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High Performance Computing Reinforcement Learning Framework for Power System Control

Ivana Damjanović, Ivica Pavić, Mario Brčić, Roko Jerčić

202312 citationsDOI

Abstract

In this paper, the integration of a power system simulator and reinforcement learning (RL) tools and frameworks is presented. A proposed framework is easily applicable and can serve as a framework for further developing, training, and benchmarking RL algorithms on more complex tasks of power system control. The usage of standard RL frameworks enables a broad range of state-of-the-art algorithms to be implemented with high performance, scalability, and substantial code reuse. Also, the proposed framework design is suitable for scaling onto high-performance computing (HPC) clusters which significantly speeds up the computation. The IEEE 14-bus system is selected to show the simulation results of the proposed method.

Topics & Concepts

Reinforcement learningBenchmarkingComputer scienceScalabilityReuseComputationSupercomputerDistributed computingElectric power systemState (computer science)Range (aeronautics)Power (physics)Computer architectureComputer engineeringParallel computingArtificial intelligenceOperating systemEngineeringProgramming languagePhysicsWaste managementQuantum mechanicsBusinessAerospace engineeringMarketingPower System Optimization and StabilitySmart Grid Energy ManagementOptimal Power Flow Distribution
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