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Emergency flood detection using multiple information sources: Integrated analysis of natural hazard monitoring and social media data

机译:使用多个信息来源的紧急洪水检测:自然危险监测和社交媒体数据的综合分析

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Extreme weather events are occurring more frequently as a result of climate change. In October 2019, eastern Japan was hit by Hagibis, a large and high-speed typhoon. This unprecedented typhoon caused the evacuation of over 4000 people, injured more than 300 people, and damaged more than 98,000 dwellings throughout the affected area. Because floods are one of the most devastating natural disasters in Asia, providing an effective early warning system (EWS) is critical to reducing disaster impacts. However, warnings based only on natural hazard monitoring do not offer sufficient protection. Integrating natural hazard monitoring and social media data could improve warning systems to enhance the awareness of disaster managers and citizens about emergency events. We analyzed time-series data including rainfall intensity, 90-min-effective rainfall, and river water level as well as Twitter data related to disaster events during the 5-day period from 11 to 15 October, focusing on the most affected areas in Japan. The analysis included more than 60,000 tweets. Our analysis confirmed the utility of the statistical approach of outbreak detection with social media data in the early detection and local identification of multiple-flood events, and the results from the municipality-level analyses show that tweet frequencies related to the flood disaster ontological categories were significantly correlated to temporal variations in the hazard monitoring data. Thus, flood detection at the administrative level using social media data combined with current hazard monitoring data can enable a decision-driven EWS design. Interactive approaches for decision-making and knowledge production should continue to be considered in the face of climate-change-induced disasters.
机译:由于气候变化,极端天气事件发生得更频繁。 2019年10月,日本东部受到赫尼比斯的击中,大型和高速台风。这个前所未有的台风造成超过4000人的疏散,受伤了300多人,损坏了98,000多个受影响地区的住宅。由于洪水是亚洲最具破坏性的自然灾害之一,因此提供有效的预警系统(EWS)对减少灾害影响至关重要。但是,仅基于自然灾害监测的警告不提供足够的保护。整合自然灾害监测和社交媒体数据可以改善警告系统,以提高灾难管理者和公民关于紧急事件的认识。我们分析了时序数据,包括降雨强度,90分钟的降雨和河水水平以及10月11日至15日期间与灾难事件相关的推特数据,重点关注日本受影响最大的地区。分析包括超过60,000名推文。我们的分析证实了爆发检测统计方法与社交媒体数据在早期检测和本地识别多洪水事件中的效用,以及市政层面分析的结果表明,与洪水灾害本体类别相关的推文频率是与危险监测数据的时间变化显着相关。因此,使用社交媒体数据与当前危险监控数据相结合的洪水检测可以实现决策驱动的EWS设计。在气候变化造成的灾难面前,应继续考虑决策和知识生产的互动方法。

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