International audienceWe model the smart grid as a decentralized and hierarchical network, made up of three categories of agents: suppliers, generators and captive consumers organized in microgrids. To optimize their decisions concerning prices and traded power, agents need to forecast the demand of the microgrids and the fluctuating renewable productions. The biases resulting from the decentralized learning could create imbalances between demand and supply leading to penalties for suppliers and for generators. We analytically determine prices that provide generators with a guarantee to avoid such penalties, transferring risk to the suppliers. Additionally, we prove that collaborative learning, through coalitions of suppliers among which in...
Whether for environmental, conservation, efficiency, or economic reasons, developing next generation...
Abstract—In a smart grid environment, we study coalition formation of prosumers that aim at entering...
In this paper we propose two novel coalitional game theory based optimization methods for minimizing...
In traditional power distribution models, consumers acquire power from the central distribution unit...
Striving to reduce the environmental impact of our growing energy demand creates tough new challenge...
Microgrids are empowered by the advances in renewable energy generation, which enable the microgrids...
We explore a game theoretic framework for multiple energy producers competing in energy market. Each...
International audienceIn the context of an eco-responsible production and distribution of electrical...
Operators of micro-grid as privately-owned sectors try to optimally determine their energy supply st...
Carbon trading is a market-based mechanism towards low-carbon electric power systems. A hy-brid game...
This thesis has contributed to the design of suitable decision-making techniques for energy managem...
Operators of micro-grid as privately-owned sectors try to optimally determine their energy supply st...
International audienceIn this article, we propose distributed learning based approaches to study the...
In the emerging smart grids, production increasingly relies on a greater number of decentralized gen...
Whether for environmental, conservation, efficiency, or economic reasons, developing next generation...
Whether for environmental, conservation, efficiency, or economic reasons, developing next generation...
Abstract—In a smart grid environment, we study coalition formation of prosumers that aim at entering...
In this paper we propose two novel coalitional game theory based optimization methods for minimizing...
In traditional power distribution models, consumers acquire power from the central distribution unit...
Striving to reduce the environmental impact of our growing energy demand creates tough new challenge...
Microgrids are empowered by the advances in renewable energy generation, which enable the microgrids...
We explore a game theoretic framework for multiple energy producers competing in energy market. Each...
International audienceIn the context of an eco-responsible production and distribution of electrical...
Operators of micro-grid as privately-owned sectors try to optimally determine their energy supply st...
Carbon trading is a market-based mechanism towards low-carbon electric power systems. A hy-brid game...
This thesis has contributed to the design of suitable decision-making techniques for energy managem...
Operators of micro-grid as privately-owned sectors try to optimally determine their energy supply st...
International audienceIn this article, we propose distributed learning based approaches to study the...
In the emerging smart grids, production increasingly relies on a greater number of decentralized gen...
Whether for environmental, conservation, efficiency, or economic reasons, developing next generation...
Whether for environmental, conservation, efficiency, or economic reasons, developing next generation...
Abstract—In a smart grid environment, we study coalition formation of prosumers that aim at entering...
In this paper we propose two novel coalitional game theory based optimization methods for minimizing...