一种基于神经网络的智能模型参考自适应控制器

S. Kamalasadan, A. Ghandakly
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引用次数: 26

摘要

提出了一种基于神经网络的智能模型参考自适应控制器。该方案利用在线生长动态径向基函数神经网络(RBFNN)结构,将智能监控环路(ISL)与传统的模型参考自适应控制器(MRAC)框架相结合。其思想是通过具有合适的单参考模型的直接MRAC来控制被控对象,同时通过RBFNN控制器的在线整定来响应被控对象的多模态动态。这种并行RBFNN控制器的设计是为了精确地跟踪系统输出到所需的命令信号轨迹,而不考虑系统的多模态和/或未建模的动力学。导出了RBFNN宽度、中心和权值的更新细节,以确保减小误差并提高跟踪精度。该方案的重要之处在于,如果能建立合适的参考模型结构,在不使用多模型概念或多参考模型自适应控制器的情况下,即使在被控对象模式波动时也能有效地执行。此外,即使系统显示未建模的动力学,并联控制器也能精确地跟踪参考轨迹。通过对尖端载荷变化下机器人角度位置的控制,验证了该方案的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A neural network based intelligent model reference adaptive controller
This paper presents a novel neural network based intelligent model reference adaptive controller. In this scheme the intelligent supervisory loop (ISL) is incorporated into the traditional model reference adaptive controller (MRAC) framework by utilizing an online growing dynamic radial basis function neural network (RBFNN) structure in parallel with it. The idea is to control the plant by a direct MRAC with a suitable single reference model, and at the same time respond to plant multimodal dynamics by on line tuning of an RBFNN controller. This parallel RBFNN controller is designed in order to precisely track the system output to the desired command signal trajectory, regardless of system multimodality and/or unmodeled dynamics. The updating details of the RBFNN width, centers and weights are derived to ensure error reduction and for improved tracking accuracy. The importance of the proposed scheme is in its ability to perform effectively even when the plant mode swings without using multiple model concept or a multiple reference model adaptive controller if a suitable reference model structure can be established. Further, the parallel controller will be able to precisely track the reference trajectory even with system showing unmodeled dynamics. The performance ability of the scheme is confirmed by applying to control the angular position of the robotic manipulator under tip load variations.
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