The use of different types of Clinical Decision Support Systems (CDSS) makes possible the improvement of the quality of the therapeutic and diagnostic efficiency in health field. Those systems, properly implemented, are able to simulate human expert clinician reasoning in order to suggest decisions on treatment of patients. In this paper, we exploit fuzzy inference machines to improve the quality of the day-by-day clinical care of type-2 diabetic patients of Anti-Diabetes Centre (CAD) of the Local Health Authority ASL Naples 1 (Naples, Italy). All the designed functionalities were developed thanks to the experience on the field, through different phases (data collection and adjustment, Fuzzy Inference System development and its validation on real cases) executed by an interdisciplinary research team comprising doctors, clinicians and IT engineers. The proposed approach also allows the remote monitoring of patients' clinical conditions and, hence, can help to reduce hospitalizations.
Citation: Colella Ylenia, De Lauri Chiara, Improta Giovanni, Rossano Lucia, Vecchione Donatella, Spinosa Tiziana, Giordano Vincenzo, Verdoliva Ciro, Santini Stefania. A Clinical Decision Support System based on fuzzy rules and classification algorithms for monitoring the physiological parameters of type-2 diabetic patients[J]. Mathematical Biosciences and Engineering, 2021, 18(3): 2654-2674. doi: 10.3934/mbe.2021135
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The use of different types of Clinical Decision Support Systems (CDSS) makes possible the improvement of the quality of the therapeutic and diagnostic efficiency in health field. Those systems, properly implemented, are able to simulate human expert clinician reasoning in order to suggest decisions on treatment of patients. In this paper, we exploit fuzzy inference machines to improve the quality of the day-by-day clinical care of type-2 diabetic patients of Anti-Diabetes Centre (CAD) of the Local Health Authority ASL Naples 1 (Naples, Italy). All the designed functionalities were developed thanks to the experience on the field, through different phases (data collection and adjustment, Fuzzy Inference System development and its validation on real cases) executed by an interdisciplinary research team comprising doctors, clinicians and IT engineers. The proposed approach also allows the remote monitoring of patients' clinical conditions and, hence, can help to reduce hospitalizations.
In ecological systems, the interactions between different species can generate rich phenomena. Many models are derived to illustrate the predator-prey system from the view of both mathematics and biology [2,22,28,32]. Meanwhile, it is well known that the spatial structure may further affect the population dynamics of the species [7,8,15]. The spatially homogeneous reaction-diffusion predator-prey model with classical Lotka-Volterra interaction and no flux boundary conditions has been studied by many scholars, and the unique positive steady state solution is globally asymptotically stable in that case [21]. Our work is based on the important contribution of Yi, Wei and Shi [35] in the bifurcation analysis from the constant coexistence equilibrium solution of the following Rosenzweig-MacArthur model with Holling type-Ⅱ functional response [14,27]:
(BP){Ut−d1ΔU=r1U(1−UK)−m1UVγ+U,x∈Ω, t>0,Vt−d2ΔU=−r2V+m2UVγ+U,x∈Ω, t>0,∂νU=∂νV=0,x∈∂Ω, t>0.U(x,0)=U0(x)≥0, V(x,0)=V0(x)≥0,x∈Ω. |
Here
It is worth noting that the functional responses in two species are the same in the model
The term was invented by Dutch biologist Hans Kruuk [16] after studying spotted hyenas in Africa and red foxes in England. Other than humans, surplus killing has been observed among zooplankton, weasels, honey badgers, wolves, red foxes, leopards, lions, spotted hyenas, spiders[1,5,9,11,17,19,20,31]. The emergence of these phenomena refers to the fact that animals may only partially consume or abandon intact prey they have captured. There are many documented examples of predators exhibiting surplus killing. For example, Samu and Bíró [30] have found that the wandering spider, Pardosa hortensis (Lycosidae), exhibited significant levels of both partial feeding and prey abandonment at high rates of encounter with prey. In Canada's Northwest Territories, the researchers once found the bodies of 34 neonatal caribou calves that had been killed by wolves and scattered-some half-eaten and some completely untouched-over 3 square kilometres. In surplus killing, predators eat only the most-preferred animals and animal parts. Bears engaging in surplus killing of salmon are likelier to eat unspawned fish because of their higher muscle quality, and high-energy parts such as brains and eggs [16]. Surplus killing can deplete the overall food supply, waste predator energy and risk them being injured. Nonetheless, researchers say animals surplus kill whenever they can, in order to procure food for offspring and others, to gain valuable killing experience, and to create the opportunity to eat the carcass later when they are hungry again.
