基于遗传算法的TSK模糊规则构造方法

Ashwani Kumar, D. P. Agrawal, S. Joshi
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引用次数: 19

摘要

提出了一种基于遗传算法(GA)、规则库生成的简单聚类过程和加权最小二乘估计的方法,直接从数值数据构建Takagi-Sugeno-Kang (TSK)模糊推理系统。规则库生成方法采用分别独立聚类输入和输出空间的方法,并为每个规则分配权重以捕获输入-输出数据中的关系。遗传过程学习每个变量的语言项数和规则的确定性因子(间接为模糊规则前提部分的隶属函数参数),并采用加权最小二乘法确定模糊规则的结果部分。最后给出了股票市场预测的仿真结果和一个基准案例分析。
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A GA-based method for constructing TSK fuzzy rules from numerical data
A method based on genetic algorithm (GA), a simple clustering procedure for rule base generation, and weighted least squares estimation is proposed to construct a Takagi-Sugeno-Kang (TSK) fuzzy inference system directly from numerical data. The rule-base generation method takes the approach of independently clustering input and output spaces, respectively, and assigning a weight to each rule to capture the relation in input-output data. Genetic process learns the number of linguistic terms per variable and the certainty factors of the rules (indirectly the membership-function parameters of the premise part of the fuzzy rules), and the weighted least squares method is used to determine the consequent part of the fuzzy rules. Simulation results on forecasting the stock market and a benchmark case study are included.
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