Richter's Predictor: Modelling Earthquake Damage Using Multi-class Classification Models

Aishwarya Kumaraswamy, B. N. Reddy, Rithvik Kolla
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Abstract

Natural calamities like earthquakes cause damage to life and property. Estimation of damage grade to buildings is essential for post-calamity response and recovery, elimination of the tedious process of manual validation and authentication of property damage before granting relief funds to people. By considering basic aspects like building location, age of the building, construction details and it's secondary uses, taken from the Gorkha earthquake dataset, this paper explores various multi-class classification machine learning models and techniques for predicting the damage grade of structures. The proposed architecture of the model involves three major steps, Feature Selection, XGBoost Classifier, and Parameter Tuning. The paper presents the results of the experiments with feature engineering, training variations and ensemble learning. The paper delves into the analysis of each model, to understand the reason behind their performance. This paper also infers the agents that play a major role in deciding the seismic vulnerabilities of the buildings. The proposed classifier in the paper provides significant input to understanding earthquake damage and also provides a paradigm to model other natural disaster damage.
里氏预测器:用多等级分类模型模拟地震损害
像地震这样的自然灾害会造成生命财产损失。估算建筑物的损坏等级对于灾后响应和恢复至关重要,在向人们发放救灾资金之前,消除了人工验证和认证财产损失的繁琐过程。本文从廓尔喀地震数据集出发,从建筑位置、建筑年龄、建筑细节、二次利用等基本方面,探讨了多种多类分类机器学习模型和预测结构破坏等级的技术。提出的模型架构包括三个主要步骤:特征选择、XGBoost分类器和参数调优。本文介绍了特征工程、训练变化和集成学习的实验结果。本文对每个模型进行深入分析,了解其表现背后的原因。本文还推导出了决定建筑物地震易损性的主要因素。本文提出的分类器为理解地震灾害提供了重要的输入,也为其他自然灾害的建模提供了一个范例。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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