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A Comparative Investigation of Type-2 Fuzzy Sets, Nonstationary Fuzzy Sets and Cloud Models

机译:2型模糊集,非平稳模糊集和云模型的比较研究

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Since Zadeh introduced fuzzy sets, a lot of extensions of this concept have been proposed, such as type-2 fuzzy sets, nonstationary fuzzy sets, and cloud models, to represent higher levels of uncertainty. This paper provides a comparative investigation of type-2 fuzzy sets, nonstationary fuzzy sets, and cloud models. Type-2 fuzzy sets study the fuzziness of the membership function (MF) using primary MF and secondary MF based on analytic mathematical methods; nonstationary fuzzy sets study the randomness of the MF using primary MF and variation function based on type-1 fuzzy sets theory; cloud models study the randomness of the distribution of samples in the universe and generate random membership grades (MGs) using two random variables based on probability and statistic mathematical methods. They all concentrate on dealing with the uncertainty of the MF or the MG which type-1 fuzzy sets do not consider, and thus have many similarities. Moreover, we find out that, the same qualitative concept "moderate amount" can be represented by an interval type-2 fuzzy set, a nonstationary fuzzy set or a normal cloud model, respectively. Then, we propose a unified mathematical expression for the interval type-2 fuzzy set, nonstationary fuzzy set and normal cloud model. On the other hand, we also find out that, the theory fundament and underlying motivations of these models are quite different. Therefore, We summarize detailed comparisons of distinctive properties of type-2 fuzzy sets, nonstationary fuzzy sets, and cloud models. Further, we study their diverse characteristics of distributions of MGs across vertical slices. The comparative investigation shows that these models are complementary to describe the uncertainty from different points of view. Thus, this paper provides a fundamental contribution and makes a basic reference for knowledge representation and other applications with uncertainty.
机译:自Zadeh引入模糊集以来,已经提出了该概念的许多扩展,例如2类模糊集,非平稳模糊集和云模型,以表示更高级别的不确定性。本文提供了对2型模糊集,非平稳模糊集和云模型的比较研究。类型2模糊集基于解析数学方法,使用主MF和辅助MF研究隶属函数(MF)的模糊性。非平稳模糊集使用基于1型模糊集理论的原始MF和变异函数研究MF的随机性;云模型研究了样本在宇宙中分布的随机性,并基于概率和统计数学方法使用两个随机变量生成了随机隶属度(MGs)。它们都集中于处理类型1模糊集未考虑的MF或MG的不确定性,因此有许多相似之处。此外,我们发现,相同的定性概念“中等量”可以分别由区间2型模糊集,非平稳模糊集或正常云模型表示。然后,我们提出了区间类型2模糊集,非平稳模糊集和正态云模型的统一数学表达式。另一方面,我们还发现,这些模型的理论基础和潜在动机是完全不同的。因此,我们总结了类型2模糊集,非平稳模糊集和云模型的独特属性的详细比较。此外,我们研究了它们在垂直切片上的MG分布的不同特征。比较研究表明,这些模型是从不同角度描述不确定性的补充。因此,本文提供了基础性的贡献,并为知识表示和其他不确定性的应用提供了基础参考。

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