This paper proposes an algorithm for the optimal operation of community energy storage systems (ESSs) using a machine learning (ML) model by solving a nonlinear programming (NLP) problem iteratively to obtain synthetic data. The NLP model minimizes the network's total energy losses by setting the community ESS's operation points. The optimization model is solved recursively by Monte Carlo simulations in a distribution system with high PV penetration, considering uncertainty in exogenous parameters. Obtained optimal solutions provide the training dataset for a stochastic gradient boosting trees (SGBT) ML algorithm following an imitation learning approach. The predictions obtained from the ML model have been compared to the optimal ESS operat...
Machine learning (ML) applications have seen tremendous adoption in power system research and applic...
The electric power system infrastructure is essential for modern economies and societies, as it prov...
A key subject in the study of smart grids is to accommodate uncertainty in various contexts, includi...
This paper proposes an algorithm for the optimal operation of community energy storage systems (ESSs...
In recent years, digitalisation has rendered machine learning a key tool for improving processes in ...
The operation of a community energy storage system (CESS) is challenging due to the volatility of ph...
This study proposes a deep reinforcement learning (DRL) based approach to analyze the optimal power ...
The growth of distributed energy generations and electric vehicle charging stations in the low volta...
This paper deals with energy storage system (ESS) in active distribution networks. The purpose is to...
In this paper, an innovative method for managing a smart-community microgrid (SCM) with a centralize...
This paper proposes a simulation study to solve the optimal allocation of the Battery Energy Storage...
The overarching theme of this dissertation is to develop algorithms to efficiently solve finite hori...
This volume deals with recent advances in and applications of computational intelligence and advance...
Modern distribution system operators are facing a changing scenery due to the increasing penetration...
The fast development and wide utilization of distributed generations (DGs), such as Photovoltaic pan...
Machine learning (ML) applications have seen tremendous adoption in power system research and applic...
The electric power system infrastructure is essential for modern economies and societies, as it prov...
A key subject in the study of smart grids is to accommodate uncertainty in various contexts, includi...
This paper proposes an algorithm for the optimal operation of community energy storage systems (ESSs...
In recent years, digitalisation has rendered machine learning a key tool for improving processes in ...
The operation of a community energy storage system (CESS) is challenging due to the volatility of ph...
This study proposes a deep reinforcement learning (DRL) based approach to analyze the optimal power ...
The growth of distributed energy generations and electric vehicle charging stations in the low volta...
This paper deals with energy storage system (ESS) in active distribution networks. The purpose is to...
In this paper, an innovative method for managing a smart-community microgrid (SCM) with a centralize...
This paper proposes a simulation study to solve the optimal allocation of the Battery Energy Storage...
The overarching theme of this dissertation is to develop algorithms to efficiently solve finite hori...
This volume deals with recent advances in and applications of computational intelligence and advance...
Modern distribution system operators are facing a changing scenery due to the increasing penetration...
The fast development and wide utilization of distributed generations (DGs), such as Photovoltaic pan...
Machine learning (ML) applications have seen tremendous adoption in power system research and applic...
The electric power system infrastructure is essential for modern economies and societies, as it prov...
A key subject in the study of smart grids is to accommodate uncertainty in various contexts, includi...