open access publication

Article, 2024

Safety-Enhanced Self-Learning for Optimal Power Converter Control

IEEE Transactions on Industrial Electronics, ISSN 1557-9948, 0278-0046, Volume PP, 99, Pages 1-6, 10.1109/tie.2024.3363759

Contributors

Wan, Yihao 0000-0002-9406-5600 [1] Xu, Qianwen 0000-0002-2793-9048 [2] Dragicevic, Tomislav 0000-0003-4755-2024 [1]

Affiliations

  1. [1] Technical University of Denmark
  2. [NORA names: DTU Technical University of Denmark; University; Denmark; Europe, EU; Nordic; OECD];
  3. [2] KTH Royal Institute of Technology
  4. [NORA names: Sweden; Europe, EU; Nordic; OECD]

Abstract

Data-driven learning-based control methods, such as reinforcement learning (RL), have become increasingly popular with recent proliferation of the machine learning paradigm. These methods address the parameter sensitiveness and unmodeled dynamics in model-based controllers, such as finite control-set model predictive control. RL agents are typically utilized in simulation environments, where they are allowed to explore multiple “unsafe” actions during the learning process. However, this type of learning is not applicable to online self-learning of controllers in physical power converters, because unsafe actions would damage them. To address this, this letter proposes a safe online RL-based control framework to autonomously find the optimal switching strategy for the power converters, while ensuring system safety during the entire self-learning process. The proposed safe online RL-based control is validated in a practical testbed on a two-level voltage source converter system, and the results confirm the effectiveness of the proposed method.

Keywords

RL agent, RL-based controller, action, agents, control, control method, converter, converter control, converter system, dynamics, effect, environment, finite control set model predictive control, learning, learning paradigm, learning process, learning-based control method, letter, machine, machine learning paradigm, method, model predictive control, model-based control, optimal switching strategy, paradigm, parameter sensitivity, parameters, power, power converter control, power converters, predictive control, process, proliferation, reinforcement, reinforcement learning, results, safety, self-learning, self-learning process, sensitivity, simulation, simulation environment, strategies, switching strategy, system, system safety, testbed, unmodeled dynamics, unsafe actions, voltage source converter system

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