Inspired by their work, in this article, we would like to study the following predator-prey system with the predator exhibiting a "surplus killing" behaviour which can be demonstrated by different functional responses in the equations.
{∂u∂t−d1Δu=r1u(1−uK1)−m1uv, x∈Ω, t>0,∂v∂t−d2Δv=r2v(1−vK2)+m2uvγ+u, x∈Ω, t>0,∂u∂ν =∂u∂ν =0, x∈∂Ω, t>0,u(x,0)=u0(x)≥0(≢0), v(x,0)=v0(x)≥0(≢0), x∈Ω. | (1) |
Here
With a dimensionless change of variables:
˜u=uγ, ˜v=vK2, ˜t=r1t, ~d1=d1r1, ~d2=d2r1, |
θ=r2r1, ˜γ=γK1, ˜m1=m1K2r1, ˜m2=m2r1, |
still denote
{∂u∂t−d1Δu=u(1−γu)−m1uv,x∈Ω, t>0,∂v∂t−d2Δv=θv(1−v)+m2uv1+u,x∈Ω, t>0,∂u∂ν = ∂u∂ν =0,x∈∂Ω, t>0.u(x,0)=u0(x)≥0(≢0), v(x,0)=v0(x)≥0(≢0),x∈Ω. | (2) |
Considering that the biomass that predator consumed cannot convert into the new production for an instant, we add time delay into the functional response of the second equation of (2), and make it conform with natural situation:
{∂u(x,t)∂t−d1Δu(x,t)=u(x,t)(1−γu(x,t))−m1u(x,t)v(x,t), x∈Ω, t>0,∂v(x,t)∂t−d2Δv(x,t)=θv(x,t)(1−v(x,t))+m2u(x,t−τ)v(x,t)1+u(x,t−τ), x∈Ω, t>0,∂u∂ν=∂u∂ν =0, x∈∂Ω, t>0,u(x,t)=u0(x,t)≥0(≢0), v(x,t)=v0(x,t)≥0(≢0), x∈Ω, −τ≤t≤0. | (3) |
Here,
Define the real-valued Sobolev space
X:={(u,v)∈H2(0,lπ)×H2(0,lπ)|ux=vx=0,x=0,lπ}, |
with inner product
For sake of discussion, we make the following assumption:
(H1)m1<1. |
The system (3) always has three non-negative constant equilibrium solutions:
u∗=12γθ[−Γ+√Γ2−4γθ2(m1−1)],v∗=1m1(1−γu∗). |
with
Our main contribution for this article is a detailed and rigorous analysis about the global dynamics of the positive equilibrium of the diffusive predator-prey system (2). Keeping other parameters constant, we use the predation rate
The rest of the paper is organized as follows. In Section 2, the existence and priori bound of a positive solution for the reaction diffusion system are given, and the global asymptotically stability of positive equilibrium is proved. In Section 3, the stability of the positive constant steady state is considered, and the existence of the related Hopf bifurcation at the critical points is investigated with delay as the bifurcation parameter. In Section 4, by applying the normal form theory and center manifold reduction of partial functional differential equations, some detailed results of Hopf bifurcation are derived. Some numerical simulations are presented in Section 5. Throughout the paper, we denote
In this section, we shall investigate the existence of a positive solution for system (3) with delay
