An adaptive fuzzy min-max conflict-resolving classifier

This paper describes a novel adaptive network, which agglomerates a procedure based on the fuzzy min-max clustering method, a supervised ART (Adaptive Resonance Theory) neural network, and a constructive conflict-resolving algorithm, for pattern classification. The proposed classifier is a fusion of...

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Main Authors: Tan, , Shing Chiang, Rao, , M. V. C.), Lim, , Chee Peng
Format: Article
Published: 2006
Subjects:
Online Access:http://shdl.mmu.edu.my/2028/
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author Tan, , Shing Chiang
Rao, , M. V. C.)
Lim, , Chee Peng
author_facet Tan, , Shing Chiang
Rao, , M. V. C.)
Lim, , Chee Peng
author_sort Tan, , Shing Chiang
building MMU Institutional Repository
collection Online Access
description This paper describes a novel adaptive network, which agglomerates a procedure based on the fuzzy min-max clustering method, a supervised ART (Adaptive Resonance Theory) neural network, and a constructive conflict-resolving algorithm, for pattern classification. The proposed classifier is a fusion of the ordering algorithm, Fuzzy ARTMAP (FAM) and the Dynamic Decay Adjustment (DDA) algorithm. The network, called Ordered FAMDDA, inherits the benefits of the trio, viz. an ability to identify a fixed order of training pattern presentation for good generalisation; stable and incrementally leaming architecture; and dynamic width adjustment of the weights of hidden nodes of conflicting classes. Classification performance of the Ordered FAMDDA is assessed using two benchmark datasets. The performances are analysed and compared with those from FAM and Ordered FAM. The results indicate that the Ordered FAMDDA classifier performs at least as good as the mentioned networks. The proposed Ordered FAMDDA network is then applied to a condition monitoring problem in a power generation station. The process under scrutiny is the Circulating Water (CW) system, with prime attention to condition monitoring of the heat transfer efficiency of the condensers. The results and their implications are analysed and discussed.
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spelling mmu-20282011-08-10T06:56:04Z http://shdl.mmu.edu.my/2028/ An adaptive fuzzy min-max conflict-resolving classifier Tan, , Shing Chiang Rao, , M. V. C.) Lim, , Chee Peng QA75.5-76.95 Electronic computers. Computer science This paper describes a novel adaptive network, which agglomerates a procedure based on the fuzzy min-max clustering method, a supervised ART (Adaptive Resonance Theory) neural network, and a constructive conflict-resolving algorithm, for pattern classification. The proposed classifier is a fusion of the ordering algorithm, Fuzzy ARTMAP (FAM) and the Dynamic Decay Adjustment (DDA) algorithm. The network, called Ordered FAMDDA, inherits the benefits of the trio, viz. an ability to identify a fixed order of training pattern presentation for good generalisation; stable and incrementally leaming architecture; and dynamic width adjustment of the weights of hidden nodes of conflicting classes. Classification performance of the Ordered FAMDDA is assessed using two benchmark datasets. The performances are analysed and compared with those from FAM and Ordered FAM. The results indicate that the Ordered FAMDDA classifier performs at least as good as the mentioned networks. The proposed Ordered FAMDDA network is then applied to a condition monitoring problem in a power generation station. The process under scrutiny is the Circulating Water (CW) system, with prime attention to condition monitoring of the heat transfer efficiency of the condensers. The results and their implications are analysed and discussed. 2006 Article NonPeerReviewed Tan, , Shing Chiang and Rao, , M. V. C.) and Lim, , Chee Peng (2006) An adaptive fuzzy min-max conflict-resolving classifier. APPLIED SOFT COMPUTING TECHNOLOGIES: THE CHALLENGE OF COMPLEXITY , 34. pp. 65-76. ISSN 1615-3871
spellingShingle QA75.5-76.95 Electronic computers. Computer science
Tan, , Shing Chiang
Rao, , M. V. C.)
Lim, , Chee Peng
An adaptive fuzzy min-max conflict-resolving classifier
title An adaptive fuzzy min-max conflict-resolving classifier
title_full An adaptive fuzzy min-max conflict-resolving classifier
title_fullStr An adaptive fuzzy min-max conflict-resolving classifier
title_full_unstemmed An adaptive fuzzy min-max conflict-resolving classifier
title_short An adaptive fuzzy min-max conflict-resolving classifier
title_sort adaptive fuzzy min-max conflict-resolving classifier
topic QA75.5-76.95 Electronic computers. Computer science
url http://shdl.mmu.edu.my/2028/