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Monotone data samples do not always produce monotone fuzzy if-then rules: Learning with ad hoc and system identification methods

机译:单调数据样本不一定总会产生单调模糊if-then规则:临时学习和系统识别方法

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In this paper, ad hoc and system identification methods are used to generate fuzzy If-Then rules for a zero-order Takagi-Sugeno-Kang (TSK) Fuzzy Inference System (FIS) using a set of multi-attribute monotone data. Convex and normal trapezoidal fuzzy sets, with a strong fuzzy partition strategy, is employed. Our analysis shows that even with multi-attribute monotone data, non-monotone fuzzy If-Then rules can be produced using an ad hoc method. The same observation can be made, empirically, using a system identification method, e.g., a derivative-based optimization method and the genetic algorithm. This finding is important for modeling a monotone FIS model, as the result shows that even with a “clean” data set pertaining to a monotone system, the generated fuzzy If-Then rules may need to be pre-processed, before being used for FIS modeling. As such, monotone fuzzy rule relabeling is useful. Besides that, a constrained non-linear programming method for FIS modelling is suggested, as a variant of the system identification method.
机译:在本文中,使用临时和系统识别方法使用一组多属性单调数据为零阶Takagi-Sugeno-Kang(TSK)模糊推理系统(FIS)生成模糊If-Then规则。使用具有强模糊划分策略的凸和正梯形模糊集。我们的分析表明,即使使用多属性单调数据,也可以使用ad hoc方法生成非单调模糊If-Then规则。使用系统识别方法,例如基于导数的优化方法和遗传算法,可以凭经验进行相同的观察。这一发现对于建模单调FIS模型非常重要,因为结果表明,即使使用了与单调系统有关的“干净”数据集,生成的模糊If-Then规则也可能需要进行预处理,才能用于FIS。造型。这样,单调模糊规则重新标记是有用的。除此之外,作为系统识别方法的一种变型,提出了一种用于FIS建模的约束非线性规划方法。

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