Clearly, the system (3) with
{∂u(x,t)∂t−d1Δu(x,t)=u(x,t)(1−γu(x,t))−m1u(x,t)v(x,t),x∈Ω, t>0,∂v(x,t)∂t−d2Δv(x,t)=θv(x,t)(1−v(x,t))+m2u(x,t)v(x,t)1+u(x,t),x∈Ω, t>0,∂u∂ν = ∂u∂ν =0,x∈∂Ω, t>0,u(x,0)=u0(x)≥0(≢0), v(x,0)=v0(x)≥0(≢0),x∈Ω, | (4) |
where
Theorem 2.1. Suppose that
0<u(x,t)≤u∗(t), 0<v(x,t)≤v∗(t), for t>0 and x∈Ω, |
where
{dudt=u(1−γu)dvdt=θv(1−v)+m2uv1+u,u(0)=u0,v(0)=v0, | (5) |
and
u0=supx∈¯Ωu0(x), v0=supx∈¯Ωv0(x); |
lim supt→∞u(x,t)≤1γ, lim supt→∞v(x,t)≤1+m2θ. |
Proof. Define
f(u,v)=u(1−γu)−m1uv, g(u,v)=θv(1−v)+m2uv1+u. |
Obviously, for any
Dfv=−m1u≤0, Dgu=m2v(1+u)2≥0, |
thus system (4) is a mixed quasi-monotone system(see[23]). Let
(u_(x,t), v_(x,t))=(0, 0) and (ˉu(x,t), ˉv(x,t))=(u∗(t), v∗(t)). |
Substitute
∂ˉu∂t−d1Δˉu−f(ˉu,v_)=0≥0=∂u_∂t−d1Δu_−f(u_,ˉv), |
∂ˉv∂t−d2Δˉv−g(ˉu,ˉv)=0≥0=∂v_∂t−d2Δv_−g(u_,v_), |
and
0≤ u0(x)≤u0, 0≤v0(x)≤v0. |
Then
0≤u(x,t)≤u∗(t), 0≤v(x,t)≤v∗(t), t≥0. |
Since
Let
{dudt=u(1−γu),u(0)=u0>0. |
One can see that
u(x,t)≤1/γ+ε, for t≥T0 and x∈¯Ω, |
which implies that
lim supt→∞u(x,t)≤1/γ. |
Let
{dvdt=θv(1−v)+m2v,v(0)=v0. |
Then we have
θv(1−v)+m2uv1+u≤θv(1−v)+m2v, |
it follows that
v(x,t)≤1+m2θ+ε′ for t≥T′0 and x∈¯Ω, |
which implies that
lim supt→∞v(x,t)≤1+m2θ. |
The proof is complete.
In this section, we shall give the conditions to ensure that the positive constant equilibrium
Theorem 2.2. Suppose that
(H2)m1(1+m2θ(1+γ))<1 |
are satisfied. Then the positive equilibrium
limt→∞u(x,t)=u∗, limt→∞v(x,t)=v∗, for x∈¯Ω. |
Proof. In Section 2.1, we get that
u(x,t)≤1/γ+ε, for t>T0, x∈¯Ω. |
From
m1+(1+m1)ε0+m1m2(1+γε0)θ(1+γ+γε0)<1. | (6) |
Let
∂v∂t=d2Δv+θv(1−v)+m2uv1+u≤d2Δv+θv(1−v)+m2ˉc1v1+ˉc1, |
for
ˉc2=1+m2ˉc1θ(1+ˉc1)+ε0. |
Again we have
∂u∂t=d1Δu+u(1−γu)−m1uv≥d1Δu+u(1−γu)−m1uˉc2, |
for
1−m1ˉc2>0, and 1−m1ˉc2−ε0>0. |
Hence, there exists a
c_1=1γ(1−m1ˉc2−ε0). |
Finally, using the similar method shown above, we have
∂v∂t=d2Δv+θv(1−v)+m2uv1+u≥d2Δv+θv(1−v)+m2c_1v1+c_1, |
for
1+m2c_1θ(1+c_1)>1, and 1+m2c_1θ(1+c_1)−ε0>1. |
Then there exists a
c_2=1+m2c_1θ(1+c_1)−ε0. |
Therefor for
c_1≤u(x,t)≤ˉc1, c_2≤v(x,t)≤ˉc2, |
and
1−γˉc1−m1c_2≤0, 1−ˉc2+m2ˉc1θ(1+ˉc1)≤0, |
1−γc_1−m1ˉc2≥0, 1−c_2+m2c_1θ(1+c_1)≥0. |
Then
To investigate the asymptotic behavior of the positive equilibrium, we define two sequences of constant vectors
{ˉu(m)=ˉu(m−1)+1L1[ˉu(m−1)(1−γˉu(m−1))−m1ˉu(m−1)v_(m−1)],u_(m)=u_(m−1)+1L1[u_(m−1)(1−γu_(m−1))−m1u_(m−1)ˉv(m−1)],ˉv(m)=ˉv(m−1)+1L2[θˉv(m−1)(1−ˉv(m−1))+m2ˉu(m−1)ˉv(m−1)1+ˉu(m−1)],v_(m)=v_(m−1)+1L2[θv_(m−1)(1−v_(m−1))+m2u_(m−1)v_(m−1)1+u_(m−1)], | (7) |
