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  • 标题:Performance analyses of recurrent neural network models exploited for online time-varying nonlinear optimization
  • 本地全文:下载
  • 作者:Liu, Mei ; Liao, Bolin ; Ding, Lei
  • 期刊名称:Computer Science and Information Systems
  • 印刷版ISSN:1820-0214
  • 电子版ISSN:2406-1018
  • 出版年度:2016
  • 卷号:13
  • 期号:2
  • 页码:691-705
  • DOI:10.2298/CSIS160215023L
  • 出版社:ComSIS Consortium
  • 摘要:In this paper, a special recurrent neural network (RNN), i.e., the Zhang neural network (ZNN), is presented and investigated for online time-varying nonlinear optimization (OTVNO). Compared with the research work done previously by others, this paper analyzes continuous-time and discrete-time ZNN models theoretically via rigorous proof. Theoretical results show that the residual errors of the continuous-time ZNN model possesses a global exponential convergence property and that the maximal steady-state residual errors of any method designed intrinsically for solving the static optimization problem and employed for the online solution of OTVNO is O(τ), where τ denotes the sampling gap. In the presence of noises, the residual errors of the continuous-time ZNN model can be arbitrarily small for constant noises and random noises. Moreover, an optimal sampling gap formula is proposed for discrete-time ZNN model in the noisy environments. Finally, computer-simulation results further substantiate the performance analyses of ZNN models exploited for online time-varying nonlinear optimization.
  • 关键词:performance analysis; Zhang neural network (ZNN); online time-varying nonlinear optimization (OTVNO); Newton conjugate gradient model
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