Random forest-based multi-hazard loss estimation using hypothetical data at seismic and tsunami monitoring networks

IF 4.5 3区 地球科学 Q1 GEOSCIENCES, MULTIDISCIPLINARY
Yao Li, Katsuichiro Goda
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引用次数: 0

Abstract

This article presents a novel approach to estimate multi-hazard loss in a post-event situation, resulting from cascading earthquake and tsunami events with machine learning for the first time. The proposed methodology combines the power of random forest (RF) with data that are simulated at seismic and tsunami monitoring locations. The RF model is well-suited for predicting highly nonlinear multi-hazard loss because of its nonparametric regression and ensemble learning capabilities. The study targets the cities of Iwanuma and Onagawa in Tohoku, Japan, where seismic and tsunami monitoring networks have been deployed. To encompass a diverse range of future multi-hazard loss estimation, an RF model is constructed based on 4000 simulated earthquake events with peak ground velocity and tsunami wave amplitude captured at ground-motion monitoring sites and offshore wave monitoring sensors, respectively. The incorporation of 10 ground-motion monitoring sites and five offshore wave monitoring sensors significantly enhances the model’s forecasting power, leading to a notable 60% decrease in mean squared error and 20% increase in the R2 value compared to scenarios where no monitoring sensors are utilized. By harnessing the capabilities of RF and leveraging detailed sensing data, RF achieves R2 values over 90%, which can contribute to enhanced disaster risk management.
基于地震和海啸监测网假设数据的随机森林多灾害损失估计
本文首次提出了一种新的方法来估计由级联地震和海啸事件引起的事后情况下的多灾害损失。所提出的方法将随机森林(RF)的力量与地震和海啸监测点模拟的数据结合起来。由于其非参数回归和集成学习能力,射频模型非常适合于预测高度非线性的多危害损失。这项研究的目标是日本东北的岩沼市和女川市,这两个城市已经部署了地震和海啸监测网络。为了涵盖未来多种灾害损失估计,基于4000次模拟地震事件构建了RF模型,这些地震事件分别由地面运动监测点和近海波浪监测传感器捕获峰值地面速度和海啸波幅。结合10个地面运动监测点和5个近海波浪监测传感器显著增强了模型的预报能力,与不使用监测传感器的情景相比,均方误差显著降低60%,R2值显著提高20%。通过利用射频的功能和利用详细的传感数据,射频实现了超过90%的R2值,这有助于增强灾害风险管理。
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来源期刊
Geomatics Natural Hazards & Risk
Geomatics Natural Hazards & Risk GEOSCIENCES, MULTIDISCIPLINARY-METEOROLOGY & ATMOSPHERIC SCIENCES
CiteScore
7.70
自引率
4.80%
发文量
117
审稿时长
>12 weeks
期刊介绍: The aim of Geomatics, Natural Hazards and Risk is to address new concepts, approaches and case studies using geospatial and remote sensing techniques to study monitoring, mapping, risk mitigation, risk vulnerability and early warning of natural hazards. Geomatics, Natural Hazards and Risk covers the following topics: - Remote sensing techniques - Natural hazards associated with land, ocean, atmosphere, land-ocean-atmosphere coupling and climate change - Emerging problems related to multi-hazard risk assessment, multi-vulnerability risk assessment, risk quantification and the economic aspects of hazards. - Results of findings on major natural hazards
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