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Static Linear Algebra Problems Solving via Elegant Design Formula and Simplified Explicit Form of Zhang Neural Network with Illustrative Instances

机译:静态线性代数通过优雅的设计公式解决和具有说明性实例的简体明确的张神经网络明确形式

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Owing to the parallelism feature and convenient hardware implementation of recurrent neural network (RNN), many RNN models have been proposed to solve linear and nonlinear algebra problems. There into, Zhang neural network (ZNN) and gradient neural network (GNN) have received considerable attention and been exploited to investigate various dynamic models for solving various issues. However, the ZNN and GNN are depicted in quite rigorous formulations, which may limit the development of methodology of dynamic model design. This paper considers developing a new RNN design method named simplified Zhang neural network (SZNN) with more general formulation and versatile instances for statics. The comparisons between SZNN and two conventional methods are analyzed through theoretical results and simulation experiments of linear equation. Furthermore, to show the effectiveness and versatility of SZNN, Sylvester equation and matrix inversion are solved by the proposed SZNN models, and the simulation results substantiate the excellent convergence of the SZNN models.
机译:由于并行特性和经常性神经网络(RNN)的方便硬件实现,已经提出了许多RNN模型来解决线性和非线性代数问题。在那里,张神经网络(ZnN)和梯度神经网络(GNN)得到了相当大的关注,并被利用来调查各种动态模型来解决各种问题。然而,ZnN和GNN在相当严格的制剂中描绘,这可能限制动态模型设计方法的发展。本文考虑开发一种新的RNN设计方法,称为简化的张神经网络(SZNN),具有更多的常规配方和多功能实例。通过线性方程的理论结果和模拟实验分析了SZNN与两种常规方法的比较。此外,为了表明SZNN的有效性和多功能性,通过所提出的SZNN模型解决了SYLVESTER方程和矩阵反演,并且模拟结果证实了SZNN模型的优异收敛性。

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