Post-hazard reconnaissance for natural disasters (e.g., earthquakes) is important for understanding the performance of the built environment, speeding up the recovery, enhancing resilience and making informed decisions related to current and future hazards. Natural language processing (NLP) is used in this study for the purposes of increasing the accuracy and efficiency of natural hazard reconnaissance through automation. The study particularly focuses on (1) automated data (news and social media) collection hosted by the Pacific Earthquake Engineering Research (PEER) Center server, (2) automatic generation of reconnaissance reports, and (3) use of social media to extract post-hazard information such as the recovery time. Obtained results are encouraging for further development and wider usage of various NLP methods in natural hazard reconnaissance.
翻译:对自然灾害(例如地震)进行灾害后侦察,对于了解建筑环境的性能、加快恢复速度、提高复原力和作出与当前和今后灾害有关的知情决定十分重要。本研究使用自然语言处理(NLP),目的是通过自动化提高自然灾害侦察的准确性和效率。这项研究特别侧重于(1)太平洋地震工程研究中心(PEER)中心服务器主办的自动化数据(新闻和社交媒体)收集工作;(2)自动生成调查报告;(3)利用社会媒体提取灾害后信息,如恢复时间。取得的结果鼓励进一步发展和扩大使用各种NLP方法进行自然灾害侦察。