神经网络在倒立摆控制器中的摩擦补偿

Q3 Engineering
M. Balcerzak
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引用次数: 0

摘要

本文对摩擦建模和补偿的新方法进行了实验验证。该方法已应用于倒立摆控制系统。介绍了数据采集和处理的实际过程。已经涵盖了神经网络摩擦模型的训练。文中介绍了模型的应用。所提出的模型的主要优点是它在较宽的相对速度范围内的正确性。此外,该模型相对容易构建。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Friction Compensation in the Inverted Pendulum Controller by Means of a Neural Network
Abstract This paper presents an experimental confirmation of the novel method of friction modelling and compensation. The method has been applied to an inverted pendulum control system. The practical procedure of data acquisition and processing has been described. Training of the neural network friction model has been covered. Application of the obtained model has been presented. The main asset of the presented model is its correctness in a wide range of relative velocities. Moreover, the model is relatively easy to build.
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来源期刊
Mechanics and Mechanical Engineering
Mechanics and Mechanical Engineering Engineering-Automotive Engineering
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