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Auteurs principaux: Masoumi, Amin, Korkali, Mert
Format: Preprint
Publié: 2025
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Accès en ligne:https://arxiv.org/abs/2512.04439
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author Masoumi, Amin
Korkali, Mert
author_facet Masoumi, Amin
Korkali, Mert
contents In modern power systems, frequency regulation is a fundamental prerequisite for ensuring system reliability and assessing the robustness of expansion projects. Conventional feedback control schemes, however, exhibit limited accuracy under varying operating conditions because their gains remain static. Consequently, deep reinforcement learning methods are increasingly employed to design adaptive controllers that can be generalized to diverse frequency control tasks. At the same time, recent advances in quantum computing provide avenues for embedding quantum capabilities into such critical applications. In particular, the potential of quantum algorithms can be more effectively explored and harnessed on near-term quantum devices by leveraging insights from active controller design. In this work, we incorporate a quantum circuit together with an ansatz into the operation of a deep deterministic policy gradient agent. The simulation results of the IEEE 14-bus test system demonstrate the potential of this integrated approach that can achieve reliable, robust performance across diverse real-world challenges.
format Preprint
id arxiv_https___arxiv_org_abs_2512_04439
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Quantum-Accelerated Deep Reinforcement Learning for Frequency Regulation Enhancement
Masoumi, Amin
Korkali, Mert
Systems and Control
In modern power systems, frequency regulation is a fundamental prerequisite for ensuring system reliability and assessing the robustness of expansion projects. Conventional feedback control schemes, however, exhibit limited accuracy under varying operating conditions because their gains remain static. Consequently, deep reinforcement learning methods are increasingly employed to design adaptive controllers that can be generalized to diverse frequency control tasks. At the same time, recent advances in quantum computing provide avenues for embedding quantum capabilities into such critical applications. In particular, the potential of quantum algorithms can be more effectively explored and harnessed on near-term quantum devices by leveraging insights from active controller design. In this work, we incorporate a quantum circuit together with an ansatz into the operation of a deep deterministic policy gradient agent. The simulation results of the IEEE 14-bus test system demonstrate the potential of this integrated approach that can achieve reliable, robust performance across diverse real-world challenges.
title Quantum-Accelerated Deep Reinforcement Learning for Frequency Regulation Enhancement
topic Systems and Control
url https://arxiv.org/abs/2512.04439