タイトル & 超要約 SSCI(サブ同期制御干渉)を、AI(深層強化学習)で解決!IT企業、儲かるかも~?💰
ギャル的キラキラポイント✨ ● 風力発電とかの電力系統で起きる問題、AIで解決しちゃうんだって!すごーい!👏 ● 従来のやり方じゃダメだったSSCI対策を、賢く(かしこく)対応できるようにしたってこと!✨ ● IT企業が、この技術を使って電力業界で大活躍できるチャンス到来ってワケ💖
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This paper explores the development of learning-based tunable control gains using EMT-in-the-loop simulation framework (e.g., PSCAD interfaced with Python-based learning modules) to address critical sub-synchronous oscillations. Since sub-synchronous control interactions (SSCI) arise from the mis-tuning of control gains under specific grid configurations, effective mitigation strategies require adaptive re-tuning of these gains. Such adaptiveness can be achieved by employing a closed-loop, learning-based framework that considers the grid conditions responsible for such sub-synchronous oscillations. This paper addresses this need by adopting methodologies inspired by Markov decision process (MDP) based reinforcement learning (RL), with a particular emphasis on simpler deep policy gradient methods with additional SSCI-specific signal processing modules such as down-sampling, bandpass filtering, and oscillation energy dependent reward computations. Our experimentation in a real-world event setting demonstrates that the deep policy gradient based trained policy can adaptively compute gain settings in response to varying grid conditions and optimally suppress control interaction-induced oscillations.