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Dual decomposition for multi-agent distributed optimization with coupling constraints

机译:具有耦合约束的多智能体分布式优化的对偶分解

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摘要

We study distributed optimization in a cooperative multi-agent setting, where agents have to agree on the usage of shared resources and can communicate via a time-varying network to this purpose. Each agent has its own decision variables that should be set so as to minimize its individual objective function subject to local constraints. Resource sharing is modeled via coupling constraints that involve the non-positivity of the sum of agents’ individual functions, each one depending on the decision variables of one single agent. We propose a novel distributed algorithm to minimize the sum of the agents’ objective functions subject to both local and coupling constraints, where dual decomposition and proximal minimization are combined in an iterative scheme. Notably, privacy of information is guaranteed since only the dual optimization variables associated with the coupling constraints are exchanged by the agents. Under convexity assumptions, jointly with suitable connectivity properties of the communication network, we are able to prove that agents reach consensus to some optimal solution of the centralized dual problem counterpart, while primal variables converge to the set of optimizers of the centralized primal problem. The efficacy of the proposed approach is demonstrated on a plug-in electric vehicles charging problem.
机译:我们研究协作多代理环境中的分布式优化,在这种环境中,代理必须就共享资源的使用达成共识,并且可以为此目的通过时变网络进行通信。每个代理都有自己的决策变量,应该对其进行设置,以使其在局部约束下的目标功能最小。资源共享是通过耦合约束来建模的,耦合约束涉及代理的各个功能之和的非正当性,每个约束取决于一个代理的决策变量。我们提出了一种新颖的分布式算法,以使受局部约束和耦合约束约束的代理目标函数的总和最小化,其中双重分解和近端最小化以迭代方案组合。显然,由于代理仅交换了与耦合约束相关的双重优化变量,因此保证了信息的私密性。在凸性假设下,结合通信网络的合适连通性,我们能够证明座席对集中式双重问题对等体的某个最优解达成了共识,而原始变量收敛于集中式原始问题的优化器集。在插电式电动汽车充电问题上证明了该方法的有效性。

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