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A penalty-like neurodynamic approach to constrained nonsmooth distributed convex optimization

机译:约束非光滑分布凸优化的惩罚式神经动力学方法

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摘要

A nonsmooth distributed optimization problem subject to affine equality and convex inequality is considered in this paper. All the local objective functions in the distributed optimization problem possess a common decision variable. And taking privacy into consideration, each agent doesn't share its local information with other agents, including the information about the local objective function and constraint set. To cope with this distributed optimization, a neurodynamic approach based on the penalty-like methods is proposed. It is proved that the presented neurodynamic approach is convergent to an optimal solution to the considered distributed optimization problem. The proposed neurodynamic approach in this paper has lower model complexity and computational load via reducing auxiliary variables. In the end, two illustrative examples are given to show the effectiveness and practical application of the proposed neural network. (c) 2019 Elsevier B.V. All rights reserved.
机译:考虑了仿射相等和凸不等式的非光滑分布优化问题。分布式优化问题中的所有局部目标函数都具有一个公共决策变量。并且考虑到隐私,每个代理都不会与其他代理共享其本地信息,包括有关本地目标函数和约束集的信息。为了应对这种分布式优化,提出了一种基于惩罚类方法的神经动力学方法。证明了所提出的神经动力学方法收敛于所考虑的分布式优化问题的最优解。本文提出的神经动力学方法通过减少辅助变量具有较低的模型复杂度和计算量。最后,给出两个说明性的例子来说明所提出的神经网络的有效性和实际应用。 (c)2019 Elsevier B.V.保留所有权利。

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