Development of an enhanced adaptive resonance theory mapping system for watershed classification

Thesis (M.Eng.)--Memorial University of Newfoundland, 2009. Engineering and Appliced Science Includes bibliographical references (leaves 127-138) Watershed classification is a process that classifies watershed sub-basins into certain groups due to similarities and/or differences in their characteris...

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Main Author: Li, Pu, 1982-
Other Authors: Memorial University of Newfoundland. Faculty of Engineering and Appliced Science
Format: Thesis
Language:English
Published: 2009
Subjects:
Online Access:http://collections.mun.ca/cdm/ref/collection/theses4/id/47647
id ftmemorialunivdc:oai:collections.mun.ca:theses4/47647
record_format openpolar
institution Open Polar
collection Memorial University of Newfoundland: Digital Archives Initiative (DAI)
op_collection_id ftmemorialunivdc
language English
topic Watershed management--Mathematical models
Watersheds--Classification
spellingShingle Watershed management--Mathematical models
Watersheds--Classification
Li, Pu, 1982-
Development of an enhanced adaptive resonance theory mapping system for watershed classification
topic_facet Watershed management--Mathematical models
Watersheds--Classification
description Thesis (M.Eng.)--Memorial University of Newfoundland, 2009. Engineering and Appliced Science Includes bibliographical references (leaves 127-138) Watershed classification is a process that classifies watershed sub-basins into certain groups due to similarities and/or differences in their characteristics. Such a process is of necessity and importance to support the decision making and practice of watershed monitoring, modeling, and management and helps in reducing the set up and running cost and improving efficiency. A watershed system is usually characterized by a large variety of topographical, hydrological, and ecological features, which provides the basis for watershed classification and also makes it a challenging task. Furthermore, many of the features and their interrelationships are hardly measured or quantified accurately due to the complexity and uncertainty of the system. Numerous studies have been conducted on watershed classification but the comprehensive consideration of both systematic complexity and uncertainty in the classification process is lacking. There is a need of more efficient and reliable approaches of watershed classification to deal with complex and uncertain features. -- This research aims to fill the gap by developing a novel classification system based on the enhanced adaptive resonance theory (ART) mapping approaches to classify complex watershed features under uncertainty for supporting watershed modeling and management. The developed system is composed of: (1) a two-stage adaptive resonance theory mapping (TSAM) approach by integrating multitier ART into the system to form an unsupervised learning module for cluster centroid calculation and a supervised learning module for normalized original input classification; and (2) an integrated rule-based fuzzy adaptive resonance theory mapping (IRFAM) approach by incorporating fuzzy set theory and rule-based operation to the system to form an unsupervised learning module for cluster centroid calculation and two supervised learning modules for criteria combination and fuzzified input classification. -- To test the feasibility and efficiency, the developed system was applied to a real-world case study in the Deer River watershed, Canada. The results indicated that the watershed sub-basins were properly classified into preset target groups by both approaches in the given conditions (e.g., vigilance = 0.7). The TSAM approach could efficiently solve the problem of difficulties in criteria generation by using ART unsupervised classification and centriod determination in the first stage and feed the criteria to the ARTMap supervised classification in the second stage. In comparison with the TSAM, the IRFAM approach could take advantages of fuzzy set theory to generate full criteria combinations to match the input patterns and use the rule-based operation to screen the matched patterns into the target groups. This can efficiently handle the classification for the input patterns with a high degree of uncertainty and wide ranges of variations. In the case that there are not sufficient information for generating fuzzy membership functions, the TSAM could be a better choice than the IRFAM from a feasibility perspective; otherwise, the IRFAM could provide more accurate classification results than the TSAM.
author2 Memorial University of Newfoundland. Faculty of Engineering and Appliced Science
format Thesis
author Li, Pu, 1982-
author_facet Li, Pu, 1982-
author_sort Li, Pu, 1982-
title Development of an enhanced adaptive resonance theory mapping system for watershed classification
title_short Development of an enhanced adaptive resonance theory mapping system for watershed classification
title_full Development of an enhanced adaptive resonance theory mapping system for watershed classification
title_fullStr Development of an enhanced adaptive resonance theory mapping system for watershed classification
title_full_unstemmed Development of an enhanced adaptive resonance theory mapping system for watershed classification
title_sort development of an enhanced adaptive resonance theory mapping system for watershed classification
publishDate 2009
url http://collections.mun.ca/cdm/ref/collection/theses4/id/47647
long_lat ENVELOPE(161.983,161.983,-78.000,-78.000)
geographic Canada
Handle The
geographic_facet Canada
Handle The
genre Newfoundland studies
University of Newfoundland
genre_facet Newfoundland studies
University of Newfoundland
op_source Paper copy kept in the Centre for Newfoundland Studies, Memorial University Libraries
op_relation Electronic Theses and Dissertations
(13.30 MB) -- http://collections.mun.ca/PDFs/theses/Li_Pu.pdf
a3242032
http://collections.mun.ca/cdm/ref/collection/theses4/id/47647
op_rights The author retains copyright ownership and moral rights in this thesis. Neither the thesis nor substantial extracts from it may be printed or otherwise reproduced without the author's permission.
