推拉有限时间收敛分布式优化算法

Xiaobiao Chen, Kaixin Yan, Yunhua Gao, Xuefeng Xu, Kang Yan, Jing Wang
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引用次数: 2

摘要

随着分布式系统的广泛应用,许多问题亟待解决。如何设计分布式优化策略已成为研究热点。本文主要研究分布式凸优化算法的求解率。网络中的每个代理都有自己的凸成本函数。我们考虑了一种基于梯度的分布式方法,并使用推拉梯度算法来最小化总成本函数。受当前分布式凸优化算法的多智能体共识协作协议的启发,提出并研究了一种具有有限时间收敛性的分布式凸优化方法。最后,基于固定的无向分布式网络拓扑,提出了一种基于线性参数化神经网络的快速收敛分布式协作学习方法,该方法不同于现有的可以实现指数收敛的分布式凸优化算法。该算法可以实现有限时间收敛。Lyapunov方法可以保证算法的收敛性。相应的仿真实例也直观地表明了算法的有效性。与其他算法相比,该算法具有一定的竞争力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Push-Pull Finite-Time Convergence Distributed Optimization Algorithm
With the widespread application of distributed systems, many problems need to be solved urgently. How to design distributed optimization strategies has become a research hotspot. This article focuses on the solution rate of the distributed convex optimization algorithm. Each agent in the network has its own convex cost function. We consider a gradient-based distributed method and use a push-pull gradient algorithm to minimize the total cost function. Inspired by the current multi-agent consensus cooperation protocol for distributed convex optimization algorithm, a distributed convex optimization algorithm with finite time convergence is proposed and studied. In the end, based on a fixed undirected distributed network topology, a fast convergent distributed cooperative learning method based on a linear parameterized neural network is proposed, which is different from the existing distributed convex optimization algorithms that can achieve exponential convergence. The algorithm can achieve finite-time convergence. The convergence of the algorithm can be guaranteed by the Lyapunov method. The corresponding simulation examples also show the effectiveness of the algorithm intuitively. Compared with other algorithms, this algorithm is competitive.
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