Buildings account for over 70% of the electricity use in the US. As cities grow, high peaks of electricity consumption are becoming more frequent, which leads to higher prices for electricity. Demand response is the coordination of electrical loads such that they react to price signals and coordinate with each other to shave the peaks of electricity consumption. We explore the use of multi-agent deep deterministic policy gradient (DDPG), an adaptive and model-free reinforcement learning control algorithm, for coordination of several buildings in a demand response scenario. We conduct our experiment in a simulated environment with 10 buildings
Building upon prior research that highlighted the need for standardizing environments for building c...
This paper explores the use of distributed intelligence to assist the integration of the demand as a...
Unprecedented high volumes of data are becoming available with the growth of the advanced metering i...
Increasing electrification, integration of renewable energy resources, rapid urbanization, and the p...
The 1st International Workshop on Reinforcement Learning for Energy Management in Buildings & Cities...
Demand response allows consumers to reduce their electrical consumption during periods of peak energ...
Building energy demand response is projected to be important in decarbonizing energy use. A demand r...
International audienceThis paper proposes a Deep Reinforcement Learning approach for optimally manag...
Demand response has the potential of reducing peaks of electricity demand by about 20% in the US, wh...
The paradigm shift in energy generation towards microgrid-based architectures is changing the landsc...
Behind-the-meter distributed energy resources (DERs), including building solar photovoltaic (PV) tec...
Over half of the world’s population live in urban areas, a trend which is expected to only grow as w...
This paper proposes a novel scalable type of multi-agent reinforcement learning-based coordination f...
High penetration and uneven distribution of single-phase rooftop PVs and load demands in power syste...
The rise of microgrid-based architectures is heavily modifying the energy control landscape in distr...
Building upon prior research that highlighted the need for standardizing environments for building c...
This paper explores the use of distributed intelligence to assist the integration of the demand as a...
Unprecedented high volumes of data are becoming available with the growth of the advanced metering i...
Increasing electrification, integration of renewable energy resources, rapid urbanization, and the p...
The 1st International Workshop on Reinforcement Learning for Energy Management in Buildings & Cities...
Demand response allows consumers to reduce their electrical consumption during periods of peak energ...
Building energy demand response is projected to be important in decarbonizing energy use. A demand r...
International audienceThis paper proposes a Deep Reinforcement Learning approach for optimally manag...
Demand response has the potential of reducing peaks of electricity demand by about 20% in the US, wh...
The paradigm shift in energy generation towards microgrid-based architectures is changing the landsc...
Behind-the-meter distributed energy resources (DERs), including building solar photovoltaic (PV) tec...
Over half of the world’s population live in urban areas, a trend which is expected to only grow as w...
This paper proposes a novel scalable type of multi-agent reinforcement learning-based coordination f...
High penetration and uneven distribution of single-phase rooftop PVs and load demands in power syste...
The rise of microgrid-based architectures is heavily modifying the energy control landscape in distr...
Building upon prior research that highlighted the need for standardizing environments for building c...
This paper explores the use of distributed intelligence to assist the integration of the demand as a...
Unprecedented high volumes of data are becoming available with the growth of the advanced metering i...