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A Generalized Deep Reinforcement Learning Model for Distribution Network Reconfiguration with Power Flow-Based Action-Space Sampling

Nastaran Gholizadeh, Petr Musı́lek

2024Energies5 citationsDOIOpen Access PDF

Abstract

Distribution network reconfiguration (DNR) is used by utilities to enhance power system performance in various ways, such as reducing line losses. Conventional DNR algorithms rely on accurate values of network parameters and lack scalability and optimality. To tackle these issues, a new data-driven algorithm based on reinforcement learning is developed for DNR in this paper. The proposed algorithm comprises two main parts. The first part, named action-space sampling, aims at analyzing the network structure, finding all feasible reconfiguration actions, and reducing the size of the action space to only the most optimal actions. In the second part, deep Q-learning (DQN) and dueling DQN methods are used to train an agent to take the best switching actions according to the switch states and loads of the system. The results show that both DQN and dueling DQN are effective in reducing system losses through grid reconfiguration. The proposed methods have faster execution time compared to the conventional methods and are more scalable.

Topics & Concepts

Reinforcement learningControl reconfigurationPower flowFlow (mathematics)Action (physics)Space (punctuation)Computer sciencePower (physics)Distribution (mathematics)Sampling (signal processing)Artificial intelligenceTopology (electrical circuits)MathematicsElectric power systemEngineeringElectrical engineeringPhysicsTelecommunicationsMathematical analysisEmbedded systemGeometryDetectorOperating systemQuantum mechanicsOptimal Power Flow DistributionSmart Grid Security and ResilienceSmart Grid Energy Management