模糊逻辑系统中实现模糊集变换的一种新方法

Li Kaidi, Hao Jimei, Huang Rui
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引用次数: 0

摘要

模糊逻辑系统的核心是模糊推理机,它实现了模糊集从论域U到论域v的转换,模糊集的转换就是隶属变换。然而,现有的隶属度变换算法存在冗余。为了构造一种不受冗余数据干扰的隶属度变换方法,挖掘隐藏在索引隶属度中的对象分类信息来定义分权,该数据挖掘方法是基于熵的;利用可区分权值作为过滤器,删除多余的对分类无用的索引隶属度,提取索引隶属度中对分类有用的有效值;然后将有效价值转化为可比价值,生成可比总和;最后用可比和定义对象的隶属度。在此基础上,实现了一种不受冗余数据干扰的模糊集变换新方法,下面的实例可以说明该算法的应用。
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A New Method to Achieve Fuzzy Set Transformation in Fuzzy Logic System
The core of fuzzy logic system is fuzzy inference machine, which realizes the transformation of fuzzy set from universe of discourse U to universe of discourse V. The fuzzy set transformation is membership transformation. However, there is redundancy in the existing algorithms of membership transformation. In order to construct a membership transformation method in which there is not interfering by redundant data, this paper excavates the information of the object classification that hides in index membership to define the divisional right, this data excavation method is based on entropy; Use distinguishable weight as a filter to delete redundant index membership that are useless for classification, and extract effective value in index membership that is useful for classification; Then transform effective value to comparable value and generate comparable sum; At last define object membership by comparable sum. Based on this, a new method to achieve transformation of fuzzy set can be realized without the interference of redundant data, and the following case can illustrate the algorithm application.
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