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Hierarchical Combination of Deep Reinforcement Learning and Quadratic Programming for Distribution System Restoration

Mohammad Mehdi Hosseini, Luis Rodriguez‐Garcia, Masood Parvania

2023IEEE Transactions on Sustainable Energy34 citationsDOI

Abstract

This paper proposes a model for hierarchical combination of deep reinforcement learning (DRL) with quadratic programming for distribution system restoration after major outages. In the proposed model, optimal power dispatch of a collection of distributed energy resources, called integrated hybrid resources (IHRs), is determined by a DRL-trained controller, while a grid-level quadratic programming problem checks grid constraints and performs critical restoration operation. DRL is implemented using Soft Actor-Critic (SAC) algorithm, which is shown to outperform the common Deep Deterministic Policy Gradient in continuous action spaces. The numerical studies, performed on the 123-bus test distribution system, demonstrates that the hierarchical combination of DRL and quadratic programming not only speeds up the local operation of multiple IHRs, but also ensures that the network constraints are satisfied during the restoration operation.

Topics & Concepts

Quadratic programmingSequential quadratic programmingReinforcement learningComputer scienceGridController (irrigation)Mathematical optimizationQuadratic equationElectric power systemHierarchical control systemArtificial intelligencePower (physics)Control (management)MathematicsPhysicsAgronomyGeometryBiologyQuantum mechanicsOptimal Power Flow DistributionSmart Grid Energy ManagementMicrogrid Control and Optimization
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