Bifurcations of a delayed fractional-order BAM neural network via new parameter perturbations

Neural Netw. 2023 Nov:168:123-142. doi: 10.1016/j.neunet.2023.08.060. Epub 2023 Sep 11.

Abstract

This paper makes a new breakthrough in deliberating the bifurcations of fractional-order bidirectional associative memory neural network (FOBAMNN). In the beginning, the corresponding bifurcation results are established according to self-regulating parameter, which is different from bifurcation outcomes available by using time delay as the bifurcation parameter, and greatly enriches the bifurcation results of continuous neural networks(NNs). The deived results manifest that a larger self-regulating parameter is more conducive to the stability of the system, which is consistent with the actual meaning of the self-regulating parameter representing the decay rate of activity. In addition to the innovation in the research object, this paper also has innovation in the procedure of calculating the bifurcation critical point. In the face of the quartic equation about the bifurcation parameters, this paper utilizes the methodology of implicit array to calculate the bifurcation critical point succinctly and effectively, which eschews the disadvantages of the conventional Ferrari approach, such as cumbersome formula and huge computational efforts. Our developed technique can be employed as a general method to solve the bifurcation point including the problem of dealing with the bifurcation critical point of delay. Ultimately, numerical experiments test the key theoretical fruits of this paper.

Keywords: Bidirectional associative memory neural network; Fractional-order; Hopf bifurcation; Implicit array; Self-regulating parameter.

MeSH terms

  • Algorithms*
  • Fruit
  • Neural Networks, Computer*