Small-scale, large impact: utilizing machine learning to assess susceptibility to urban geological disasters—a case study of urban road collapses in Hangzhou

IF 3.7 2区 工程技术 Q3 ENGINEERING, ENVIRONMENTAL
Bofan Yu, Huaixue Xing, Jiaxing Yan, Yunan Li
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引用次数: 0

Abstract

Compared with large-scale geological disasters such as landslides and earthquakes, small-scale urban geological disasters such as collapses and ground fissures are often overlooked. However, the socioeconomic impacts of these small-scale events can often exceed those of larger disasters in major cities. Although the use of machine learning for susceptibility assessment is a well-established aspect of large-scale geological disaster prevention, insufficient disaster samples and resultant dataset imbalances have hindered its application to small-scale urban geological disasters. To address this issue, we propose a comprehensive process that involves defining disaster risk areas to expand disaster sample points, optimizing the extraction method for training and test sets to balance the dataset, and selecting models with high generalization capabilities to enhance prediction accuracy. By focusing on all urban road collapse incidents from 2015 to 2023 in Binjiang District, Hangzhou’s most economically developed areas, we demonstrated the reliability of this process. Furthermore, to support urban policymakers, we employed the SHAP model to demystify the predictive process and assess the impact of factors, providing reliable analytical results. Our approach provides a replicable and comprehensive solution for susceptibility assessments of cities impacted by small-scale geological disasters using machine learning and subsequent analyses.

小规模、大影响:利用机器学习评估城市地质灾害易发性--杭州城市道路塌陷案例研究
与滑坡和地震等大型地质灾害相比,崩塌和地裂缝等小型城市地质灾害往往被忽视。然而,这些小规模事件造成的社会经济影响往往超过大城市中的大型灾害。尽管使用机器学习进行易感性评估是大规模地质灾害预防的一个成熟方面,但灾害样本不足和由此导致的数据集不平衡阻碍了其在小规模城市地质灾害中的应用。针对这一问题,我们提出了一套完整的流程,包括确定灾害风险区域以扩大灾害样本点,优化训练集和测试集的提取方法以平衡数据集,以及选择具有高泛化能力的模型以提高预测精度。通过聚焦杭州经济最发达地区滨江区 2015 年至 2023 年的所有城市道路塌陷事件,我们证明了这一过程的可靠性。此外,为了支持城市决策者,我们采用了 SHAP 模型来揭开预测过程的神秘面纱并评估各种因素的影响,从而提供可靠的分析结果。我们的方法为利用机器学习和后续分析对受小型地质灾害影响的城市进行易感性评估提供了一个可复制的综合解决方案。
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来源期刊
Bulletin of Engineering Geology and the Environment
Bulletin of Engineering Geology and the Environment 工程技术-地球科学综合
CiteScore
7.10
自引率
11.90%
发文量
445
审稿时长
4.1 months
期刊介绍: Engineering geology is defined in the statutes of the IAEG as the science devoted to the investigation, study and solution of engineering and environmental problems which may arise as the result of the interaction between geology and the works or activities of man, as well as of the prediction of and development of measures for the prevention or remediation of geological hazards. Engineering geology embraces: • the applications/implications of the geomorphology, structural geology, and hydrogeological conditions of geological formations; • the characterisation of the mineralogical, physico-geomechanical, chemical and hydraulic properties of all earth materials involved in construction, resource recovery and environmental change; • the assessment of the mechanical and hydrological behaviour of soil and rock masses; • the prediction of changes to the above properties with time; • the determination of the parameters to be considered in the stability analysis of engineering works and earth masses.
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