where
Then for
(u_(0),v_(0))≤(u_(m),v_(m))≤(u_(m+1),v_(m+1))≤(ˉu(m+1), ˉv(m+1))≤(ˉu(m), ˉv(m))≤(ˉu(0), ˉv(0)), |
and
(ˉu(m), ˉv(m))→(ˉu,ˉv), (u_(m), v_(m))→(u_,v_), as m→∞. |
From the recursion (7), we can obtain that
ˉu(1−γˉu)−m1ˉuv_=0, θˉv(1−ˉv)+m2ˉuˉv1+ˉu=0,u_(1−γu_)−m1u_ˉv=0, θv_(1−v_)+m2u_ v_1+u_=0. | (8) |
Simplify the equations, we get
γ(ˉu−u_)=m1(ˉv−v_), m2(ˉu−u_)=θ(1+ˉu)(1+u_)(ˉv−v_). |
Then we obtain
γm1(ˉu−u_)=m2(ˉu−u_)θ(1+ˉu)(1+u_). | (9) |
If we assume that
u_1+u_=1−θγ(1+ˉu)m1m2. | (10) |
From Eq.(8), we can also have
v_=1m1(1−γˉu) and 1−v_+m2u_θ(1+u_)=0. | (11) |
Substituting the first equation of Eq.(11) and Eq.(10) into the second equation of Eq.(11), it follows that
1−1m1(1−γˉu)+m2θ(1−θγ(1+ˉu)m1m2)=0, |
that is
1m1=m2θ(1+γ)+11+γ. | (12) |
This is a contraction to the condition
Now we investigate the local stability of positive equilibrium
U(t):=(u(t),v(t))T. |
Then the system (4) can be rewritten as
˙U(t)=DΔU(t)+F(U), | (13) |
where
D=diag{d1,d2}, and F:X→R2, |
is defined by
F(U)=(u(t)(1−γu(t))−m1u(t)v(t)θv(t)(1−v(t))−m2u(t)v(t)1+u(t)). |
We consider the linearization at
˙U(t)=DΔU(t)+LE∗(U), | (14) |
where
LE∗=(−γu∗−m1u∗m2v∗(1+u∗)2−θv∗), |
and its characteristic equation satisfies
λξ−DΔξ−LE∗ξ=0. | (15) |
It is well known that the eigenvalue problem
−Δφ=μφ,x∈(0,lπ),φx|x=0,lπ=0, |
has eigenvalues
μn=n2/l2,n∈N0=N∪{0}, |
with corresponding eigenfunctions
(ϕψ)=∞∑n=0(anbn)cos(nx/l), an, bn∈C, |
be an eigenfunction for (15). Then from a straightforward computation, we obtain that the eigenvalues of (15) can be given by the following equations
det(λI+Dn2l2−LE1)=0, n∈N0, |
where
λ2−Tnλ+Dn+B∗=0, n∈N0. | (16) |
For all
Tn=−(d1+d2)n2l2−(γu∗+θv∗)<0,Dn+B∗=(d1n2l2+γu∗)(d2n2l2+θv∗)+m1m2u∗v∗(1+u∗)2>0. |
Then all the roots of Eq.(16) have negative real parts. This implies that the positive equilibrium
The above result indicates that
Remark 1. According to the relationship between the original equation (1) and the dimensionless equation (2), we can illustrate the effect of "surplus killing". There are two different functional responses in equation (1), in order to be consistent with the assumptions, let the consumption rate
Remark 2. If
∂v∂t=d2Δv+θv(1−v)+m2uv1+u≥d2Δv+θv(1−v). |
It is well known that the positive solution of latter equation uniformly approach to
∂u∂t=d1Δu+u(1−γv)−m1uv≤d2Δu+u(1−γu−m1(1−ε)), |
for
In this section, we shall study the stability of the positive constant steady state
