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A Collective Neurodynamic Approach to Distributed Constrained Optimization

机译:分布式约束优化的集体神经动力学方法

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摘要

This paper presents a collective neurodynamic approach with multiple interconnected recurrent neural networks (RNNs) for distributed constrained optimization. The objective function of the distributed optimization problems to be solved is a sum of local convex objective functions, which may be nonsmooth. Subject to its local constraints, each local objective function is minimized individually by using an RNN, with consensus among others. In contrast to existing continuous-time distributed optimization methods, the proposed collective neurodynamic approach is capable of solving more general distributed optimization problems. Simulation results on three numerical examples are discussed to substantiate the effectiveness and characteristics of the proposed approach. In addition, an application to the optimal placement problem is delineated to demonstrate the viability of the approach.
机译:本文提出了一种具有多个互连递归神经网络(RNN)的集体神经动力学方法,用于分布式约束优化。要解决的分布式优化问题的目标函数是局部凸目标函数的总和,可能不平滑。受到其局部约束,通过使用RNN并在其他方面达成共识,分别将每个局部目标函数最小化。与现有的连续时间分布式优化方法相比,所提出的集体神经动力学方法能够解决更一般的分布式优化问题。讨论了三个数值示例的仿真结果,以证实该方法的有效性和特征。另外,还描述了对最佳放置问题的应用,以证明该方法的可行性。

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