English

Policy Gradient-Based EMT-in-the-Loop Learning to Mitigate Sub-Synchronous Control Interactions

Systems and Control 2025-11-11 v1 Artificial Intelligence Systems and Control

Abstract

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.

Keywords

Cite

@article{arxiv.2511.05822,
  title  = {Policy Gradient-Based EMT-in-the-Loop Learning to Mitigate Sub-Synchronous Control Interactions},
  author = {Sayak Mukherjee and Ramij R. Hossain and Kaustav Chatterjee and Sameer Nekkalapu and Marcelo Elizondo},
  journal= {arXiv preprint arXiv:2511.05822},
  year   = {2025}
}

Comments

10 pages, 7 figures

R2 v1 2026-07-01T07:27:21.601Z