The paradigm shift in energy generation towards microgrid-based architectures is changing the landscape of the energy control structure heavily in distribution systems. More specifically, distributed generation is deployed in the network demanding decentralised control mechanisms to ensure reliable power system operations. In this work, a Multi-Agent Reinforcement Learning approach is proposed to deliver an agentbased solution to implement load frequency control without the need of a centralised authority. Multi-Agent Deep Deterministic Policy Gradient is used to approximate the frequency control at the primary and the secondary levels. Each generation unit is represented as an agent that is modelled by a Recurrent Neural Network. Agents le...
To reduce global greenhouse gas emissions, the world must find intelligent solutions to maximise the...
A microgrid is widely accepted as a prominent solution to enhance resilience and performance in dist...
This paper presents an online two-stage Q-learning based multi-agent (MA) controller for load freque...
The rise of microgrid-based architectures is heavily modifying the energy control landscape in distr...
The introduction of new technologies and increased penetration of renewable resources is altering th...
Abstract The rise of microgrid‐based architectures is modifying significantly the energy control lan...
Multiple microgrids can be interconnected to form a networked-microgrid (NMG) system. In this paper,...
The load–frequency control (LFC) problem has been one of the major subjects in a power system. In pr...
Environmental benefits promote the expansion of renewable energy sources (RESs) worldwide, which in ...
The increase in the use of converter-interfaced generators (CIGs) in today’s electrical grids will r...
Smart Microgrids bring numerous challenges, including how to leverage the potential benefits of rene...
High penetration and uneven distribution of single-phase rooftop PVs and load demands in power syste...
Buildings account for over 70% of the electricity use in the US. As cities grow, high peaks of elect...
Increasing electrification, integration of renewable energy resources, rapid urbanization, and the p...
The penetration of weather dependent renewable energy sources which are highly stochastic in nature ...
To reduce global greenhouse gas emissions, the world must find intelligent solutions to maximise the...
A microgrid is widely accepted as a prominent solution to enhance resilience and performance in dist...
This paper presents an online two-stage Q-learning based multi-agent (MA) controller for load freque...
The rise of microgrid-based architectures is heavily modifying the energy control landscape in distr...
The introduction of new technologies and increased penetration of renewable resources is altering th...
Abstract The rise of microgrid‐based architectures is modifying significantly the energy control lan...
Multiple microgrids can be interconnected to form a networked-microgrid (NMG) system. In this paper,...
The load–frequency control (LFC) problem has been one of the major subjects in a power system. In pr...
Environmental benefits promote the expansion of renewable energy sources (RESs) worldwide, which in ...
The increase in the use of converter-interfaced generators (CIGs) in today’s electrical grids will r...
Smart Microgrids bring numerous challenges, including how to leverage the potential benefits of rene...
High penetration and uneven distribution of single-phase rooftop PVs and load demands in power syste...
Buildings account for over 70% of the electricity use in the US. As cities grow, high peaks of elect...
Increasing electrification, integration of renewable energy resources, rapid urbanization, and the p...
The penetration of weather dependent renewable energy sources which are highly stochastic in nature ...
To reduce global greenhouse gas emissions, the world must find intelligent solutions to maximise the...
A microgrid is widely accepted as a prominent solution to enhance resilience and performance in dist...
This paper presents an online two-stage Q-learning based multi-agent (MA) controller for load freque...