Energy Demand Scheduling Based on Game Theory for Microgrids

The advent of smart grids offers us the opportunity to better manage the electricity grids. One of the most interesting challenges in the modern grids is the consumer demand management. Indeed, the development in Information and Communication Technologies (ICTs) encourages the development of demand-side management systems. In this paper, we propose a distributed energy demand scheduling approach that uses minimal interactions between consumers to optimize the energy demand. We formulate the consumption scheduling as a constrained optimization problem and use game theory to solve this problem. On one hand, the proposed approach aims to reduce the total energy cost of a building's consumers. This imposes the cooperation between all the consumers to achieve the collective goal. On the other hand, the privacy of each user must be protected, which means that our distributed approach must operate with a minimal information exchange. The performance evaluation shows that the proposed approach reduces the total energy cost, each consumer's individual cost, as well as the peak to average ratio.

[1]  Stephen P. Boyd,et al.  Convex Optimization , 2004, Algorithms and Theory of Computation Handbook.

[2]  J. Goodman Note on Existence and Uniqueness of Equilibrium Points for Concave N-Person Games , 1965 .

[3]  Dmitriy Katz,et al.  Incentive Design for Lowest Cost Aggregate Energy Demand Reduction , 2010, 2010 First IEEE International Conference on Smart Grid Communications.

[4]  Abdellatif Miraoui,et al.  Decentralized Neighborhood Energy Management With Coordinated Smart Home Energy Sharing , 2018, IEEE Transactions on Smart Grid.

[5]  Kaveh Dehghanpour,et al.  Real-Time Multiobjective Microgrid Power Management Using Distributed Optimization in an Agent-Based Bargaining Framework , 2018, IEEE Transactions on Smart Grid.

[6]  Christian Ibars,et al.  Distributed Demand Management in Smart Grid with a Congestion Game , 2010, 2010 First IEEE International Conference on Smart Grid Communications.

[7]  Na Li,et al.  Real-Time Energy Management in Microgrids , 2017, IEEE Transactions on Smart Grid.

[8]  Hamed Mohsenian Rad,et al.  Optimal Residential Load Control With Price Prediction in Real-Time Electricity Pricing Environments , 2010, IEEE Transactions on Smart Grid.

[9]  Vincent W. S. Wong,et al.  Autonomous Demand-Side Management Based on Game-Theoretic Energy Consumption Scheduling for the Future Smart Grid , 2010, IEEE Transactions on Smart Grid.

[10]  Jie Wu,et al.  Electricity Consumption Scheduling with Consumers' Comfort and Preference in Smart Grid , 2016 .