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Control of a Realistic Wave Energy Converter Model Using Least-Squares Policy Iteration

机译:使用最小二乘策略迭代控制现实波能转换器模型

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摘要

An algorithm has been developed for the resistive control of a nonlinear model of a wave energy converter using least-squares policy iteration, which incorporates function approximation, with tabular and radial basis functions being used as features. With this method, the controller learns the optimal power take-off damping coefficient in each sea state for the maximization of the mean generated power. The performance of the algorithm is assessed against two online reinforcement learning schemes: Q-learning and SARSA. In both regular and irregular waves, least-squares policy iteration outperforms the other strategies, especially when starting from unfavorable conditions for learning. Similar performance is observed for both basis functions, with a smaller number of radial basis functions underfitting the Q-function. The shorter learning time is fundamental for a practical application on a real wave energy converter. Furthermore, this paper shows that least-squares policy iteration is able to maximize the energy absorption of a wave energy converter despite strongly nonlinear effects due to its model-free nature, which removes the influence of modeling errors. Additionally, the floater geometry has been changed during a simulation to show that reinforcement learning control is able to adapt to variations in the system dynamics.
机译:已经开发出一种算法,用于使用最小二乘策略迭代对波能转换器的非线性模型进行电阻控制,该算法结合了函数逼近功能,并使用表格和径向基函数作为特征。通过这种方法,控制器可以学习每种海况下的最佳取力器阻尼系数,以使平均发电量最大化。针对两种在线强化学习方案评估了该算法的性能:Q学习和SARSA。在规则波和不规则波中,最小二乘策略迭代均优于其他策略,尤其是从不利的学习条件开始时。对于这两个基函数,观察到相似的性能,而径向基函数的数量较少,不适合Q函数。较短的学习时间对于实际在波能转换器上的实际应用至关重要。此外,本文显示了最小二乘策略迭代能够最大程度地提高波能转换器的能量吸收,尽管它具有无模型特性,但由于具有强大的非线性效应,因此消除了建模误差的影响。此外,在仿真过程中已更改了浮动模型的几何形状,以表明强化学习控制能够适应系统动力学的变化。

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