Cooperative distributed multi-agent optimization

Angelia Nenadic, A. Ozdaglar
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引用次数: 185

Abstract

This chapter presents distributed algorithms for cooperative optimization among multiple agents connected through a network. The goal is to optimize a global-objective function which is a combination of local-objective functions known by the agents only. We focus on two related approaches for the design of distributed algorithms for this problem. The first approach relies on using Lagrangian-decomposition and dual-subgradient methods. We show that this methodology leads to distributed algorithms for optimization problems with special structure. The second approach involves combining consensus algorithms with subgradient methods. In both approaches, our focus is on providing convergence-rate analysis for the generated solutions that highlight the dependence on problem parameters. Introduction and motivation There has been much recent interest in distributed control and coordination of networks consisting of multiple agents, where the goal is to collectively optimize a global objective. This is motivated mainly by the emergence of large-scale networks and new networking applications such as mobile ad hoc networks and wireless-sensor networks, characterized by the lack of centralized access to information and time-varying connectivity. Control and optimization algorithms deployed in such networks should be completely distributed, relying only on local observations and information, robust against unexpected changes in topology, such as link or node failures, and scalable in the size of the network. This chapter studies the problem of distributed optimization and control of multiagent networked systems. More formally, we consider a multiagent network model, where m agents exchange information over a connected network.
协同分布式多智能体优化
本章介绍了通过网络连接的多个智能体之间的协作优化的分布式算法。目标是优化一个全局目标函数,该函数由多个局部目标函数组合而成,而局部目标函数只有智能体知道。我们重点介绍了两种相关的分布式算法设计方法。第一种方法依赖于拉格朗日分解和双次梯度方法。我们表明,这种方法导致了具有特殊结构的优化问题的分布式算法。第二种方法是将一致性算法与子梯度方法相结合。在这两种方法中,我们的重点是为生成的解决方案提供收敛率分析,强调对问题参数的依赖。最近,人们对由多个智能体组成的网络的分布式控制和协调非常感兴趣,其目标是集体优化全局目标。这主要是由于大规模网络和新的网络应用的出现,例如移动特设网络和无线传感器网络,其特点是缺乏对信息的集中访问和时变连接。在这种网络中部署的控制和优化算法应该是完全分布式的,仅依赖于本地观察和信息,对拓扑的意外变化(如链路或节点故障)具有鲁棒性,并且在网络规模上具有可扩展性。本章研究了多智能体网络系统的分布式优化与控制问题。更正式地说,我们考虑一个多智能体网络模型,其中m个智能体在一个连接的网络上交换信息。
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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