FloodDamageCast: Building flood damage nowcasting with machine-learning and data augmentation

IF 4.2 1区 地球科学 Q1 GEOSCIENCES, MULTIDISCIPLINARY
Chia-Fu Liu , Lipai Huang , Kai Yin , Sam Brody , Ali Mostafavi
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引用次数: 0

Abstract

Near-real-time estimation of damages (a.k.a, damage nowcasting) to building and infrastructure is crucial during response and recovery efforts. Despite advancements in flood risk predictions, the majority of existing methods primarily focus on inundation estimation with limited damage nowcasting capabilities. Flooding damage nowcasting at fine spatial resolutions remains a very challenging problem with currently no existing model to perform the task. This limitation is mainly due to a number of technical challenges such as limited consideration of non-linear interactions between flood hazards and build-environment features, issues with imbalanced datasets, and the absence of reliable ground truth for model performance evaluation. To address this important gap, this study presents FloodDamageCast, a machine learning (ML) framework tailored for property flood damage nowcasting. The framework leverages heterogeneous data related to the built environment, topographic, and hydrological features to predict residential flood damage in a fine resolution of 500 m by 500 m in the context of Harris County, TX, during the 2017 Hurricane Harvey. To deal with data imbalance, FloodDamageCast includes a tabular data augmentation model based on Conditional Tabular Generative Adversarial Networks (CTGAN). The data augmentation model component addresses highly imbalanced class issues, where the majority class constitutes 96.4% of the dataset, potentially impairing model performance, By combining GAN-based data augmentation with an efficient ML model, Light Gradient-Boosting Machine (LightGBM), our results demonstrate the framework’s ability to identify high-damage spatial areas that would be overlooked by baseline models. the satisfactory performance of FloodDamageCast also shows its capability to be used for flood damage nowcasting at a fine spatial resolution to inform response and recovery efforts. The insights from flood damage nowcasting would help emergency management agencies and public officials to more efficiently identify repair needs and allocate resources, and also save time and efforts during on-the-ground inspections.
FloodDamageCast:利用机器学习和数据增强技术建立洪水灾害预报系统
在应对和恢复工作中,对建筑物和基础设施的损失进行近实时估算(又称损失预报)至关重要。尽管在洪水风险预测方面取得了进步,但现有的大多数方法主要侧重于淹没估计,而损害预报能力有限。精细空间分辨率下的洪水灾害预报仍然是一个极具挑战性的问题,目前还没有任何现有模型可以完成这项任务。造成这一局限性的主要原因是一系列技术挑战,如对洪水灾害与建筑环境特征之间的非线性相互作用考虑有限、数据集不平衡问题以及缺乏可靠的地面实况来评估模型性能。为了解决这一重要问题,本研究提出了 FloodDamageCast,这是一个专为财产洪灾损失预报量身定制的机器学习(ML)框架。该框架利用与建筑环境、地形和水文特征相关的异构数据,以德克萨斯州哈里斯县为背景,以 500 米乘 500 米的精细分辨率预测 2017 年 "哈维 "飓风期间的住宅洪灾损失。为解决数据不平衡问题,FloodDamageCast 包含一个基于条件表生成对抗网络 (CTGAN) 的表格式数据增强模型。通过将基于 GAN 的数据增强与高效 ML 模型 Light Gradient-Boosting Machine (LightGBM) 相结合,我们的结果表明该框架有能力识别基线模型会忽略的高损害空间区域。FloodDamageCast 的令人满意的性能还表明它有能力用于精细空间分辨率的洪水损害预报,为响应和恢复工作提供信息。洪水灾害预报的洞察力将帮助应急管理机构和政府官员更有效地确定修复需求和分配资源,并节省实地检查的时间和精力。
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来源期刊
International journal of disaster risk reduction
International journal of disaster risk reduction GEOSCIENCES, MULTIDISCIPLINARYMETEOROLOGY-METEOROLOGY & ATMOSPHERIC SCIENCES
CiteScore
8.70
自引率
18.00%
发文量
688
审稿时长
79 days
期刊介绍: The International Journal of Disaster Risk Reduction (IJDRR) is the journal for researchers, policymakers and practitioners across diverse disciplines: earth sciences and their implications; environmental sciences; engineering; urban studies; geography; and the social sciences. IJDRR publishes fundamental and applied research, critical reviews, policy papers and case studies with a particular focus on multi-disciplinary research that aims to reduce the impact of natural, technological, social and intentional disasters. IJDRR stimulates exchange of ideas and knowledge transfer on disaster research, mitigation, adaptation, prevention and risk reduction at all geographical scales: local, national and international. Key topics:- -multifaceted disaster and cascading disasters -the development of disaster risk reduction strategies and techniques -discussion and development of effective warning and educational systems for risk management at all levels -disasters associated with climate change -vulnerability analysis and vulnerability trends -emerging risks -resilience against disasters. The journal particularly encourages papers that approach risk from a multi-disciplinary perspective.
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