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研究生: 詹皓詠
Hao-Yung Chan
論文名稱: 建構輔助災害應變決策之對話系統
Towards a Decision Support Conversational Agent for Disaster Response
指導教授: 蔡孟涵
Meng-Han Tsai
口試委員: 周瑞生
蘇文瑞
蔡芸琤
沈恆光
學位類別: 博士
Doctor
系所名稱: 工程學院 - 營建工程系
Department of Civil and Construction Engineering
論文出版年: 2022
畢業學年度: 110
語文別: 英文
論文頁數: 90
中文關鍵詞: 災害管理災害應變決策輔助對話系統問答系統示警通知軟體開發案例研究資訊傳播情報蒐集
外文關鍵詞: disaster risk reduction, disaster response, decision support, conversational agent, question answering, alert notification, software development, case study, information dissemination, intelligence gathering
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指導教授推薦書 i 博士學位考試委員審定書 ii 致謝 iii 摘要 iv Abstract v Table of Contents vi List of Figures ix List of Tables x 1 Introduction 1 2 Literature Review 5 2.1 Decision Support System for Disaster Management 6 2.2 Hazard Alert and Warning 7 2.3 Conversational Agent for Common Needs 9 2.4 Conversational Agent in Disaster Risk Reduction 11 2.5 Challenges 13 3 Objectives 16 4 Methodology 17 5 Data Inventory 22 5.1 Taxonomy of Provider's Role 22 5.2 Directions of Inventory 23 6 Decision Rich Information Profile 26 6.1 Entry Profile 27 6.2 Adapter 29 6.3 Supplementary Profiles 31 7 Rich Notification Architecture 32 7.1 Event Producer 35 7.2 Event Stream 36 7.3 Message Processor 37 8 Case Studies 39 8.1 Water Resources Agency 39 8.1.1 Data Inventory 41 8.1.2 Decision Rich Information Profile (DRIP) 42 8.1.3 Rich Notification Architecture (RNA) 45 8.1.4 Result of Application 47 8.2 Bureau of Mines 50 8.2.1 Data Inventory 52 8.2.2 Decision Rich Information Profile (DRIP) 53 8.2.3 Rich Notification Architecture (RNA) 55 8.2.4 Result of Application 58 9 Discussions 60 9.1 Contribution 60 9.2 Benefits of Adopting Conversational Agents 62 9.3 Limitations and Challenges 63 9.4 Future Work 65 10 Conclusions 67 References 69

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