DC Motor Control based on Integral Reinforcement Learning

Gheorghe Bujgoi, D. Sendrescu
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引用次数: 3

Abstract

The paper presents the control of a DC motor using a machine learning technique known as integral reinforcement learning. The integral reinforcement learning control method belongs to the category of intelligent control systems. The main advantage of the integral reinforcement learning method is that it addresses continuous systems while most reinforcement learning methods are developed for discrete systems. The control system is based on a classic structure in reinforcement learning of critical – actor type. The critic is represented by a neural network that evaluates the efficiency of the actions generated by the actor (the correspondent of the controller in conventional control systems). Critic tuning (neural network training) is done online using the technique known as Temporal Difference Learning. The presented technique is tested and analysed both by simulation and implementation on an experimental platform.
基于积分强化学习的直流电机控制
本文介绍了使用一种被称为积分强化学习的机器学习技术来控制直流电机。积分强化学习控制方法属于智能控制系统的范畴。积分强化学习方法的主要优点是它适用于连续系统,而大多数强化学习方法是针对离散系统开发的。控制系统是基于一个经典的关键角色型强化学习结构。批评家由一个神经网络表示,该网络评估参与者(传统控制系统中控制器的对应者)产生的动作的效率。批评家调整(神经网络训练)是使用称为时间差异学习的技术在线完成的。通过仿真和实验平台上的实现,对该技术进行了验证和分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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