Simulink Modeling and Comparison of Zhang Neural Networks and Gradient Neural Networks for Time-Varying Lyapunov Equation Solving

Yunong Zhang, Ke Chen, Xuezhong Li, Chengfu Yi, Hong Zhu
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引用次数: 24

Abstract

In view of the great potential in parallel processing and ready implementation via hardware, neural networks are now often employed to solve online matrix algebraic problems. Recently, a special kind of recurrent neural network has been proposed by Zhang et al, which could be generalized to solving online Lyapunov equation with time-varying coefficient matrices. In comparison with gradient-based neural networks (GNN), the resultant Zhang neural networks (ZNN) perform much better on solving these time-varying problems. This paper investigates the MATLAB Simulink modeling, simulative verification and comparison of ZNN and GNN models for time-varying Lyapunov equation solving. Computer-simulation results verify that superior convergence and efficacy could be achieved by such ZNN models when solving the time-varying Lyapunov matrix equation, as compared to the GNN models.
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张氏神经网络与梯度神经网络求解时变Lyapunov方程的Simulink建模及比较
鉴于神经网络在并行处理和硬件实现方面的巨大潜力,神经网络现在经常被用来解决在线矩阵代数问题。最近,Zhang等人提出了一种特殊的递归神经网络,它可以推广到求解具有时变系数矩阵的在线Lyapunov方程。与基于梯度的神经网络(GNN)相比,合成张神经网络(ZNN)在解决这些时变问题上表现得更好。本文研究了ZNN和GNN模型在求解时变Lyapunov方程中的MATLAB Simulink建模、仿真验证和比较。计算机仿真结果验证了该ZNN模型在求解时变Lyapunov矩阵方程时具有优于GNN模型的收敛性和有效性。
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