Deep Reinforcement Learning Control to Maximize Output Energy for a Wave Energy Converter

Jun Umeda, T. Fujiwara
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引用次数: 2

Abstract

This paper presents a deep reinforcement learning control method to maximize output energy for a point absorber type wave energy converter (WEC) with a linear generator. Conventional control methods require the dynamic model of the WEC. Modeling errors of the dynamic model, however, make energy absorption smaller and cause incorrect control. The proposed method, which is a model- free control method learns the optimal damping and stiffness coefficients based on experiences. In the proposed control method, damping and stiffness coefficients are able to vary in time-domain depending on the incident waves by deep reinforcement learning. The performance of the proposed control method is investigated through numerical simulation in both regular and irregular waves. Compared with the conventional control method, averaged output power increased, and the power fluctuation decreased without the dynamic model. It is understood that the proposed method is more effective than the conventional control method.
波能转换器输出能量最大化的深度强化学习控制
针对带线性发电机的点吸收波能转换器,提出了一种输出能量最大化的深度强化学习控制方法。传统的控制方法需要WEC的动态模型。然而,动态模型的建模误差使能量吸收较小,导致控制不正确。该方法是一种无模型控制方法,基于经验学习最优阻尼和刚度系数。在该控制方法中,通过深度强化学习,阻尼和刚度系数能够随入射波在时域内变化。通过数值模拟研究了该控制方法在规则波和不规则波中的性能。与传统的控制方法相比,在没有动态模型的情况下,平均输出功率增加,功率波动减小。据了解,所提出的方法比常规控制方法更有效。
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