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A new approach for online T-S fuzzy identification and model predictive control of nonlinear systems

机译:非线性系统在线T-S模糊辨识和模型预测控制的新方法

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摘要

This paper proposes a new unsupervised fuzzy clustering algorithm (NUFCA) to construct a novel online evolving Takagi-Sugeno (T-S) fuzzy model identification method and an adaptive predictive process control methodology. The proposed system identification approach consists of two main steps: antecedent T-S fuzzy model parameters identification and consequent parameters identification. The NUFCA combines the K-nearest neighbour and fuzzy C-means methods into a fuzzy modelling method for partitioning of the input-output data and identifying the antecedent parameters of the fuzzy system; then the recursive least squares method is exploited to obtain initialization type consequent parameters and to construct a method for on-line fuzzy model identification. The integration of the proposed adaptive identification method with the generalized predictive control results in an effective adaptive predictive fuzzy control methodology. For better demonstration of the robustness and efficiency of the proposed methodology, it is applied to the identification of a model for the estimation of the flour concentration in the effluent of a real-world wastewater treatment plant (WWTP); and to control a simulated continuous stirred tank reactor (CSTR), and a real experimental setup composed of two coupled DC motors. The results show that the developed evolving T-S fuzzy model methodology can identify nonlinear systems satisfactorily and can be successfully used for a prediction model of the process for the generalized predictive controller. It is also shown that the algorithm is robust to changes in the initial parameters, and to unexpected disturbances.
机译:本文提出了一种新的无监督模糊聚类算法(NUFCA),以构造一种新颖的在线演化高木-Sugeno(T-S)模糊模型识别方法和一种自适应预测过程控制方法。所提出的系统识别方法包括两个主要步骤:先验T-S模糊模型参数识别和后续参数识别。 NUFCA将K最近邻法和模糊C均值法相结合,形成一种模糊建模方法,用于划分输入输出数据并识别模糊系统的先行参数。然后利用递推最小二乘方法获得初始类型的结果参数,并建立在线模糊模型辨识方法。所提出的自适应识别方法与广义预测控制的集成导致了一种有效的自适应预测模糊控制方法。为了更好地证明所提出的方法的鲁棒性和效率,将其应用于确定模型来估算现实世界废水处理厂(WWTP)的废水中面粉的浓度;并控制模拟的连续搅拌釜反应器(CSTR),以及由两个耦合的直流电动机组成的实际实验装置。结果表明,所开发的演化T-S模糊模型方法可以令人满意地识别非线性系统,并可以成功地用于广义预测控制器过程的预测模型。还表明,该算法对于初始参数的变化和意外干扰具有鲁棒性。

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