Deep reinforcement learning (DRL) is a machine learning-based method suited for complex and high-dimensional control problems. In this study, a real-time control system based on DRL is developed for long-term voltage stability events. The possibility of using system services from demand response (DR) and energy storage systems (ESS) as control measures to stabilize the system is investigated. The performance of the DRL control is evaluated on a modified Nordic32 test system. The results show that the DRL control quickly learns an effective control policy that can handle the uncertainty involved when using DR and ESS. The DRL control is compared to a rule-based load shedding scheme and the DRL control is shown to stabilize the system both si...
In this paper, we explore how a computational approach to learning from interactions, called reinfor...
With the smart grid and smart homes development, different data are made available, providing a sour...
With increased penetration of renewable energy sources, maintaining equilibrium between production a...
This paper develops a real-time control method based on deep reinforcement learning (DRL) aimed to d...
Electric power systems are becoming increasingly complex to operate; a trend driven by an increased ...
peer reviewedThis paper reviews existing works on (deep) reinforcement learning considerations in e...
Deep reinforcement learning has been recognized as a promising tool to address the challenges in rea...
Environmental benefits promote the expansion of renewable energy sources (RESs) worldwide, which in ...
peer reviewedThis paper proposes an application of a Reinforcement Learning (RL) method to the contr...
With the increasing integration of variational renewable energy and the more active demand side resp...
Due to the increasing penetration of the power grid with renewable, distributed energy re-sources, n...
The increasing penetration of the power grid with renewable distributed generation causes significan...
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 ...
Advances in the demand response for energy imbalance management (EIM) ancillary services can change ...
In this paper, we explore how a computational approach to learning from interactions, called reinfor...
With the smart grid and smart homes development, different data are made available, providing a sour...
With increased penetration of renewable energy sources, maintaining equilibrium between production a...
This paper develops a real-time control method based on deep reinforcement learning (DRL) aimed to d...
Electric power systems are becoming increasingly complex to operate; a trend driven by an increased ...
peer reviewedThis paper reviews existing works on (deep) reinforcement learning considerations in e...
Deep reinforcement learning has been recognized as a promising tool to address the challenges in rea...
Environmental benefits promote the expansion of renewable energy sources (RESs) worldwide, which in ...
peer reviewedThis paper proposes an application of a Reinforcement Learning (RL) method to the contr...
With the increasing integration of variational renewable energy and the more active demand side resp...
Due to the increasing penetration of the power grid with renewable, distributed energy re-sources, n...
The increasing penetration of the power grid with renewable distributed generation causes significan...
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 ...
Advances in the demand response for energy imbalance management (EIM) ancillary services can change ...
In this paper, we explore how a computational approach to learning from interactions, called reinfor...
With the smart grid and smart homes development, different data are made available, providing a sour...
With increased penetration of renewable energy sources, maintaining equilibrium between production a...