Litcius/Paper detail

Reinforcement Learning for Battery Energy Storage Dispatch augmented with Model-based Optimizer

Gayathri Krishnamoorthy, Anamika Dubey, Assefaw H. Gebremedhin

202113 citationsDOI

Abstract

Reinforcement learning algorithms have been found useful in solving optimal power flow (OPF) problems in electric power distribution systems. However, the use of largely model-free reinforcement learning algorithms that completely ignore the physics-based modeling of the power grid compromises the optimizer performance and poses scalability challenges. This paper proposes a novel approach to synergistically combine the physics-based models with learning-based algorithms using imitation learning to solve distribution-level OPF problems. Specifically, we propose imitation learning based improvements in deep reinforcement learning (DRL) methods to solve the OPF problem for a specific case of battery storage dispatch in the power distribution systems. The proposed imitation learning algorithm uses the approximate optimal solutions obtained from a linearized model-based OPF solver to provide a good initial policy for the DRL algorithms while improving the training efficiency. The effectiveness of the proposed approach is demonstrated using IEEE 34-bus and 123-bus distribution feeders with numerous distribution-level battery storage systems.

Topics & Concepts

Reinforcement learningComputer scienceScalabilitySolverSmart gridBattery (electricity)Energy storageGridMathematical optimizationArtificial intelligencePower (physics)EngineeringMathematicsPhysicsQuantum mechanicsProgramming languageElectrical engineeringGeometryDatabaseOptimal Power Flow DistributionSmart Grid Energy ManagementMicrogrid Control and Optimization
Reinforcement Learning for Battery Energy Storage Dispatch augmented with Model-based Optimizer | Litcius