Applying Information Retrieval on the Development of Construction Safety Domain Ontology

博士 === 國立臺灣大學 === 土木工程學研究所 === 100 === Construction industry has higher potential on occupational hazard than other industries do. To prevent from the fatalities and injuries occurred in construction project, Job Hazard Analysis (JHA) is a possible approach. It identifies all the activities in a con...

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Main Authors: Nai-Wen Chi, 紀乃文
Other Authors: Shang-Hsien Hsieh
Format: Others
Language:zh-TW
Published: 2012
Online Access:http://ndltd.ncl.edu.tw/handle/63977220418774972997
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spelling ndltd-TW-100NTU050151712015-10-13T21:50:19Z http://ndltd.ncl.edu.tw/handle/63977220418774972997 Applying Information Retrieval on the Development of Construction Safety Domain Ontology 應用資訊檢索於營建工程安全領域知識本體之建置 Nai-Wen Chi 紀乃文 博士 國立臺灣大學 土木工程學研究所 100 Construction industry has higher potential on occupational hazard than other industries do. To prevent from the fatalities and injuries occurred in construction project, Job Hazard Analysis (JHA) is a possible approach. It identifies all the activities in a construction project, recognizes the potential hazards behind each activity, then recommends possible safety approaches to eliminate the potential hazards. In order to assist JHA, this research proposes a semi-automated approach to develop a construction safety domain ontology which is based on Information Retrieval (IR) and automatic document classification techniques. Different from similar research, this research adopts more general text resources to develop the ontology. In the first step, this research collects three different types of documents which can provide references to JHA. The three types of construction safety documents are: (1) JHA documents which contains activities, hazards and safety approaches (2) fatality case reports (3) construction safety standards. In the second step, this research performs Machine Learning techniques over the JHA documents to find the best strategies for optimizing the effectiveness of automatic document classification. In the third step, the strategies are combined with Information Retrieval (IR) techniques and then applied to the automatic classification of fatality case reports. By these procedures, this research shows how to develop the construction safety domain ontology step by step. The conclusion is that although the effectiveness of integrating the different types of construction safety documents still has room for improvement, this research discusses the possible reasons behind the insufficient effectiveness and also provides several suggestions to improve the effectiveness. Moreover, the document classifying strategies this research suggests still achieve good effectiveness within JHA documents, meaning that it still has contributions to Job Hazard Analysis. Shang-Hsien Hsieh 謝尚賢 2012 學位論文 ; thesis 148 zh-TW
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description 博士 === 國立臺灣大學 === 土木工程學研究所 === 100 === Construction industry has higher potential on occupational hazard than other industries do. To prevent from the fatalities and injuries occurred in construction project, Job Hazard Analysis (JHA) is a possible approach. It identifies all the activities in a construction project, recognizes the potential hazards behind each activity, then recommends possible safety approaches to eliminate the potential hazards. In order to assist JHA, this research proposes a semi-automated approach to develop a construction safety domain ontology which is based on Information Retrieval (IR) and automatic document classification techniques. Different from similar research, this research adopts more general text resources to develop the ontology. In the first step, this research collects three different types of documents which can provide references to JHA. The three types of construction safety documents are: (1) JHA documents which contains activities, hazards and safety approaches (2) fatality case reports (3) construction safety standards. In the second step, this research performs Machine Learning techniques over the JHA documents to find the best strategies for optimizing the effectiveness of automatic document classification. In the third step, the strategies are combined with Information Retrieval (IR) techniques and then applied to the automatic classification of fatality case reports. By these procedures, this research shows how to develop the construction safety domain ontology step by step. The conclusion is that although the effectiveness of integrating the different types of construction safety documents still has room for improvement, this research discusses the possible reasons behind the insufficient effectiveness and also provides several suggestions to improve the effectiveness. Moreover, the document classifying strategies this research suggests still achieve good effectiveness within JHA documents, meaning that it still has contributions to Job Hazard Analysis.
author2 Shang-Hsien Hsieh
author_facet Shang-Hsien Hsieh
Nai-Wen Chi
紀乃文
author Nai-Wen Chi
紀乃文
spellingShingle Nai-Wen Chi
紀乃文
Applying Information Retrieval on the Development of Construction Safety Domain Ontology
author_sort Nai-Wen Chi
title Applying Information Retrieval on the Development of Construction Safety Domain Ontology
title_short Applying Information Retrieval on the Development of Construction Safety Domain Ontology
title_full Applying Information Retrieval on the Development of Construction Safety Domain Ontology
title_fullStr Applying Information Retrieval on the Development of Construction Safety Domain Ontology
title_full_unstemmed Applying Information Retrieval on the Development of Construction Safety Domain Ontology
title_sort applying information retrieval on the development of construction safety domain ontology
publishDate 2012
url http://ndltd.ncl.edu.tw/handle/63977220418774972997
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