An Extended Mean Field Game for Storage in Smart Grids

被引:0
|
作者
Clémence Alasseur
Imen Ben Taher
Anis Matoussi
机构
[1] EDF R&D Paris-Saclay and Finance for energy Market Research Centre (FIME),CEREMADE
[2] Université Paris Dauphine and Finance for Energy Market Research Centre (FIME),Laboratoire Manceau de Mathématiques & FR CNRS No. 2962, Institut du Risque et de l’Assurance
[3] Le Mans Université,undefined
来源
Journal of Optimization Theory and Applications | 2020年 / 184卷
关键词
Smart grid; Distributed generation; Stochastic renewable generation; Optimal storage; Stochastic control; Mean field games; Nash equilibrium; Extended mean field game; 49J53; 49K99;
D O I
暂无
中图分类号
学科分类号
摘要
We consider a stylized model for a power network with distributed local power generation and storage. This system is modeled as a network connection of a large number of nodes, where each node is characterized by a local electricity consumption, has a local electricity production (photovoltaic panels for example) and manages a local storage device. Depending on its instantaneous consumption and production rate as well as its storage management decision, each node may either buy or sell electricity, impacting the electricity spot price. The objective at each node is to minimize energy and storage costs by optimally controlling the storage device. In a noncooperative game setting, we are led to the analysis of a nonzero sum stochastic game with N players where the interaction takes place through the spot price mechanism. For an infinite number of agents, our model corresponds to an extended mean field game. We are able to compare this solution to the optimal strategy of a central planner and in a linear quadratic setting, we obtain and explicit solution to the extended mean field game and we show that it provides an approximate Nash equilibrium for N-player game.
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页码:644 / 670
页数:26
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