Chaos and asymptotical stability in discrete-time neural networks

被引:137
作者
Chen, LN
Aihara, K
机构
[1] KAIHATSU COMP SERV CTR LTD, DEPT POWER SYST, KOTO KU, TOKYO 135, JAPAN
[2] UNIV TOKYO, DEPT ENGN, DEPT MATH ENGN & INFORMAT PHYS, BUNKYO KU, TOKYO 113, JAPAN
关键词
neural network; chaos; snap-back repeller; simulated annealing; asymptotical stability;
D O I
10.1016/S0167-2789(96)00302-8
中图分类号
O29 [应用数学];
学科分类号
070104 ;
摘要
This paper aims to theoretically prove by applying Marotto's Theorem that both transiently chaotic neural networks (TCNN) and discrete-time recurrent neural networks (DRNN) have chaotic structure. A significant property TCNN and DRNN is that they have only one bounded fixed point, when absolute values of the self-feedback connection weights in TCNN and the difference time in DRNN are sufficiently large. We show that this unique fixed point tan actually evolve into a snap-back repeller which generates chaotic structure, if several conditions are satisfied. On the other hand, by using the Lyapunov functions, we also derive; sufficient conditions on asymptotical stability for symmetrical versions of both TCNN and DRNN, under which TCNN and DRNN asymptotically converge to a fixed point. Furthermore, related bifurcations are also considered in this paper. Since both TCNN and DRNN are not special but simple and general, the obtained theoretical results hold for a wide class of discrete-time neural networks. To demonstrate the theoretical results of this paper better, several numerical simulations ale provided as illustrating examples.
引用
收藏
页码:286 / 325
页数:40
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