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研究生: Nurul Fajrin Ariyani
Nurul - Fajrin Ariyani
論文名稱: Building A Domain Ontology for Disaster and Emergency Information Management
Building A Domain Ontology for Disaster and Emergency Information Management
指導教授: 李漢銘
Hahn-Ming Lee
莊庭瑞
Tyng-Ruey Chuang
口試委員: Jan-Ming Ho
Jan-Ming Ho
Wei-Chung Teng
Wei-Chung Teng
Tien-Ruey Hsiang
Tien-Ruey Hsiang
學位類別: 碩士
Master
系所名稱: 電資學院 - 資訊工程系
Department of Computer Science and Information Engineering
論文出版年: 2012
畢業學年度: 100
語文別: 英文
論文頁數: 78
中文關鍵詞: ontologySUMOsemantic web
外文關鍵詞: ontology, SUMO, semantic web
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In the early response phase after the disaster happens, most responders need to find integrated and relevant information to make decision. In this case, finding suitable information in the open crowdsourcing environments is a complex task, since it involves many actors and a large amount of unstructured and heterogeneous spatial data. While quite significant progress on providing system and standardizing syntax heterogeneity of data has been made, semantic issues are still insufficiently addressed. Using ontological approach to represent information in disaster and emergency management can resolve this semantic heterogeneity problem. However, to the best of our knowledge, there is no formal vocabulary or ontology in existence that specifically allow victims to describe incident information in their nature language.
In this thesis, we build a domain ontology model for disaster and emergency information management which is able to capture descriptive spatial information about incidents and reasons them to get more valuable information that mostly needed by disaster responders. On the other hand, we also consider the possibility of integrating our ontology model with the other systems. In order to aim for these two objectives, we propose a methodology to implement hybrid ontological architecture by engaging SUMO (Suggested Upper Merged Ontology); we later complement it with knowledge-based representation that is capable of processing information depending on its content. Building on the result of our proposed ontology implementation, we create several experimental scenarios for information retrieval using our system.


In the early response phase after the disaster happens, most responders need to find integrated and relevant information to make decision. In this case, finding suitable information in the open crowdsourcing environments is a complex task, since it involves many actors and a large amount of unstructured and heterogeneous spatial data. While quite significant progress on providing system and standardizing syntax heterogeneity of data has been made, semantic issues are still insufficiently addressed. Using ontological approach to represent information in disaster and emergency management can resolve this semantic heterogeneity problem. However, to the best of our knowledge, there is no formal vocabulary or ontology in existence that specifically allow victims to describe incident information in their nature language.
In this thesis, we build a domain ontology model for disaster and emergency information management which is able to capture descriptive spatial information about incidents and reasons them to get more valuable information that mostly needed by disaster responders. On the other hand, we also consider the possibility of integrating our ontology model with the other systems. In order to aim for these two objectives, we propose a methodology to implement hybrid ontological architecture by engaging SUMO (Suggested Upper Merged Ontology); we later complement it with knowledge-based representation that is capable of processing information depending on its content. Building on the result of our proposed ontology implementation, we create several experimental scenarios for information retrieval using our system.

ABSTRACT.i ACKNOWLEDGMENTSii CONTENT………….iii LIST OF FIGURESvi LIST OF TABLESviii CHAPTER 1. INTRODUCTION1 1.1Motivation1 1.2Thesis Organization4 CHAPTER 2. PRELIMINARIES5 2.1Ontology5 2.1.1Elements of ontology6 2.1.2Ontologies Approaches8 2.2XML, OWL 2, and Reasoner9 2.3SUMO11 2.4Related Work14 2.4.1Ushahidi Project14 2.4.2Disaster Ontology15 2.5Summary20 CHAPTER 3. METHODOLOGY22 3.1Case Study22 3.2Ontology Building23 3.2.1Ontology Capture23 3.2.2Ontology Coding37 3.3Encoding of Information39 3.4Concepts and Relationship Refinement43 3.4.1Event – Time Concepts Refinement44 3.4.2Event – Object Concepts Refinement46 3.4.3Event – Location Concepts Refinement48 3.4.4Spatial Relationships52 3.4.5Temporal Relationships53 3.4.6Causal Relationships54 3.5System Architecture55 3.5.1Geo-reference Finding58 CHAPTER 4. EVALUATION61 4.1Data Preparation61 4.2Scenario 1: Insert a new report about incident63 4.3Scenario 2: List events based on its type and inferred location64 4.4Scenario 3: Find available hospital nearby65 4.5Integrate DEIM Ontology with Wang’s work66 4.6Operating Environment67 CHAPTER 5. CONCLUSION AND FUTURE WORK68 5.1Conclusion68 5.2Future Work68 REFERENCES69

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