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Experimental Implementation of Reinforcement Learning Applied to Maximise Energy from a Wave Energy Converter

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  • Fabian G. Pierart

    (Department of Mechanical Engineering, College of Engineering, Universidad del Bío-Bío, 4051381 Collao Avenue, Concepción 1202, Chile)

  • Pedro G. Campos

    (Department of Information Systems, Universidad del Bío-Bío, Concepción 1202, Chile)

  • Cristian E. Basoalto

    (Department of Mechanical Engineering, College of Engineering, Universidad del Bío-Bío, 4051381 Collao Avenue, Concepción 1202, Chile)

  • Jaime Rohten

    (Department of Electric and Electronic Engineering, College of Engineering, Universidad del Bío-Bío, 4051381 Collao Avenue, Concepción 1202, Chile)

  • Thomas Davey

    (School of Engineering, Institute for Energy Systems, FloWave Ocean Energy Research Facility, The University of Edinburgh, Max Born Crescent, Edinburgh EH9 3BF, UK)

Abstract

Wave energy has the potential to provide a sustainable solution for global energy demands, particularly in coastal regions. This study explores the use of reinforcement learning (RL), specifically the Q-learning algorithm, to optimise the energy extraction capabilities of a wave energy converter (WEC) using a single-body point absorber with resistive control. Experimental validation demonstrated that Q-learning effectively optimises the power take-off (PTO) damping coefficient, leading to an energy output that closely aligns with theoretical predictions. The stability observed after approximately 40 episodes highlights the capability of Q-learning for real-time optimisation, even under irregular wave conditions. The results also showed an improvement in efficiency of 12% for the theoretical case and 11.3% for the experimental case from the initial to the optimised state, underscoring the effectiveness of the RL strategy. The simplicity of the resistive control strategy makes it a viable solution for practical engineering applications, reducing the complexity and cost of deployment. This study provides a significant step towards bridging the gap between the theoretical modelling and experimental implementation of RL-based WEC systems, contributing to the advancement of sustainable ocean energy technologies.

Suggested Citation

  • Fabian G. Pierart & Pedro G. Campos & Cristian E. Basoalto & Jaime Rohten & Thomas Davey, 2024. "Experimental Implementation of Reinforcement Learning Applied to Maximise Energy from a Wave Energy Converter," Energies, MDPI, vol. 17(20), pages 1-13, October.
  • Handle: RePEc:gam:jeners:v:17:y:2024:i:20:p:5087-:d:1497795
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    References listed on IDEAS

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    1. Fabian G. Pierart & Matias Rubilar & Jaime Rohten, 2023. "Experimental Validation of Damping Adjustment Method with Generator Parameter Study for Wave Energy Conversion," Energies, MDPI, vol. 16(14), pages 1-14, July.
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