Interval Type-2 Complex-Fuzzy Inferential System - A New Approach to Modeling
Proceeding: The Fourth International Conference on Informatics & Applications (ICIA2015)Publication Date: 2015-07-20
Authors : Chunshien Li;
Page : 192-201
Keywords : Type-2 Fuzzy Set; Complex Fuzzy Set; Type-2 Complex Fuzzy Set; Modeling.;
Abstract
Fuzzy rationale has been developed to deal with imprecision in information that happens in the real world usually. L.A. Zadeh proposed the important concept of type-2 fuzzy sets 10 years after the inception of regular fuzzy sets that are also known as type-1 fuzzy sets. The former uses real-valued membership degree to describe set-element relationship, while the latter uses fuzzy set to do so. The movement from type-1 to type-2 fuzzy sets and logic is a very important research direction for fuzzy systems and applications. In the meanwhile, another critical direction is the research of complex fuzzy sets (CFSs) and logic to generalize membership description to complex-valued degrees so that membership can be widely enriched in the complex plane. A CFS is also called type-1 CFS. In this paper, an interval type-2 complex-fuzzy inferential system is proposed, using interval type-2 complex fuzzy sets (IT2-CFS), each of which is newly synthesized by two type-1 CFSs. For optimization, a hybrid-learning method called the PSO-KFA method is used to equip with a selflearning ability for the proposed system. Through experimental results of function approximation, the proposed approach has shown promising result and performance.
Other Latest Articles
- Network Analysis of Patent Infringement Lawsuits in Pharmaceutical Industry
- Image Enhancement of X-ray Bone Images Using Modified Local Histogram Equalization
- Multiscale Image Representation and Texture Extraction in Curvelet Framework
- Improve the Recognition Rate of Facial Expressions by Normalized Facial Features of Different Personal Face and Photo Sizes
- Meaningful Object Extraction for Booking Website
Last modified: 2015-08-10 22:21:09