Title :
A Bayesian mean field game approach to supply demand analysis of the smart grid
Author :
Kamgarpour, Maryam ; Tembine, Hamidou
Abstract :
We explore a game theoretic framework for multiple energy producers competing in energy market. Each producer, referred to as a player, optimizes its own objective function given the demand utility. The equilibrium strategy of each player depends on the production cost, referred to as type, of the other players. We show that as the number of players increases, the mean of the types is sufficient for finding the equilibrium. For finite number of players, we design a mean field distributed learning algorithm that converges to equilibrium. We discuss extensions of our model to include several realistic aspects of the energy market.
Keywords :
Bayes methods; distributed algorithms; game theory; learning (artificial intelligence); power markets; power system economics; smart power grids; supply and demand; Bayesian mean field game approach; energy market; equilibrium strategy; game theoretic framework; mean field distributed learning algorithm; multiple energy producers; objective function; production cost; smart grid; supply demand analysis; Bayes methods; Equations; Games; Generators; Mathematical model; Production; Real-time systems;
Conference_Titel :
Communications and Networking (BlackSeaCom), 2013 First International Black Sea Conference on
Conference_Location :
Batumi
Electronic_ISBN :
978-1-4799-0857-8
DOI :
10.1109/BlackSeaCom.2013.6623412