首页> 外文会议>Advances in Neural Networks - ISNN 2007 pt.3; Lecture Notes in Computer Science; 4493 >Solving Variational Inequality Problems with Linear Constraints Based on a Novel Recurrent Neural Network
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Solving Variational Inequality Problems with Linear Constraints Based on a Novel Recurrent Neural Network

机译:基于新型递归神经网络的线性约束变分不等式问题求解

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Variational inequalities with linear inequality constraints are widely used in constrained optimization and engineering problems. By extending a new recurrent neural network [14], this paper presents a recurrent neural network for solving variational inequalities with general linear constraints in real time. The proposed neural network has onelayer projection structure and is amenable to parallel implementation. As a special case, the proposed neural network can include two existing recurrent neural networks for solving convex optimization problems and monotone variational inequality problems with box constraints, respectively. The proposed neural network is stable in the sense of Lyapunov and globally convergent to the solution under a monotone condition of the nonlinear mapping without the Lipschitz condition. Illustrative examples show that the proposed neural network is effective for solving this class of variational inequality problems.
机译:具有线性不等式约束的变分不等式被广泛用于约束优化和工程问题。通过扩展新的递归神经网络[14],本文提出了一种用于实时求解具有一般线性约束的变分不等式的递归神经网络。所提出的神经网络具有单层投影结构,并且可以并行实现。作为一种特殊情况,所提出的神经网络可以包括两个现有的递归神经网络,分别用于求解凸优化问题和具有盒约束的单调变分不等式问题。所提出的神经网络在Lyapunov的意义上是稳定的,并且在没有Lipschitz条件的非线性映射的单调条件下全局收敛于解。说明性示例表明,所提出的神经网络对于解决此类变分不等式问题有效。

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