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Predefining Numbers of Fuzzy Sets for Genetically Generated Fuzzy Knowledge Bases Using Clustering Techniques: Application to Tool Wear Monitoring

机译:使用聚类技术预定义遗传生成的模糊知识库的模糊集数量:在工具磨损监测中的应用

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One of the problems surrounding fuzzy knowledge base generation using genetic algorithms is finding an optimal number of fuzzy sets for each premise. A genetic algorithm developed by the authors for the automatic generation of fuzzy knowledge bases uses a multi-objective method combining error minimization and simplification. This paper proposes solutions based on cluster analysis and validation indices for the numbers of clusters used in predefining the numbers of fuzzy sets. Two different validation indices as well as a combination of one of these with the multi-objective method are compared to the original multi-objective method on both synthetic and experimental data. Results obtained with the proposed techniques showed a considerable improvement over the multiobjective method on both data sets
机译:使用遗传算法周围围绕模糊知识库生成的问题之一是为每个前提找到最佳的模糊组数。作者为自动生成模糊知识库开发的遗传算法使用多目标方法结合误差最小化和简化。本文提出了基于集群分析和验证指数的解决方案,用于预定缩义模糊集数量的群集数量。将两种不同的验证指数以及其中一个具有多目标方法的验证指数与合成和实验数据的原始多目标方法进行比较。通过该技术获得的结果表明,在两个数据集中的多目标方法上显示了相当大的改进

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