The load–frequency control (LFC) problem has been one of the major subjects in a power system. In practice, LFC systems use proportional–integral (PI) controllers. However since these controllers are designed using a linear model, the non-linearities of the system are not accounted for and they are incapable of gaining good dynamical performance for a wide range of operating conditions in a multi-area power system. A strategy for solving this problem because of the distributed nature of a multi-area power system is presented by using a multi-agent reinforcement learning (MARL) approach. It consists of two agents in each power area; the estimator agent provides the area control error (ACE) signal based on the frequency bias estimation and th...
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...
The main purpose of this paper is to present a novel algorithmic reinforcement learning (RL) method ...
The load–frequency control (LFC) problem has been one of the major subjects in a power system. In pr...
This paper presents an online two-stage Q-learning based multi-agent (MA) controller for load freque...
The paradigm shift in energy generation towards microgrid-based architectures is changing the landsc...
Abstract The rise of microgrid‐based architectures is modifying significantly the energy control lan...
Bayesian Networks (BN) provides a robust probabilistic method of reasoning under uncertainty. They h...
The rise of microgrid-based architectures is heavily modifying the energy control landscape in distr...
Energy balance in electric power systems is continuously disrupted by constant demand changes due to...
The introduction of new technologies and increased penetration of renewable resources is altering th...
This paper presents the design and implementation of a learning controller for the Automatic Generat...
The increase in the use of converter-interfaced generators (CIGs) in today’s electrical grids will r...
This paper formulates the automatic generation control (AGC) problem as a stochastic multistage deci...
As the improvement of smart grids, the customer participation has reinvigorated interest in demand-s...
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...
The main purpose of this paper is to present a novel algorithmic reinforcement learning (RL) method ...
The load–frequency control (LFC) problem has been one of the major subjects in a power system. In pr...
This paper presents an online two-stage Q-learning based multi-agent (MA) controller for load freque...
The paradigm shift in energy generation towards microgrid-based architectures is changing the landsc...
Abstract The rise of microgrid‐based architectures is modifying significantly the energy control lan...
Bayesian Networks (BN) provides a robust probabilistic method of reasoning under uncertainty. They h...
The rise of microgrid-based architectures is heavily modifying the energy control landscape in distr...
Energy balance in electric power systems is continuously disrupted by constant demand changes due to...
The introduction of new technologies and increased penetration of renewable resources is altering th...
This paper presents the design and implementation of a learning controller for the Automatic Generat...
The increase in the use of converter-interfaced generators (CIGs) in today’s electrical grids will r...
This paper formulates the automatic generation control (AGC) problem as a stochastic multistage deci...
As the improvement of smart grids, the customer participation has reinvigorated interest in demand-s...
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...
The main purpose of this paper is to present a novel algorithmic reinforcement learning (RL) method ...