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Evolutionary game theoretic demand-side management and control for a class of networked smart grid. (English) Zbl 1339.93023

Summary: In this paper, a new demand-side management problem of networked smart grid is formulated and solved based on evolutionary game theory. The objective is to minimize the overall cost of the smart grid, where individual communities can switch between grid power and local power according to strategies of their neighbors. The distinctive feature of the proposed formulation is that, a small portion of the communities are cooperative, while others pursue their own benefits. This formulation can be categorized as control networked evolutionary game, which can be solved systematically by using semi-tensor product. A new binary optimal control algorithm is applied to optimize transient performances of the networked evolutionary game.

MSC:

93A30 Mathematical modelling of systems (MSC2010)
91A40 Other game-theoretic models
49N90 Applications of optimal control and differential games
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