2015年尼泊尔地震脆弱性评估新框架

R. Ranjan, S. Pasari, Sonu Devi, H. Verma
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引用次数: 0

摘要

2015年4月25日,尼泊尔发生里氏7.8级特大地震,造成约9000人死亡,22000多人受伤。灾难发生后,在尼泊尔进行了广泛的实地研究和检查,以确定受地震影响的结构的损坏程度。由于该地区的结构和建筑物种类繁多,地震后的调查程序变得极其困难。然而,事先了解建筑物的描述可以帮助确定大型事件可能造成的损害程度。鉴于此,本研究旨在利用几个参数,如楼层数、建筑材料、房屋类型(公共或私人)和建筑年龄,为建筑脆弱性评估提供一个有效的公式。为此,研究人员使用了一个庞大的数据集,其中包含约35万幢建筑的39个变量的建筑信息。实现了六种机器学习方法,即逻辑回归、决策树分类器、k近邻、线性判别分析、随机森林和极端梯度增强算法。基于分数,发现评分提升算法是最合适的算法。研究结果有助于尼泊尔更好地进行城市规划、制定社会政策、确定合适的建筑材料,以及制定国家一级的减灾战略,以最大限度地减少地震损失。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Framework for Building Vulnerability Assessment for the 2015 Nepal Earthquake
On April 25, 2015, a devastating earthquake of magnitude Mw 7.8 hit Nepal, killing around 9000 people and injuring 22000 more. Following the disaster, extensive field research and inspections were conducted in Nepal to determine the extent of damage to the earthquake-affected structures. The post-earthquake investigation procedure becomes extremely difficult due to the vast number of structures and types of buildings in the area. However, knowing a building’s description beforehand can assist in determining the extent of possible damages due to a large event. In light of this, the present study aims to provide an effective formulation for building vulnerability assessment using several parameters, such as number of floors, construction materials, house type (public or private), and age of building. A huge dataset comprising building information of around 3,50,000 buildings on 39 variables is used for this purpose. Six machine learning methods, namely logistic regression, decision-tree classifier, k-nearest neighbor, linear discriminant analysis, random forest, and extreme gradient boosting algorithms are implemented. Based on the score, the grading boosting algorithm is found to be the most suitable algorithm. The findings are helpful for better urban planning, social policymaking, suitable material identification for building construction, and moreover, to set up a national level disaster risk reduction (DRR) strategy to minimize earthquake losses in Nepal..
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