Remarks on self-tuning feedback controller using the Clifford multi-layer neural network

Kazuhiko Takahashi
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引用次数: 1

Abstract

In this study, Clifford multi-layer neural networks using a back-propagation algorithm are applied to control a nonlinear dynamic system to investigate its capability in practical control applications. A self-tuning feedback controller in which feedback gain parameters are adjusted by the Clifford multi-layer neural network is designed and a trail-based learning architecture is introduced in the online drawback learning of the Clifford multi-layer neural network. Computational experiments using a cart and a pendulum system as a plant that is controlled by the self-tuning feedback controller are conducted. In particular, the Clifford multi-layer neural networks followed by the Clifford algebras C0,0, C0,1 and C0,2 are utilised in the self-tuning feedback controllers, and these control performances are compared. Experimental results show that the Clifford algebra framework is feasible for improving the efficiency of neural computing. Results also confirm the potential of the Clifford multi-layer neural networks in control systems.
基于Clifford多层神经网络的自整定反馈控制器评述
本文将基于反向传播算法的Clifford多层神经网络应用于非线性动态系统的控制中,考察其在实际控制中的应用能力。设计了一种由Clifford多层神经网络调节反馈增益参数的自整定反馈控制器,并在Clifford多层神经网络的在线缺陷学习中引入了基于轨迹的学习结构。以小车和摆系统为对象,采用自整定反馈控制器进行了计算实验。特别地,将Clifford多层神经网络和Clifford代数C0,0, C0,1和C0,2应用于自整定反馈控制器中,并比较了这些控制器的控制性能。实验结果表明,Clifford代数框架对于提高神经计算效率是可行的。结果也证实了Clifford多层神经网络在控制系统中的潜力。
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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