The distribution network reconfiguration (DNR) aims at minimizing the power losses and improving the voltage profile. Traditional model-based methods exactly need the network parameters to derive the optimal configuration of the distribution network. This paper proposes a DNR method based on model-free reinforcement learning (RL) approach. The proposed method adopts NoisyNet deep Q-learning network (DQN), by which the exploration can be automatically realized without need of tuning the exploration parameters, in order to accelerate the training process and improve the optimization performance. The proposed method is validated by the simulation results
In this article, for the first time, we propose a transformer network-based reinforcement learning (...
We demonstrate a dynamic network reconfiguration method (ACRO) based on deep reinforcement learning ...
The safe and reliable operation of power grid equipment is the basis for ensuring the safe operation...
The reliability of the distribution network increasingly common by high penetration of distributed g...
This study proposes a deep reinforcement learning (DRL) based approach to analyze the optimal power ...
Active distribution network planning is of importance for utility companies in terms of distributed ...
Network reconfiguration of distribution systems is an operation in configuration management that det...
In this paper, a reinforcement learning based approach is proposed to realize the distributed power ...
Connecting large-scale distributed generation to a distribution network is complex as it is difficul...
Maintaining high-performance operation under dynamic and nonuniform network traffic has been a techn...
Because of the high penetration of renewable energies and the installation of new control devices, m...
The reinforcement learning (RL) is applied to the optimization of decoupling capacitors on power dis...
Owing to mixed-integer and non-linear properties, the distribution network reconfiguration (DNRC) pr...
Cyber-Physical System (CPS) is an integration of physical components like actuators, sensors and var...
Electrical networks are composed of stages of generation, transmission, and distribution of energy. ...
In this article, for the first time, we propose a transformer network-based reinforcement learning (...
We demonstrate a dynamic network reconfiguration method (ACRO) based on deep reinforcement learning ...
The safe and reliable operation of power grid equipment is the basis for ensuring the safe operation...
The reliability of the distribution network increasingly common by high penetration of distributed g...
This study proposes a deep reinforcement learning (DRL) based approach to analyze the optimal power ...
Active distribution network planning is of importance for utility companies in terms of distributed ...
Network reconfiguration of distribution systems is an operation in configuration management that det...
In this paper, a reinforcement learning based approach is proposed to realize the distributed power ...
Connecting large-scale distributed generation to a distribution network is complex as it is difficul...
Maintaining high-performance operation under dynamic and nonuniform network traffic has been a techn...
Because of the high penetration of renewable energies and the installation of new control devices, m...
The reinforcement learning (RL) is applied to the optimization of decoupling capacitors on power dis...
Owing to mixed-integer and non-linear properties, the distribution network reconfiguration (DNRC) pr...
Cyber-Physical System (CPS) is an integration of physical components like actuators, sensors and var...
Electrical networks are composed of stages of generation, transmission, and distribution of energy. ...
In this article, for the first time, we propose a transformer network-based reinforcement learning (...
We demonstrate a dynamic network reconfiguration method (ACRO) based on deep reinforcement learning ...
The safe and reliable operation of power grid equipment is the basis for ensuring the safe operation...