This thesis proposes the use of a Reinforcement Learning (RL) agent to control the charge scheduling of a residential battery system. The system consists of a house located in Sweden equipped with a photo-voltaic array and grid-connection. Real residential load data is used while the PV output is simulated. The RL agent is trained using the Proximal Policy Optimization (PPO) algorithm to charge and discharge the battery within a continuous action space. The agent is trained and tested on three price contracts: fixed, monthly, and hourly. The perfor-mance of the agent is compared to a system without the battery, and to a Mixed Integer Linear Programming (MILP) optimizer controlling the battery. Results showed that while it was possible to tr...
The rationale of shifting towards green energy, along with the cost reduction and the increasing cap...
With the development of microgrids (MGs), an energy management system (EMS) is required to ensure th...
Recent years have seen a significant increase in the adoption of electric vehicles, and investments ...
This thesis proposes the use of a Reinforcement Learning (RL) agent to control the charge scheduling...
Traditionally, the operation of the battery is optimised using 24h of forecasted data of load demand...
Motivated by recent developments in batch Reinforcement Learning (RL), this paper contributes to the...
Grid-tied renewable energy sources (RES) based electric vehicle (EV) charging stations are an exampl...
Modern solutions for residential energy management systems control are emerging and helping to impro...
A smart home is considered as an automated residential house that is provided with distributed energ...
The transition to renewable production and smart grids is driving a massive investment to battery st...
With the increase in Electric Vehicles (EVs) penetration, their charging needs form an additional bu...
Smart buildings, including photovoltaic (PV) generation, controllable electricity consumption, and a...
International audienceWe consider a microgrid for energy distribution, with a local consumer, a rene...
Battery energy storage systems are providing increasing level of benefits to power grid operations b...
To mitigate global warming and energy shortage, integration of renewable energy generation sources, ...
The rationale of shifting towards green energy, along with the cost reduction and the increasing cap...
With the development of microgrids (MGs), an energy management system (EMS) is required to ensure th...
Recent years have seen a significant increase in the adoption of electric vehicles, and investments ...
This thesis proposes the use of a Reinforcement Learning (RL) agent to control the charge scheduling...
Traditionally, the operation of the battery is optimised using 24h of forecasted data of load demand...
Motivated by recent developments in batch Reinforcement Learning (RL), this paper contributes to the...
Grid-tied renewable energy sources (RES) based electric vehicle (EV) charging stations are an exampl...
Modern solutions for residential energy management systems control are emerging and helping to impro...
A smart home is considered as an automated residential house that is provided with distributed energ...
The transition to renewable production and smart grids is driving a massive investment to battery st...
With the increase in Electric Vehicles (EVs) penetration, their charging needs form an additional bu...
Smart buildings, including photovoltaic (PV) generation, controllable electricity consumption, and a...
International audienceWe consider a microgrid for energy distribution, with a local consumer, a rene...
Battery energy storage systems are providing increasing level of benefits to power grid operations b...
To mitigate global warming and energy shortage, integration of renewable energy generation sources, ...
The rationale of shifting towards green energy, along with the cost reduction and the increasing cap...
With the development of microgrids (MGs), an energy management system (EMS) is required to ensure th...
Recent years have seen a significant increase in the adoption of electric vehicles, and investments ...