非线性系统的模糊控制采用两种标准技术

R. Boukezzoula, S. Galichet, L. Foulloy
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引用次数: 5

摘要

本文研究了无解析模型的离散非线性系统的控制问题。基于模糊系统近似任何非线性映射的能力,用Takagi-Sugeno模糊模型表示未知非线性系统,该模型利用输入-输出数据进行识别。然后使用标准技术解决控制问题。本文考虑了两种不同的方法。第一种是离散非线性系统的输入输出线性化。该技术的优点是可以通过引入加性控制分量来减弱非结构化不确定性对控制性能的影响。第二种发展的策略是内模控制,它基于在控制结构中引入对象的显式模糊模型。当选择控制器作为模糊模型的逆时,可以得到完美的控制。最后给出了仿真结果,验证了两种方法的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fuzzy control of nonlinear systems using two standard techniques
The problem of the control of discrete-time nonlinear systems for which there is no available analytic model is tackled in this paper. Based on the ability of fuzzy systems to approximate any nonlinear mapping, the unknown nonlinear system is represented by a Takagi-Sugeno fuzzy model which is identified using input-output data. The control problem is then solved using a standard technique. Two different approaches are considered in this paper. The first one is a version of input-output linearization of discrete-time nonlinear systems. The advantage of this technique is the possibility to attenuate the influence of unstructured uncertainties on the control performances by introducing an additive control component. The second developed strategy is internal model control which is based on the introduction of an explicit fuzzy model of the plant in the control structure. Perfect control is obtained when the controller is chosen as the inverse of the fuzzy model. Finally, simulation results are included to demonstrate the feasibility of both proposed methods.
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