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Parameter Identification of T-S Fuzzy Models Based on Particle Swarm Optimization Algorithms

机译:基于粒子群算法的T-S模糊模型参数辨识

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Most of the T-S fuzzy models commonly used in the identification of nonlinear processes have linear or affine consequents. More specifically, the local mathematical models in the consequents of fuzzy rules are taken to be linear or affine. However, it can always be observed that the number of fuzzy rules of the resultant T-S fuzzy models is very large. In order to reduce the number of fuzzy rules and keep the model accuracy unchanged, a special class of T-S fuzzy models is taken to be the candidate models in this study. In more detail, the consequent of the fuzzy rule in this research is polynomial models instead of linear or affine ones. Based on this candidate T-S fuzzy model, the particle swarm optimization algorithms are employed to estimate the parameters in this model. Numerical simulations demonstrate that the number of fuzzy rules is significantly reduced while the model accuracy is still unchanged. This advantage comes to be more prominent with the increase of input variables.
机译:通常用于识别非线性过程的大多数T-S模糊模型具有线性或仿射结果。更具体地,在模糊规则的结果中的局部数学模型被认为是线性的或仿射的。但是,总可以观察到,所得T-S模糊模型的模糊规则数量非常多。为了减少模糊规则的数量并保持模型精度不变,本研究以一类特殊的T-S模糊模型作为候选模型。更详细地说,本研究中模糊规则的结果是多项式模型,而不是线性或仿射模型。基于该候选T-S模糊模型,采用粒子群优化算法估计该模型中的参数。数值模拟表明,模糊规则的数量大大减少,而模型的准确性仍保持不变。随着输入变量的增加,此优势变得更加突出。

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