Zhong Xu, Duckham Matt, Chong Derek, Tolhurst Kevin
Department of Infrastructure Engineering, University of Melbourne, Parkville, Victoria, 3010, Australia.
School of Mathematical and Geospatial Sciences, RMIT University, Victoria 3001, Australia.
Sci Rep. 2016 Apr 11;6:24206. doi: 10.1038/srep24206.
Real-time information about the spatial extents of evolving natural disasters, such as wildfire or flood perimeters, can assist both emergency responders and the general public during an emergency. However, authoritative information sources can suffer from bottlenecks and delays, while user-generated social media data usually lacks the necessary structure and trustworthiness for reliable automated processing. This paper describes and evaluates an automated technique for real-time tracking of wildfire perimeters based on publicly available "curated" crowdsourced data about telephone calls to the emergency services. Our technique is based on established data mining tools, and can be adjusted using a small number of intuitive parameters. Experiments using data from the devastating Black Saturday wildfires (2009) in Victoria, Australia, demonstrate the potential for the technique to detect and track wildfire perimeters automatically, in real time, and with moderate accuracy. Accuracy can be further increased through combination with other authoritative demographic and environmental information, such as population density and dynamic wind fields. These results are also independently validated against data from the more recent 2014 Mickleham-Dalrymple wildfires.
有关不断演变的自然灾害(如野火或洪水边界)空间范围的实时信息,在紧急情况期间可帮助应急响应人员和普通公众。然而,权威信息源可能会出现瓶颈和延迟,而用户生成的社交媒体数据通常缺乏可靠自动处理所需的必要结构和可信度。本文描述并评估了一种基于公开可用的“整理过的”众包数据(关于拨打紧急服务电话的信息)来实时跟踪野火边界的自动化技术。我们的技术基于既定的数据挖掘工具,并且可以使用少量直观的参数进行调整。使用来自澳大利亚维多利亚州毁灭性的黑色星期六野火(2009年)的数据进行的实验表明,该技术有潜力自动、实时且以适度的准确性检测和跟踪野火边界。通过与其他权威的人口统计和环境信息(如人口密度和动态风场)相结合,准确性可以进一步提高。这些结果也通过来自更近的2014年米克尔汉姆 - 达尔林普尔野火的数据进行了独立验证。