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Rapid Disaster Data Dissemination and Vulnerability Assessment through Synthesis of a Web-Based Extreme Event Viewer and Deep Learning

机译:通过基于Web的极端事件查看器和深度学习的综合来快速进行灾难数据分发和漏洞评估

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摘要

Infrastructure vulnerability has drawn significant attention in recent years, partly because of the occurrence of low-probability and high-consequence disruptive events such as 2017 hurricanes Harvey, Irma, and Maria, 2011 Tuscaloosa and Joplin tornadoes, and 2015 Gorkha, Nepal, and 2017 Central Mexico earthquakes. Civil infrastructure systems support social welfare, thus viability and sustained operation is critical. A variety of frameworks, models, and tools exist for advancing infrastructure vulnerability research. Nevertheless, providing accurate vulnerability measurement remains challenging. This paper presents a state-of-the-art data collection and information extraction methodology to document infrastructure at high granularity to assess preevent vulnerability and postevent damage in the face of disasters. The methods establish a baseline of preevent infrastructure functionality that can be used to measure impacts and temporal recovery following a disaster. The Extreme Events Web Viewer (EEWV) presented as part of the methodology is a GIS-based web repository storing spatial and temporal data describing communities before and after disasters and facilitating data analysis techniques. This web platform can store multiple geolocated data formats including photographs and 360 degrees videos. A tool for automated extraction of photography from 360 degrees video data at locations of interest specified in the EEWV was created to streamline data utility. The extracted imagery provides a manageable data set to efficiently document characteristics of the built and natural environment. The methodology was tested to locate buildings vulnerable to flood and storm surge on Dauphin Island, Alabama. Approximately 1,950 buildings were passively documented with vehicle-mounted 360 degrees video. Extracted building images were used to train a deep learning neural network to predict whether a building was elevated or nonelevated. The model was validated, and methods for iterative neural network training are described. The methodology, from rapidly collecting large passive datasets, storing the data in an open repository, extracting manageable datasets, and obtaining information from data through deep learning, will facilitate vulnerability and postdisaster analyses as well as longitudinal recovery measurement.
机译:近年来,基础设施漏洞引起了广泛关注,部分原因是发生了低概率和高后果的破坏性事件,例如2017年的哈维,艾尔玛和玛丽亚飓风,2011年的塔斯卡卢萨和乔普林龙卷风以及2015年的尼泊尔戈尔卡和2017年中部墨西哥地震。民用基础设施系统支持社会福利,因此生存能力和持续运营至关重要。存在各种用于推进基础设施漏洞研究的框架,模型和工具。尽管如此,提供准确的漏洞度量仍然具有挑战性。本文提出了最新的数据收集和信息提取方法,以高粒度记录基础架构,以评估面对灾难时的事前脆弱性和事后破坏。这些方法建立了事件前基础架构功能的基准,可用于衡量灾难后的影响和临时恢复。作为该方法的一部分提供的极端事件Web查看器(EEWV)是基于GIS的Web存储库,用于存储描述灾害前后社区的时空数据,并有助于数据分析技术。该网络平台可以存储多种地理位置数据格式,包括照片和360度视频。创建了一种工具,用于从EEWV中指定的感兴趣位置的360度视频数据中自动提取摄影的工具,以简化数据实用程序。提取的图像提供了可管理的数据集,可以有效地记录建筑环境和自然环境的特征。测试了该方法,以找出容易遭受洪水和风暴潮袭击的阿拉巴马州多芬岛的建筑物。大约1,950座建筑物通过车载360度视频进行了被动记录。提取的建筑物图像用于训练深度学习神经网络,以预测建筑物是高架还是不高架。验证了模型,并描述了用于迭代神经网络训练的方法。该方法从迅速收集大型被动数据集,将数据存储在开放的存储库中,提取可管理的数据集以及通过深度学习从数据中获取信息,将有助于进行脆弱性和灾后分析以及纵向恢复测量。

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  • 来源
    《Advances in civil engineering》 |2018年第10期|7258156.1-7258156.13|共13页
  • 作者单位

    Univ Alabama, Dept Civil Construct & Environm Engn, Tuscaloosa, AL 35401 USA;

    Univ Alabama, Dept Civil Construct & Environm Engn, Tuscaloosa, AL 35401 USA;

    Univ Alabama, Dept Civil Construct & Environm Engn, Tuscaloosa, AL 35401 USA;

    Univ Alabama, Dept Civil Construct & Environm Engn, Tuscaloosa, AL 35401 USA;

    Univ Alabama, Dept Civil Construct & Environm Engn, Tuscaloosa, AL 35401 USA;

    Univ Alabama, Alabama Ctr Insurance Informat & Res, Tuscaloosa, AL 35401 USA;

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