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Stability analysis of recurrent neural networks with time-varying delay and disturbances via quadratic convex technique

机译:时变时滞和扰动的递归神经网络稳定性的二次凸技术分析

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In recent years, the stability of recurrent neural networks (RNNs) has been investigated extensively. It is well known that time delays and external disturbances may derail the stability of RNNs. This paper analyzes the stability of RNNs subject to time-varying delay and disturbances included within time-varying delay. Given a stable neural network, the problem to be explored is how the RNNs remain stable in the presence of delay and external disturbances included within delay. A delay-dependent stability criteria in terms of linear matrix inequalities (LMIs) for RNNs with time-varying delay are derived from the proposed augmented simple Lyapunov-Krasovski function, by applying a second-order convex combination with the property of quadratic convex functions. Simulation results of illustrative numerical examples are also delineated to substantiate the theoretical results.
机译:近年来,对递归神经网络(RNN)的稳定性进行了广泛的研究。众所周知,时间延迟和外部干扰可能会破坏RNN的稳定性。本文分析了时变时滞和时变时延所包含的扰动下的神经网络的稳定性。给定一个稳定的神经网络,需要探讨的问题是RNN在存在延迟和延迟中包含的外部干扰的情况下如何保持稳定。通过应用具有二次凸函数性质的二阶凸组合,从所提出的增强型简单Lyapunov-Krasovski函数推导了具有时变时滞的RNN的线性矩阵不等式(LMI)的时延相关稳定性准则。还描述了说明性数值示例的仿真结果,以证实理论结果。

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