The linearization of system (13) at
˙U(t)=DΔU(t)+L∗(Ut), | (17) |
where
L∗(ϕt)=L1ϕ(0)+L2ϕ(−τ), |
and
L1=(−γu∗−m1u∗0−θv∗), L2=(00m2v∗(1+u∗)20), |
ϕ(t)=(ϕ1(t), ϕ2(t))T, ϕt(⋅)=(ϕ1(t+⋅), ϕ2(t+⋅))T. |
The corresponding characteristic equation satisfies
λξ−DΔξ−L(eλ⋅ξ)=0, | (18) |
where
det(λI+Dn2l2−L1−L2e−λτ)=0, n∈N0. |
That is, each characteristic value
λ2−Tnλ+Dn+B∗e−λτ=0, n∈N0, | (19) |
where
Tn=−(d1+d2)n2l2−γu∗−θv∗,Dn=(d1n2l2+γu∗)(d2n2l2+θv∗),B∗=m1m2u∗v∗(1+u∗)2. |
Clearly,
Let
−ω2−Tniω+Dn+B∗e−iωτ=0. |
Separating the real and imaginary parts, it follows that
{B∗cosωτ=ω2−Dn,B∗sinωτ=−Tnω. | (20) |
Then we have
ω4−(2Dn−T2n)ω2+D2n−B2∗=0. | (21) |
Denote
z2−(2Dn−T2n)z+D2n−B2∗=0, | (22) |
where
2Dn−T2n=−(d21+d22)n4l4−2(d1γu∗+d2θv∗)−(γ2u2∗+θ2v2∗)<0. |
Hence Eq.(22) has a unique positive root
zn=2Dn−T2n+√(2Dn−T2n)2−4(D2n−B2∗)2, |
only if
From the explicit formula of
Dn−B∗=d1d2n4l4+(d1θv∗+d2γu∗)n4l4+D0−B∗→∞, as n→∞, |
where
D0−B∗=γθu∗v∗−m2m1u∗v∗(1+u∗)2, |
and if
D0−B∗=u∗v∗(γθ−m2m1(1+u∗)2)<0, |
we find a constant
Dn−B∗<0, for 0≤n<n∗. |
and
Dn−B∗≥0, for n≥n∗. |
Here we denote the set
S={n∈N0| Dn−B∗<0}. |
By Eq.(20), we have
τn,j=1ωn(arccosω2n−DnB∗+2jπ), j∈N0, n∈S. | (23) |
Following the work of Cooke and Grassman[6], we have
Lemma 3.1. Suppose that
sign α′(τn,j)=1, for j∈N0, n∈S, |
where
α(τ)= Reλ(τ). |
Proof. Substituting
(2λ−Tn−τB∗e−λτ)dλdτ−λB∗e−λτ=0. |
Thus
(dλdτ)−1=2λ−Tn−τB∗e−λτλB∗e−λτ. |
By Eq.(20), we have
Re(dλdτ)−1|τ=τn,j=2ωncosωnτn,j−Tnsinωnτn,jB∗ωn=2ω2n−2Dn+T2nB2∗=√T4n−4T2nDn+4B2∗B2∗. |
Since the sign of
From the Proposition 2.3 of [4], we have that
τn,j≤τn,j+1, for all j∈N0,n∈S, |
and
τn,j≤τn+1,j, for all j∈N0,n∈S. |
Then
Lemma 3.2. Assume that
T4n−4T2nDn+4B2∗<0, |
or
T4n−4T2nDn+4B2∗≥0 and γθ−m2m1(1+u∗)2>0, |
for all
γθ−m2m1(1+u∗)2<0, |
then for
τ=τn,j , j∈N0, n∈S, |
the
From Lemmas 3.1 and 3.2, we have the following theorem.
Theorem 3.3. Assume that
T4n−4T2nDn+4B2∗<0, |
or
T4n−4T2nDn+4B2∗≥0 and γθ−m2m1(1+u∗)2>0, |
for all
γθ−m2m1(1+u∗)2<0, |
then system (3) undergoes a Hopf bifurcation at the equilibrium
In section 3, we obtained some conditions under which the system (3) undergoes a Hopf bifurcation. In this section, we shall study the direction of Hopf bifurcation near the positive equilibrium and stability of the bifurcating periodic solutions. We are able to show more detailed information of Hopf bifurcation by using the normal form theory and center manifold reduction due to [10,13,33].
