Accuracy Enhancement in a Fuzzy Expert Decision Making System Through Appropriate Determination of Membership Functions and Its Application in a Medical Diagnostic Decision Making System

被引:0
作者
Suddhasattwa Das
Shubhajit Roy Chowdhury
Hiranmay Saha
机构
[1] IIT Kharagpur,Department of Electrical Engineering
[2] IIIT Hyderabad,Centre for VLSI Design and Embedded Systems
[3] Bengal Engineering and Science University,Centre of Excellence for Green Energy and Sensor Systems
来源
Journal of Medical Systems | 2012年 / 36卷
关键词
Fuzzy systems; Type-2 fuzzy sets; Expert system; Medical diagnosis;
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中图分类号
学科分类号
摘要
The paper attempts to improve the accuracy of a fuzzy expert decision making system by tuning the parameters of type-2 sigmoid membership functions of fuzzy input variables and hence determining the most appropriate type-1 membership function. The current work mathematically models the variability of human decision making process using type-2 fuzzy sets. Moreover, an index of accuracy of a fuzzy expert system has been proposed and determined analytically. It has also been ascertained that there exists only one rule in the rule base whose associated mapping for the ith linguistic variable maps to the same value as the maximum value of the membership function for the ith linguistic variable. The improvement in decision making accuracy was successfully verified in a medical diagnostic decision making system for renal diagnostic applications. Based on the accuracy estimations applied over a set of pathophysiological parameters, viz. body mass index, glucose, urea, creatinine, systolic and diastolic blood pressure, appropriate type-1 fuzzy sets of these parameters have been determined assuming normal distribution of type-1 membership function values in type-2 fuzzy sets. The type-1 fuzzy sets so determined have been used to develop an FPGA based smart processor. Using the processor, renal diagnosis of patients has been performed with an accuracy of 98.75%.
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页码:1607 / 1620
页数:13
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