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首页> 外文期刊>IEEE transactions on systems, man, and cybernetics. Part B >Similarity measures in fuzzy rule base simplification
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Similarity measures in fuzzy rule base simplification

机译:模糊规则库简化中的相似性度量

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In fuzzy rule-based models acquired from numerical data, redundancy may be present in the form of similar fuzzy sets that represent compatible concepts. This results in an unnecessarily complex and less transparent linguistic description of the system. By using a measure of similarity, a rule base simplification method is proposed that reduces the number of fuzzy sets in the model. Similar fuzzy sets are merged to create a common fuzzy set to replace them in the rule base. If the redundancy in the model is high, merging similar fuzzy sets might result in equal rules that also can be merged, thereby reducing the number of rules as well. The simplified rule base is computationally more efficient and linguistically more tractable. The approach has been successfully applied to fuzzy models of real world systems.
机译:在从数值数据获取的基于模糊规则的模型中,冗余可能以代表兼容概念的相似模糊集的形式出现。这导致对该系统的不必要的复杂性和不太透明的语言描述。通过使用一种相似性度量,提出了一种基于规则的简化方法,该方法减少了模型中模糊集的数量。合并相似的模糊集以创建通用的模糊集,以替换规则库中的模糊集。如果模型中的冗余度很高,则合并相似的模糊集可能会产生相等的规则,这些规则也可以合并,从而也减少了规则的数量。简化的规则库在计算上更有效,在语言上更容易处理。该方法已成功应用于现实世界系统的模糊模型。

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