Normal form and adaptive control of mimo non-canonical neural network systems

Yanjun Zhang, G. Tao, Mou Chen, Zehui Mao
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Abstract

This paper presents a new study on adaptive control of multi-input multi-output (MIMO) neural network system models in a non-canonical form. Different from canonical-form nonlinear systems whose neural network approximation models have explicit relative degrees, non-canonical form nonlinear systems usually do not have such a feature, nor do their approximation models which are also in non-canonical forms. For adaptive control of non-canonical form neural network system models with uncertain parameters, this paper develops a new adaptive feedback linearization based control scheme, by specifying relative degrees and establishing a normal form of such systems, deriving a new system re-parametrization needed for adaptive control design, and constructing a stable controller for which an uncertain control gain matrix is handled using a matrix decomposition technique. System stability and tracking performance is analyzed. A detailed example with simulation results is presented to show the control design procedure and desired system performance.
mimo非正则神经网络系统的范式与自适应控制
本文对非规范形式的多输入多输出(MIMO)神经网络系统模型的自适应控制进行了新的研究。与正则型非线性系统的神经网络近似模型具有显式相对度数不同,非正则型非线性系统通常不具有这一特征,其近似模型也是非正则型的。针对具有不确定参数的非规范形式神经网络系统模型的自适应控制问题,本文提出了一种新的基于自适应反馈线性化的控制方案,通过指定系统的相对程度和建立系统的标准形式,推导出自适应控制设计所需的新的系统再参数化,并利用矩阵分解技术构造了一个稳定控制器,该控制器使用不确定控制增益矩阵进行处理。分析了系统的稳定性和跟踪性能。给出了一个详细的实例和仿真结果,说明了控制设计过程和期望的系统性能。
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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