Early detection of earthquake magnitude based on stacked ensemble model

IF 1.7 Q3 GEOSCIENCES, MULTIDISCIPLINARY Journal of Asian Earth Sciences: X Pub Date : 2022-12-01 DOI:10.1016/j.jaesx.2022.100122
Anushka Joshi, Chalavadi Vishnu, C Krishna Mohan
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引用次数: 22

Abstract

A new machine learning model, named, EEWPEnsembleStack has been developed for predicting the magnitude of the earthquake from a few seconds of recorded ground motion after the arrival of the P phase. The testing and training dataset consists of 2360 and 591 strong-motion records from central Japan recorded by the Kyoshin Network. Eight parameters that are well correlated with the magnitude have been used for training and testing of the model. Feature ablation study using several models shows that a minimum mean absolute error of 0.42 has been obtained for the case when the model has been trained by using all parameters rather than by a single parameter. The model ablation study indicates that among all individually trained single models, the minimum error has been obtained for a Decision Tree regression model. However, the error is minimized when all machine learning models have been together utilized in the EEWPEnsembleStack model for the training purposes. The EEWPEnsembleStack model has been used to predict a 6.3 magnitude earthquake by using its 21 records from various stations that lie within 50 to 150 km epicentral distance. The predicted magnitude from the developed model using weighted magnitude prediction is obtained as 6.4, which is close to the actual magnitude. The comparison of the predicted magnitude of this earthquake from the developed model with that predicted by using popular τc and Pd methods clearly indicates the suitability of the developed machine learning model over other conventional models.

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基于叠加系综模型的地震震级早期检测
一种名为EEWPEnsembleStack的新机器学习模型已经被开发出来,用于从P相到达后的几秒钟记录的地面运动中预测地震的震级。测试和训练数据集由京信网络记录的2360条和591条来自日本中部的强震记录组成。8个与震级相关的参数被用于模型的训练和测试。使用多个模型进行特征消融研究表明,使用所有参数而不是单一参数训练模型时,获得了最小的平均绝对误差0.42。模型消融研究表明,在所有单独训练的单一模型中,决策树回归模型的误差最小。然而,当所有的机器学习模型都在EEWPEnsembleStack模型中用于训练目的时,误差最小。EEWPEnsembleStack模型已被用于预测6.3级地震,该模型使用了位于震中距离50至150公里范围内的不同台站的21条记录。利用加权震级预测模型预测的震级为6.4,与实际震级较为接近。将所建立的模型预测的震级与常用的τc和Pd方法预测的震级进行比较,清楚地表明所建立的机器学习模型比其他传统模型更适合。
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来源期刊
Journal of Asian Earth Sciences: X
Journal of Asian Earth Sciences: X Earth and Planetary Sciences-Earth-Surface Processes
CiteScore
3.40
自引率
0.00%
发文量
53
审稿时长
28 weeks
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