assessments—providing health promotion and disease prevention services to Medicare beneficiaries. Available from: https://stacks.cdc.gov/view/cdc/23365
    [18] Grossman DC, Curry SJ, Owens DK, et al. (2018) Interventions to prevent falls in community-dwelling older adults: US preventive services task force recommendation statement. JAMA 319: 1696-1704. https://doi.org/10.1001/jama.2018.3097
    [19] National Council on Aging, Evidence-based falls prevention programs. Arlington National Council on Aging, 2021. Available from: https://ncoa.org/article/evidence-based-falls-prevention-programs. Updated 2021 Jan 10, cited 2023 Jan 15
    [20] Rubenstein LZ, Vivrette R, Harker JO, et al. (2011) Validating an evidence-based, self-rated fall risk questionnaire (FRQ) for older adults. J Safety Res 42: 493-499. https://doi.org/10.1016/j.jsr.2011.08.006
    [21] Mathias S, Nayak US, Isaacs B (1986) Balance in elderly patients: the “Get-Up and Go” test. Arch Phys Med Rehabil 67: 387-389.
    [22] Norin E, Rosendahl E, Lundin-Olsson L (2006) Timed “Up & Go” test: reliability in older people dependent in activities of daily living—focus on cognitive state. Phys Ther 86: 646-655. https://doi.org/10.1093/ptj/86.5.646
    [23] Barry E, Galvin R, Keogh C, et al. (2014) Is the Timed Up and Go test a useful predictor of risk of falls in community dwelling older adults: a systematic review and meta-analysis. BMC Geriatr 14: 1-14. https://doi.org/10.1186/1471-2318-14-14
    [24] Rikli RE, Jones CJ (1999) Functional fitness normative scores for community-residing older adults ages 60–94. J Aging Phys Act 7: 162-181. https://doi.org/10.1123/japa.7.2.162
    [25] Yang R, Jensen FB, Edelman LS, et al. (2023) “Being careful”: how much caution is enough? The relational context of fear of older adult falling in older adult-family caregiver dyads. Geriatr Nurs 51: 129-135. https://doi.org/10.1016/j.gerinurse.2023.03.001
    [26] Pohl P, Sandlund M, Ahlgren C, et al. (2015) Fall risk awareness and safety precautions taken by older community-dwelling women and men—a qualitative study using focus group discussions. PLoS One 10: e0119630. https://doi.org/10.1371/journal.pone.0119630
    [27] Ness KK, Gurney JG, Wall MM, et al. (2004) Screening for risk of falling in community-dwelling elderly people may increase fear of falling. J Geriatr Phys Ther 27: 100-104. https://doi.org/10.1519/00139143-200412000-00005
    [28] Landers MR, Haller AM, Aldaco A, et al. (2024) The psychometric properties of the modified fear of falling avoidance behavior questionnaire in Parkinson's disease and older adults. Arch Physiother 14: 11-19. https://doi.org/10.33393/aop.2024.2702
    [29] Rider JV, Longhurst JK, Lekhak N, et al. (2022) Fear of falling avoidance behavior assessment and intervention in Parkinson's disease: a scoping review. Res Rev Parkinsonsm 12: 1-17. https://doi.org/10.2147/JPRLS.S350890
    [30] Keadle SK, McKinnon R, Graubard BI, et al. (2016) Prevalence and trends in physical activity among older adults in the United States: a comparison across three national surveys. Prev Med 89: 37-43. https://doi.org/10.1016/j.ypmed.2016.05.009
    [31] Sherrington C, Fairhall N, Kwok W, et al. (2020) Evidence on physical activity and falls prevention for people aged 65+ years: systematic review to inform the WHO guidelines on physical activity and sedentary behaviour. Int J Behav Nutr Phys Act 17: 144. https://doi.org/10.1186/s12966-020-01041-3
    [32] Emmerson KB, Harding KE, Taylor NF (2019) Providing exercise instructions using multimedia may improve adherence but not patient outcomes: a systematic review and meta-analysis. Clin Rehabil 33: 607-618. https://doi.org/10.1177/0269215518819706
    [33] Hopewell S, Adedire O, Copsey BJ, et al. (2018) Multifactorial and multiple component interventions for preventing falls in older people living in the community. Cochrane Database Syst Rev 7: CD012221. https://doi.org/10.1002/14651858.CD012221.pub2
    [34] Lee SH, Yu S (2020) Effectiveness of multifactorial interventions in preventing falls among older adults in the community: a systematic review and meta-analysis. Int J Nur Stud 106: 103564. https://doi.org/10.1016/j.ijnurstu.2020.103564
    [35] Montero-Odasso M, van der Velde N, Martin FC, et al. (2022) World guidelines for falls prevention and management for older adults: a global initiative. Age Ageing 51: afac205. https://doi.org/10.1093/ageing/afac205
    [36] Middleton KR, Anton SD, Perri MG (2013) Long-term adherence to health behavior change. Am J Lifestyle Med 7: 395-404. https://doi.org/10.1177/1559827613488867
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