Rescaling the time
{∂˜u∂t=τ[d1Δ˜u−γu∗˜u−m1u∗˜v−f1(ut,vt)],x∈Ω, t>0,∂˜v∂t=τ[d2Δ˜v−θv∗˜v+m2v∗(1+u∗)2ut(−1)+f2(ut,vt)],x∈Ω, t>0,∂˜u∂ν=0, ∂˜v∂ν=0,x∈∂Ω, t>0,˜u(x,t)=˜u0(x,t), ˜v(x,t)=˜v0(x,t),x∈Ω,−1≤t≤0, | (24) |
where
ut=u(x,t+θ), vt=v(x,t+θ), θ∈[−1,0], |
˜u0(x,t)=u0(x,t)−u∗, ˜v0(x,t)=v0(x,t)−v∗, |
and for
f1(ϕ1,ϕ2)=−γϕ1(0)2−m1ϕ1(0)ϕ2(0), | (25) |
f2(ϕ1,ϕ2)=−θϕ2(0)2+m2(1+u∗)2ϕ1(−1)ϕ2(0)−m2v∗(1+u∗)3ϕ1(−1)2−m2(1+u∗)3ϕ1(−1)2ϕ2(0)+m2v∗(1+u∗)4ϕ1(−1)3+O(4). | (26) |
Let
˙U(t)=˜DΔU(t)+Lϵ(Ut)+F(ϵ,Ut), | (27) |
where
˜D=(τ∗+ϵ)D and Lϵ:C→X, F:C→X |
are defined, respectively, by
Lϵ(ϕ(θ))=(τ∗+ϵ)L1ϕ(0)+(τ∗+ϵ)L2ϕ(−1), |
F(ϵ,ϕ(θ))=(F1(ϵ,ϕ(θ)), F2(ϵ,ϕ(θ)))T, |
with
(F1(ϵ,ϕ(θ)), F2(ϵ,ϕ(θ)))=(τ∗+ϵ)(f1(ϕ1(θ),ϕ2(θ)), f2(ϕ1(θ),ϕ2(θ))), |
where
The linearized equation at the origin
˙U(t)=˜DΔU(t)+Lϵ(Ut). | (28) |
According to the theory of semigroup of linear operator [26], we have the solution operator of (28) is a
Aϵϕ={˙ϕ(θ),θ∈[−1,0),˜DΔϕ(0)+Lϵ(ϕ),θ=0, | (29) |
with
dom(Aϵ):={ϕ∈C:˙ϕ∈C,ϕ(0)∈dom(Δ),˙ϕ(0)=˜DΔϕ(0)+Lϵ(ϕ)}. |
When
Hence, equation (27) can be rewritten as the abstract ODE in
˙Ut=AϵUt+X0F(ϵ,Ut), | (30) |
where
X0(θ)={0,θ∈[−1,0),I,θ=0. |
We denote
bn=cos(nx/l)‖cos(nx/l)‖, βn={(bn,0)T,(0,bn)T}, |
where
‖cos(nx/l)‖=(∫lπ0cos2(nx/l)dx)12. |
For
ϕn=⟨ϕ,βn⟩=(⟨ϕ(1),bn⟩,⟨ϕ(2),bn⟩)T. |
Define
Aϵ,n(ϕn(θ)bn)={˙ϕn(θ)bn,θ∈[−1,0),∫0−1dηn(ϵ,θ)ϕn(θ)bn,θ=0, | (31) |
and
Lϵ,n(ϕn)=(τ∗+ϵ)L1ϕn(0)+(τ∗+ϵ)L2ϕn(−1), |
∫0−1dηn(ϵ,θ)ϕn(θ)=−n2l2˜Dϕn(0)+Lϵ,n(ϕn), |
where
ηn(ϵ,θ)={−(τ∗+ϵ)L2,θ=−1,0,θ∈(−1,0),(τ∗+ϵ)L1−n2l2˜D,θ=0. |
Denote
A∗ψ(s)={−˙ψ(s), s∈(0,1],∞∑n=0∫0−1dηTn(0,θ)ψn(−θ)bn, s=0. |
Following [10], we introduce the bilinear formal
(ψ,ϕ)=∞∑k,j=0(ψk,ϕj)c∫Ωbkbjdx, |
where
ψ=∞∑n=0ψnbn∈C∗, ϕ=∞∑n=0ϕnbn∈C, |
and
ϕn∈C:=C([−1,0],R2), ψn∈C∗:=C([0,1],R2). |
Notice that
∫Ωbkbjdx=0 for k≠j, |
we have
(ψ,ϕ)=∞∑n=0(ψn,ϕn)c|bn|2, |
where
(ψn,ϕn)c=¯ψTn(0)ϕn(0)−∫0−1∫θξ=0¯ψTn(ξ−θ)dηn(0,θ)ϕn(ξ)dξ. |
Let
q(θ)bn0=q(0)eiωn0τ∗θbn0, q∗(s)bn0=q∗(0)eiωn0τ∗sbn0 |
be the eigenfunctions of
