International audienceAbstract—In this paper, a decentralized control algorithm is presented for coordinated energy sharing among smart homes in neighborhood areas using a game-theoretic approach and a multi-agent system (MAS). The aim of the study is to reduce theelectricity bill of end-users with dynamic pricing where price is associated to aggregated consumption. To reduce the cost of consumption, a control algorithm performs home appliance scheduling and battery control while enabling energy sharing among neighbors in the neighborhood. We assume that photovoltaic (PV) and battery systems are installed in smart homes and end-users are decision-makers willing to optimize the run time of electricity appliances and the control inputs of the...
In a smart community infrastructure that consists of multiple smart homes, smart controllers schedul...
© 2007-2012 IEEE. In a smart community infrastructure that consists of multiple smart homes, smart c...
In this paper we propose two novel coalitional game theory based optimization methods for minimizing...
International audienceAbstract—In this paper, a decentralized control algorithm is presented for coo...
International audienceThis paper presents a coordinationmechanism for smart homes in community micro...
International audienceThis paper introduces a day-ahead energy management algorithm for the coordina...
Energy management systems are essential and indispensable for the secure and optimal operation of au...
Demand side management strategies are used in many application scenarios in order to mitigate high p...
Generating the power necessary to run our future cities is one of the major concerns for scientists ...
Real-time and decentralized energy allocation has become the main features to develop for the next g...
International audienceAlgorithms and models based on game theory have nowadays become prominent tech...
Smart Grids have recently gained increasing at- tention as a means to efficiently manage the houses ...
Taking advantage of two-way communication infrastructure and bidirectional energy trading between ut...
Recent developments in smart grid technologies have enabled interactions between energy suppliers an...
In this paper, a demand side management (DSM) scheme is used to make energy utilization more efficie...
In a smart community infrastructure that consists of multiple smart homes, smart controllers schedul...
© 2007-2012 IEEE. In a smart community infrastructure that consists of multiple smart homes, smart c...
In this paper we propose two novel coalitional game theory based optimization methods for minimizing...
International audienceAbstract—In this paper, a decentralized control algorithm is presented for coo...
International audienceThis paper presents a coordinationmechanism for smart homes in community micro...
International audienceThis paper introduces a day-ahead energy management algorithm for the coordina...
Energy management systems are essential and indispensable for the secure and optimal operation of au...
Demand side management strategies are used in many application scenarios in order to mitigate high p...
Generating the power necessary to run our future cities is one of the major concerns for scientists ...
Real-time and decentralized energy allocation has become the main features to develop for the next g...
International audienceAlgorithms and models based on game theory have nowadays become prominent tech...
Smart Grids have recently gained increasing at- tention as a means to efficiently manage the houses ...
Taking advantage of two-way communication infrastructure and bidirectional energy trading between ut...
Recent developments in smart grid technologies have enabled interactions between energy suppliers an...
In this paper, a demand side management (DSM) scheme is used to make energy utilization more efficie...
In a smart community infrastructure that consists of multiple smart homes, smart controllers schedul...
© 2007-2012 IEEE. In a smart community infrastructure that consists of multiple smart homes, smart c...
In this paper we propose two novel coalitional game theory based optimization methods for minimizing...