非单态2型模糊逻辑系统输入变量建模的混合方法

Nazanin Sahab, H. Hagras
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引用次数: 12

摘要

绝大多数模糊逻辑系统和应用程序都采用单例模糊化,因为它的简单性和计算速度允许实时操作。然而,使用单例模糊化假设输入测量值是干净的信号,没有噪声或不确定性与它们相关。绝大多数现实世界的应用都具有与传感器和输入值相关的高噪声和不确定性值。高阶模糊逻辑系统(fls),如区间2型模糊逻辑系统,已被证明非常适合处理大多数现实世界应用中存在的高水平不确定性。然而,在考虑单例模糊化时,假设2型FLS的输入值是完美输入,而使用2型FLS来处理遇到的不确定性似乎是一个悖论。因此,我们提出了一种混合方法,该方法采用非单态2型模糊模糊集建模输入来处理数值不确定性,而2型模糊模糊集中的前因式和后因式模糊集将用于处理语言不确定性。非单态模糊化的主要问题之一是输入变量的形状和参数的确定,而采用基于二类模糊的输入变量会使问题变得复杂。本文提出了一种数据驱动生成区间2型模糊集的新方法,用于对非单态2型FLS的输入变量进行建模。本文将报告使用所提出的方法生成基于类型2的模糊输入变量的各种实验结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A hybrid approach to modeling input variables in non-singleton type-2 Fuzzy Logic Systems
The vast majority of fuzzy logic systems and applications employ singleton fuzzification because of its simplicity and speed of computation which allows for real time operation. However, using singleton fuzzification assumes that the input measurements are clean signals with no noise or uncertainty associated with them. The vast majority real world applications have high values of noise and uncertainty associated with the sensor and input values. Higher order Fuzzy Logic Systems (FLSs) such as interval type-2 FLSs have been shown to be very well suited to dealing with the high levels of uncertainties present in the majority of real world applications. However, it seems a paradox to use type-2 FLS to handle the encountered uncertainties while assuming that the input values to the type-2 FLS are perfect inputs when considering singleton fuzzification. Hence, we propose a hybrid approach, which employs non-singleton type-2 FLS where the inputs will be modeled by type-2 fuzzy sets to handle the numerical uncertainties, while the antecedent and consequent type-2 fuzzy sets in the type-2 FLS will be used to handle the linguistic uncertainties. One of the main problems in non-singleton fuzzification is to determine the shape and the parameters of the input variables and things get complicated when employing type-2 fuzzy based input variables. In this paper, we will present a novel method which is data driven to generate interval type-2 fuzzy sets to model the input variables in non-singleton type-2 FLS. The paper will report on various experimental results employing the proposed method to generate type-2 based fuzzy input variables.
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