Collaborative extremum seeking for welfare optimization

Anup Menon, J. Baras
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引用次数: 44

Abstract

This paper addresses a distributed, model-free optimization problem in the context of multi-agent systems. The set-up comprises of a fixed number of agents, each of which can pick an action and receive/measure a private utility function that can depend on the collective actions taken by all agents. The exact functional form (or model) of the agent utility functions is unknown, and an agent can only measure the numeric value of its utility. The objective of the multi-agent system is to optimize the welfare function (i.e. sum of the individual utility functions). A model-free, distributed, on-line learning algorithm is developed that achieves this objective. The proposed solution requires information exchange between the agents over an undirected, connected communication graph, and is based on ideas from extremum seeking control. A result on local convergence of the proposed algorithm to an arbitrarily small neighborhood of a local minimizer of the welfare function is proved. Application of the solution to distributed control of wind turbines for maximizing wind farm-level power capture is explored via numerical simulations. Also included is a novel analysis of a dynamic average consensus algorithm that may be of independent interest.
协同极值求福利优化
本文研究了多智能体系统中的分布式、无模型优化问题。该设置由固定数量的代理组成,每个代理都可以选择一个操作,并接收/测量一个私有效用函数,该函数可以依赖于所有代理所采取的集体操作。代理效用函数的确切功能形式(或模型)是未知的,并且代理只能度量其效用的数值。多智能体系统的目标是优化福利函数(即个体效用函数的总和)。为了实现这一目标,开发了一种无模型、分布式的在线学习算法。提出的解决方案需要在无向连接的通信图上在代理之间进行信息交换,并基于极值寻求控制的思想。证明了该算法对福利函数的局部极小值的任意小邻域的局部收敛性。通过数值模拟,探讨了该方法在风力发电机分布式控制中的应用,以最大限度地实现风电场级的电力捕获。还包括对动态平均共识算法的新颖分析,这可能是独立的兴趣。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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