Generalized Multi-cluster Game under Partial-decision Information with Applications to Management of Energy Internet

Yue-Chun Chen, Peng Yi
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引用次数: 3

Abstract

The decision making and management of many engineering networks involves multiple parties with conflicting interests, while each party is constituted with multiple agents. Such problems can be casted as a multi-cluster game. Each cluster is treated as a self-interested player in a non-cooperative game where agents in the same cluster cooperate together to optimize the payoff function of the cluster. In a large-scale network, the information of agents in a cluster can not be available immediately for agents beyond this cluster, which raise challenges to the existing Nash equilibrium seeking algorithms. Hence, we consider a partial-decision information scenario in generalized Nash equilibrium seeking for multi-cluster games in a distributed manner. We reformulate the problem as finding zeros of the sum of preconditioned monotone operators by the primal-dual analysis and graph Laplacian matrix. Then a distributed generalized Nash equilibrium seeking algorithm is proposed without requiring fully awareness of its opponent clusters' decisions based on a forward-backward-forward method. With the algorithm, each agent estimates the strategies of all the other clusters by communicating with neighbors via an undirected network. We show that the derived operators can be monotone when the communication strength parameter is sufficiently large. We prove the algorithm convergence resorting to the fixed point theory by providing a sufficient condition. We discuss its potential application in Energy Internet with numerical studies.
部分决策信息下的广义多集群博弈及其在能源互联网管理中的应用
许多工程网络的决策和管理涉及多个利益冲突的主体,而每个主体又由多个代理构成。这类问题可以被视为多集群游戏。在非合作博弈中,每个集群都被视为一个自利的参与者,同一集群中的代理相互合作以优化集群的收益函数。在大规模网络中,集群内智能体的信息不能立即被集群外的智能体获取,这对现有的纳什均衡寻求算法提出了挑战。因此,我们考虑了分布式多聚类博弈的广义纳什均衡中的部分决策信息场景。我们利用原始对偶分析和图拉普拉斯矩阵将问题重新表述为寻找预设单调算子和的零。在此基础上,提出了一种不需要完全了解对手集群决策的分布式广义纳什均衡寻求算法。使用该算法,每个代理通过无向网络与邻居通信来估计所有其他集群的策略。我们证明,当通信强度参数足够大时,推导出的算子可以是单调的。通过给出一个充分条件,利用不动点理论证明了算法的收敛性。通过数值研究探讨了其在能源互联网中的潜在应用。
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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