This paper proposes a novel scalable type of multi-agent reinforcement learning-based coordination for distributed residential energy. Cooperating agents learn to control the flexibility offered by electric vehicles, space heating and flexible loads in a partially observable stochastic environment. In the standard independent Q-learning approach, the coordination performance of agents under partial observability drops at scale in stochastic environments. Here, the novel combination of learning from off-line convex optimisations on historical data and isolating marginal contributions to total rewards in reward signals increases stability and performance at scale. Using fixed-size Q-tables, prosumers are able to assess their marginal impact o...
High penetration and uneven distribution of single-phase rooftop PVs and load demands in power syste...
This study utilizes machine learning and, more specifically, reinforcement learning (RL) to allow fo...
The increase in the use of converter-interfaced generators (CIGs) in today’s electrical grids will r...
Increasing electrification, integration of renewable energy resources, rapid urbanization, and the p...
AbstractIn the distributed optimization of micro-grid, we consider grid connected solar micro-grid s...
International audienceIn order to reduce CO2 emissions, electricity networks must increasingly integ...
Smart Microgrids bring numerous challenges, including how to leverage the potential benefits of rene...
The share of energy produced by small-scale renewable energy sources, including photovoltaic panels ...
International audienceIn the context of an eco-responsible production and distribution of electrical...
© 2019 Elsevier Ltd Increasing energy efficiency of thermostatically controlled loads has the potent...
\u3cp\u3eThis paper explores the use of distributed intelligence to assist the integration of the de...
For regenerative electric power the traditional topdown and long-term power management is obsolete, ...
The evolution of electricity markets towards local energy trading models, including peer-to-peer tra...
Modern solutions for residential energy management systems control are emerging and helping to impro...
International audienceThis paper proposes a Deep Reinforcement Learning approach for optimally manag...
High penetration and uneven distribution of single-phase rooftop PVs and load demands in power syste...
This study utilizes machine learning and, more specifically, reinforcement learning (RL) to allow fo...
The increase in the use of converter-interfaced generators (CIGs) in today’s electrical grids will r...
Increasing electrification, integration of renewable energy resources, rapid urbanization, and the p...
AbstractIn the distributed optimization of micro-grid, we consider grid connected solar micro-grid s...
International audienceIn order to reduce CO2 emissions, electricity networks must increasingly integ...
Smart Microgrids bring numerous challenges, including how to leverage the potential benefits of rene...
The share of energy produced by small-scale renewable energy sources, including photovoltaic panels ...
International audienceIn the context of an eco-responsible production and distribution of electrical...
© 2019 Elsevier Ltd Increasing energy efficiency of thermostatically controlled loads has the potent...
\u3cp\u3eThis paper explores the use of distributed intelligence to assist the integration of the de...
For regenerative electric power the traditional topdown and long-term power management is obsolete, ...
The evolution of electricity markets towards local energy trading models, including peer-to-peer tra...
Modern solutions for residential energy management systems control are emerging and helping to impro...
International audienceThis paper proposes a Deep Reinforcement Learning approach for optimally manag...
High penetration and uneven distribution of single-phase rooftop PVs and load demands in power syste...
This study utilizes machine learning and, more specifically, reinforcement learning (RL) to allow fo...
The increase in the use of converter-interfaced generators (CIGs) in today’s electrical grids will r...