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spelling ftmemorialunivdc:oai:collections.mun.ca:theses4/47647 2023-05-15T17:23:33+02:00 Development of an enhanced adaptive resonance theory mapping system for watershed classification Li, Pu, 1982- Memorial University of Newfoundland. Faculty of Engineering and Appliced Science 2009 xiv, 138 leaves : col. ill., maps Image/jpeg; Application/pdf http://collections.mun.ca/cdm/ref/collection/theses4/id/47647 Eng eng Electronic Theses and Dissertations (13.30 MB) -- http://collections.mun.ca/PDFs/theses/Li_Pu.pdf a3242032 http://collections.mun.ca/cdm/ref/collection/theses4/id/47647 The author retains copyright ownership and moral rights in this thesis. Neither the thesis nor substantial extracts from it may be printed or otherwise reproduced without the author's permission. Paper copy kept in the Centre for Newfoundland Studies, Memorial University Libraries Watershed management--Mathematical models Watersheds--Classification Text Electronic thesis or dissertation 2009 ftmemorialunivdc 2015-08-06T19:21:57Z Thesis (M.Eng.)--Memorial University of Newfoundland, 2009. Engineering and Appliced Science Includes bibliographical references (leaves 127-138) Watershed classification is a process that classifies watershed sub-basins into certain groups due to similarities and/or differences in their characteristics. Such a process is of necessity and importance to support the decision making and practice of watershed monitoring, modeling, and management and helps in reducing the set up and running cost and improving efficiency. A watershed system is usually characterized by a large variety of topographical, hydrological, and ecological features, which provides the basis for watershed classification and also makes it a challenging task. Furthermore, many of the features and their interrelationships are hardly measured or quantified accurately due to the complexity and uncertainty of the system. Numerous studies have been conducted on watershed classification but the comprehensive consideration of both systematic complexity and uncertainty in the classification process is lacking. There is a need of more efficient and reliable approaches of watershed classification to deal with complex and uncertain features. -- This research aims to fill the gap by developing a novel classification system based on the enhanced adaptive resonance theory (ART) mapping approaches to classify complex watershed features under uncertainty for supporting watershed modeling and management. The developed system is composed of: (1) a two-stage adaptive resonance theory mapping (TSAM) approach by integrating multitier ART into the system to form an unsupervised learning module for cluster centroid calculation and a supervised learning module for normalized original input classification; and (2) an integrated rule-based fuzzy adaptive resonance theory mapping (IRFAM) approach by incorporating fuzzy set theory and rule-based operation to the system to form an unsupervised learning module for cluster centroid calculation and two supervised learning modules for criteria combination and fuzzified input classification. -- To test the feasibility and efficiency, the developed system was applied to a real-world case study in the Deer River watershed, Canada. The results indicated that the watershed sub-basins were properly classified into preset target groups by both approaches in the given conditions (e.g., vigilance = 0.7). The TSAM approach could efficiently solve the problem of difficulties in criteria generation by using ART unsupervised classification and centriod determination in the first stage and feed the criteria to the ARTMap supervised classification in the second stage. In comparison with the TSAM, the IRFAM approach could take advantages of fuzzy set theory to generate full criteria combinations to match the input patterns and use the rule-based operation to screen the matched patterns into the target groups. This can efficiently handle the classification for the input patterns with a high degree of uncertainty and wide ranges of variations. In the case that there are not sufficient information for generating fuzzy membership functions, the TSAM could be a better choice than the IRFAM from a feasibility perspective; otherwise, the IRFAM could provide more accurate classification results than the TSAM. Thesis Newfoundland studies University of Newfoundland Memorial University of Newfoundland: Digital Archives Initiative (DAI) Canada Handle The ENVELOPE(161.983,161.983,-78.000,-78.000)