Adaptive self-tuning control using neural networks for fast time-varying nonlinear systems

Won-Kuk. Son, K. Bollinger
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引用次数: 5

Abstract

A fast and flexible adaptive self-tuning control is proposed in this paper for nonlinear, fast time-varying and multi-input multi-output (MIMO) systems using a novel output and error recurrent neural networks. The key point of this research for nonlinear control is to develop a fist tracker with a flexible adaptive control scheme which does not require previous knowledge about the plant to be controlled, i.e., plant dynamic equations. Hence its algorithms have a flexibility for diverse applications. In order to carry out this research goal, system identification has successfully been achieved based on a recurrent neural network model, and nonlinear quadratic optimal law has also been derived and tested to the fast tracking problem for a robotic manipulator.
基于神经网络的快速时变非线性系统自适应自整定控制
针对非线性、快速时变、多输入多输出(MIMO)系统,提出了一种基于输出和误差递归神经网络的快速灵活自适应自整定控制方法。本文研究非线性控制的重点是开发一种具有柔性自适应控制方案的拳头跟踪器,该方案不需要预先了解被控对象的动态方程。因此,它的算法对不同的应用具有灵活性。为了实现这一研究目标,基于递归神经网络模型成功地实现了系统辨识,并推导出非线性二次最优律,并对机械臂快速跟踪问题进行了验证。
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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