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A Preliminary Study on the Relationship Between Iterative Learning Control and Reinforcement Learning ?

机译:迭代学习控制与强化学习之间的关系的初步研究

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Iterative learning control is a control system design method that is able to achieve high tracking performance by repeatedly executing a task and learning the best input from previous attempts of performing the task. Reinforcement learning is a machine learning method that determines the best action such that some utility function (reward) is maximised by repeatedly interacting with the environment (system) and learning the best action policy based on the reward received from such interactions. These two methods belong to different subject disciplines but share a number of similarities. The relationship between these two design approaches, however, has not been investigated in detail. This paper presents a preliminary study on the relationship between iterative learning control and reinforcement learning, hopefully shedding some light on how these two areas can benefit each other in future research.
机译:迭代学习控制是一种控制系统设计方法,它能够通过重复执行任务并从先前执行任务的尝试中学习最佳输入来实现高跟踪性能。强化学习是一种机器学习方法,它确定最佳动作,以便通过与环境(系统)反复交互并基于从此类交互中获得的奖励来学习最佳动作策略,从而使某些效用函数(奖励)最大化。这两种方法属于不同的学科,但具有许多相似之处。但是,尚未详细研究这两种设计方法之间的关系。本文对迭代学习控制与强化学习之间的关系进行了初步研究,希望能在未来的研究中阐明这两个领域如何互惠互利。

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