q(0)=(1,q1)T, q∗(0)=M(q2,1)T, |
so that
q1=−iωn0+d1n20/l2+γu∗m1u∗, q2=iωn0−d2n20/l2−θv∗m1u∗,¯M=(1+u∗)2(q1+ˉq2)(1+u∗)2+τ∗m2v∗e−iωn0τ∗. |
Then we decompose the space
C=P⊕Q, |
where
P={zqbn0+¯z¯qbn0|z∈C}, |
Q={ϕ∈C|(q∗bn0,ϕ)=0 and (¯q∗bn0,ϕ)=0}. |
That is
Thus, system (30) could be rewritten as
Ut=z(t)q(⋅)bn0+ˉz(t)ˉq(⋅)bn0+W(t,⋅), |
where
z(t)=(q∗bn0,Ut), W(t,⋅)∈Q, | (32) |
and
W(t,θ)=Ut(θ)−2Re{z(t)q(θ)bn0}. | (33) |
Then we have
˙z(t)=iω0z(t)+ˉq∗T(0)⟨F(0,Ut),βn0⟩, | (34) |
where
⟨F,βn⟩:=(⟨F1,bn⟩,⟨F2,bn⟩)T. |
It follows from Appendix A of [13](also see [18]), there exists a center manifold
W(t,θ)=W(z(t),ˉz(t),θ)=W20(θ)z22+W11(θ)zˉz+W02(θ)ˉz22+⋯, | (35) |
For solution
F(0,Ut)∣C0=˜F(0,z,ˉz), |
and
˜F(0,z,ˉz)=˜F20z22+˜F11zˉz+˜F02ˉz22+˜F21z2ˉz2+⋯. |
Therefore the system restricted to the center manifold is given by
˙z(t)=iω0z(t)+g(z,ˉz), |
and denote
g(z,ˉz)=g20z22+g11zˉz+g02ˉz22+g21z2ˉz2+⋯. |
By direct calculation, we get
g20=τ∗ˉM∫lπ0b3n0dx[ˉq2(−2γ−2m1q1)−2θq21+2m2q1(1+u∗)2e−iωn0τ∗−2m2v∗(1+u∗)3e−i2ωn0τ∗],g11=τ∗ˉM∫lπ0b3n0dx[ˉq2(−2γ−m1(q1+ˉq1))−2θq1ˉq1+m2(1+u∗)2(q1eiωn0τ∗+ˉq1e−iωn0τ∗+)−2m2v∗(1+u∗)3], |
g02=τ∗ˉM∫lπ0b3n0dx[ˉq2(−2γ−2m1ˉq1)−2θˉq21+2m2ˉq1(1+u∗)2eiωn0τ∗−2m2v∗(1+u∗)3ei2ωn0τ∗],g21=τ∗ˉM(Q1∫lπ0b4n0dx+Q2∫lπ0b2n0dx), |
where
Q1=6m2v∗(1+u∗)4e−iωn0τ∗−2m2(1+u∗)3(2q1+ˉq1e−i2ωn0τ∗),Q2=ˉq2{−2γ[W(1)20(0)+2W(1)11(0)]−m1[W(2)20(0)+2W(2)11(0)+ˉq1W(1)20(0)+2q1W(1)11(0)]}−2θ[ˉq1W(2)20(0)+2q1W(2)11(0)]+m2(1+u∗)2[ˉq1W(1)20(−1)+W(2)20(0)eiωn0τ∗+2q1W(1)11(−1)+2W(2)11(0)e−iωn0τ∗]−2m2v∗(1+u∗)3[W(1)20(−1)eiωn0τ∗+2W(1)11(−1)e−iωn0τ∗]. |
Since
˙W=˙Ut−˙zqbn0−˙ˉzˉqbn0={A0W−2Re{g(z,ˉz)q(θ)}bn0,θ∈[−r,0),A0W−2Re{g(z,ˉz)q(θ)}bn0+˜F,θ=0,≐A0W+H(z,ˉz,θ), | (36) |
where
H(z,ˉz,θ)=H20(θ)z22+H11(θ)zˉz+H02(θ)ˉz22+⋯. |
Obviously,
H20(θ)={−g20q(θ)bn0−ˉg02ˉq(θ)bn0,θ∈[−r,0),−g20q(0)bn0−ˉg02ˉq(0)bn0+˜F20,θ=0,H11(θ)={−g11q(θ)bn0−ˉg11ˉq(θ)bn0,θ∈[−r,0),−g11q(0)bn0−ˉg11ˉq(0)bn0+˜F11,θ=0,⋯. |
Comparing the coefficients of (36) with the derived function of (35), we obtain
