System operators are faced with increasingly volatile operating conditions. In order to manage system reliability in a cost-effective manner, control room operators are turning to computerised decision support tools based on AI and machine learning. Specifically, Reinforcement Learning (RL) is a promising technique to train agents that suggest grid control actions to operators. In this paper, a simple baseline approach is presented using RL to represent an artificial control room operator that can operate a IEEE 14-bus test case for a duration of 1 week. This agent takes topological switching actions to control power flows on the grid, and is trained on only a single well-chosen scenario. The behaviour of this agent is tested on different t...
Advances in the demand response for energy imbalance management (EIM) ancillary services can change ...
Smart Microgrids bring numerous challenges, including how to leverage the potential benefits of rene...
As power grids transition towards increased reliance on renewable generation, energy storage and dem...
System operators are faced with increasingly volatile operating conditions. In order to manage syste...
The de-carbonisation of the energy system, more commonly known as the 'Energy Transition' has a vita...
International audienceFor power grid operations, a large body of research focuses on using generatio...
peer reviewedThis paper investigates the use of reinforcement learning in electric power system emer...
peer reviewedIn this paper, we review past (including very recent) research considerations in using ...
Traditional grids have been used to distributed electricity to the consumers, however the electric s...
Power grids, across the world, play an important societal and economical role by providing uninterru...
Reinforcement learning (RL) techniques have been applied to smart grids with a variety of applicatio...
This thesis focuses on the development of a reinforcement learning model for the operation and deman...
International audienceLarge scale production grids are a major case for autonomic computing. Followi...
Due to the increasing penetration of the power grid with renewable, distributed energy re-sources, n...
In this paper, we explore how a computational approach to learning from interactions, called reinfor...
Advances in the demand response for energy imbalance management (EIM) ancillary services can change ...
Smart Microgrids bring numerous challenges, including how to leverage the potential benefits of rene...
As power grids transition towards increased reliance on renewable generation, energy storage and dem...
System operators are faced with increasingly volatile operating conditions. In order to manage syste...
The de-carbonisation of the energy system, more commonly known as the 'Energy Transition' has a vita...
International audienceFor power grid operations, a large body of research focuses on using generatio...
peer reviewedThis paper investigates the use of reinforcement learning in electric power system emer...
peer reviewedIn this paper, we review past (including very recent) research considerations in using ...
Traditional grids have been used to distributed electricity to the consumers, however the electric s...
Power grids, across the world, play an important societal and economical role by providing uninterru...
Reinforcement learning (RL) techniques have been applied to smart grids with a variety of applicatio...
This thesis focuses on the development of a reinforcement learning model for the operation and deman...
International audienceLarge scale production grids are a major case for autonomic computing. Followi...
Due to the increasing penetration of the power grid with renewable, distributed energy re-sources, n...
In this paper, we explore how a computational approach to learning from interactions, called reinfor...
Advances in the demand response for energy imbalance management (EIM) ancillary services can change ...
Smart Microgrids bring numerous challenges, including how to leverage the potential benefits of rene...
As power grids transition towards increased reliance on renewable generation, energy storage and dem...