Fuzzy-based Gain Adaptive Scheme for Set-Point Modulated Model Reference Adaptive Controller

A. K. Pal, I. Naskar, Sampa Paul
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引用次数: 1

Abstract

In model reference adaptive controller (MRACs), the adaptive gain of the controller is varied according to the process dynamic variation as it is directly related with the system stability. In MRAC, there is no provision of an automatic selection of adaptive gain and adaptation rate. To get rid of this problem and for the automatic selection of adaptive gain, a fuzzy-based scheme is presented in this article. In the proposed fuzzy-based technique, the controller output gain is illustrated as the function of input process parameters, which is continuously amended for any process parameter variations. A set-point modulation scheme is also incorporated to tackle the undesired process parameter variations and to improve performance indices of the process under control. The performance of the proposed set-point modulated fuzzy-based model reference adaptive controller (SFMRAC) is demonstrated on different second order linear, marginally stable and nonlinear models. The scheme is also explored on a real-time twin arm overhead crane for transport of material without pendulation.
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基于模糊的设定点调制模型参考自适应控制器增益自适应方案
在模型参考自适应控制器(MRACs)中,控制器的自适应增益直接关系到系统的稳定性,它会随着过程的动态变化而变化。在MRAC中,没有提供自适应增益和自适应速率的自动选择。为了解决这一问题,实现自适应增益的自动选择,本文提出了一种基于模糊的方案。在所提出的基于模糊的技术中,控制器输出增益被表示为输入过程参数的函数,并对任何过程参数的变化进行连续修正。为了解决不希望的过程参数变化,提高控制过程的性能指标,还采用了设定值调制方案。在不同的二阶线性、边际稳定和非线性模型上验证了所提出的基于设定点调制模糊模型参考自适应控制器(SFMRAC)的性能。并在实时双臂桥式起重机上进行了无摆料运输方案的探索。
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