(A0−2iω0I)W20(θ)=−H20(θ),A0W11(θ)=−H11(θ), ⋯. | (37) |
From (29) and (37), for
W20(θ)=−g20iωn0τ∗(1q1)eiωn0τ∗θbn0−ˉg023iωn0τ∗(1ˉq1)e−iωn0τ∗θbn0+E1e2iωn0τ∗θ,W11(θ)=g11iωn0τ∗(1q1)eiωn0τ∗θbn0−ˉg11iωn0τ∗(1ˉq1)e−iωn0τ∗θbn0+E2, | (38) |
where
(A0−2iω+n0τ∗I)E1e2iω+n0τ∗θ∣θ=0+˜F20=0,A0E2∣θ=0+˜F11=0. | (39) |
The terms
˜F20=∞∑n=1⟨˜F20,βn⟩bn,˜F11=∞∑n=1⟨˜F11,βn⟩bn. |
Denote
E1=∞∑n=0En1bn, E2=∞∑n=0En2bn, |
then from (39) we have
(A0−2iωn0τ∗I)En1bne2iωn0τ∗θ∣θ=0=−⟨˜F20,βn⟩bn,A0En2bn∣θ=0=−⟨˜F11,βn⟩bn,n=0,1,⋯. |
Thus,
En1=(2iωn0τ∗I−∫0−1e2iωn0τ∗θdηn(0,θ))−1⟨˜F20,βn⟩,En2=−(∫0−1dηn(0,θ))−1⟨˜F11,βn⟩,n=0,1,⋯, |
where
⟨˜F20,βn⟩={1√lπˆF20,n0≠0, n=0,1√2lπˆF20,n0≠0, n=2n0,1√lπˆF20,n0=0, n=0,0,other, |
⟨˜F11,βn⟩={1√lπˆF11,n0≠0, n=0,1√2lπˆF11,n0≠0, n=2n0,1√lπˆF11,n0=0, n=0,0,other, |
ˆF20=[−2γ−2m1q1−2θq21+2m2q1(1+u∗)2e−iωn0τ∗−2m2v∗(1+u∗)3e−i2ωn0τ∗], |
ˆF11=[−2γ−m1(q1+ˉq1)−2θq1ˉq1+m2(1+u∗)2(q1eiωn0τ∗+ˉq1e−iωn0τ∗)−m2v∗(1+u∗)3]. |
Hence,
Denote
c1(0)=i2ωn0τ∗(g20g11−2|g11|2−13|g02|2)+12g21,μ2=−Re(c1(0))τ∗Re(λ′(τ∗)), β2=2Re(c1(0)),T2=−1ωn0τ∗(Im(c1(0))+μ2(ωn0+τ∗Im(λ′(τ∗))). | (40) |
Then by the general result of Hopf bifurcation theory (see [13]), we know that the parameters in (40) determine the properties of Hopf bifurcation which we can describe specifically:
From 3.1 in Section 4, we know that
Theorem 4.1. If
In this section, we make some simulations to support and extend our analytical results. Taking
γ=0.01, θ=0.05, m1=0.20, m2=0.30, d1=1, d2=0.50. |
Since
ω≈0.2074, τ∗≈4.6242. |
Furthermore, we have
If we choose
γ=0.01, θ=0.05, m1=2, m1=0.30, d1=1, d2=0.50, τ=1. |
Here we chose
The initial conditions in all simulations are given by
Remark 3.
Fig. 2 and Fig. 3 come into being on the precondition of
The authors greatly appreciate the anonymous referees' careful reading and valuable comments. Their critical comments and helpful suggestions greatly improve the presentation of the manuscript.
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