Research article

Mathematical modeling for the development of traffic based on the theory of system dynamics

  • Received: 02 May 2023 Revised: 25 July 2023 Accepted: 15 August 2023 Published: 07 October 2023
  • MSC : 34A37

  • This paper is concerned with mathematical modeling for the development of Shandong traffic. The system dynamics model of the development of traffic in Shandong is established. In terms of this model, it is shown that highway operation as well as rail transit promotes the development of traffic, while traffic accidents inhibit traffic development. Moreover, the maximum error between the output data and the statistics bureau, based on which some forecasts for the development of traffic in the future are given, is obtained, some suggestions and optimization schemes for traffic development are given. Finally, a neural network model of the development of Shandong traffic is also derived.

    Citation: Juan Manuel Sánchez, Adrián Valverde, Juan L. G. Guirao, Huatao Chen. Mathematical modeling for the development of traffic based on the theory of system dynamics[J]. AIMS Mathematics, 2023, 8(11): 27626-27642. doi: 10.3934/math.20231413

    Related Papers:

  • This paper is concerned with mathematical modeling for the development of Shandong traffic. The system dynamics model of the development of traffic in Shandong is established. In terms of this model, it is shown that highway operation as well as rail transit promotes the development of traffic, while traffic accidents inhibit traffic development. Moreover, the maximum error between the output data and the statistics bureau, based on which some forecasts for the development of traffic in the future are given, is obtained, some suggestions and optimization schemes for traffic development are given. Finally, a neural network model of the development of Shandong traffic is also derived.



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