Fast Determination of Earthquake Depth Using Seismic Records of a Single Station, Implementing Machine Learning Techniques

L. H. O. Gutierrez, L. F. N. Vasquez, C. Jiménez
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引用次数: 5

Abstract

The purpose of this research is to apply a new approach to make a fast determination of earthquake depth using seismic records of the “El Rosal” station, near to the city of Bogota – Colombia, by applying support vector machine regression (SVMR). The algorithm was trained with descriptors obtained from time signals of 863 seismic events acquired between January 1998 and October 2008; only earthquakes with magnitude ≥ 2 were contemplated, filtering its signals to remove diverse kind of noises not related to earth tremors. During training stages of SVMR several combinations of kernel function exponent and complexity factor were considered for time signals of 5, 10 and 15 seconds along with earthquake magnitudes of 2.0, 2.5, 3.0 and 3.5 (Ml). The best classification of SVMR was obtained using time signals of 15 seconds and earthquake magnitudes of 3.5 with kernel exponent of 10 and complexity factor of 2, showing accuracy of 0.6 ± 16.5 kilometers, which is good enough to be used in an early warning system for the city of Bogota. It is recommended to provide this model with a previous phase of deep-shallow classification.
利用单站地震记录快速确定地震深度,实现机器学习技术
本研究的目的是应用支持向量机回归(SVMR)的新方法,利用哥伦比亚波哥大市附近的“El Rosal”台站的地震记录,快速确定地震深度。该算法使用1998年1月至2008年10月863个地震事件的时间信号描述符进行训练;仅考虑震级≥2级的地震,对其信号进行过滤,以去除与地震无关的各种噪声。在SVMR的训练阶段,考虑了5、10和15秒时间信号以及2.0、2.5、3.0和3.5 (Ml)地震震级的核函数指数和复杂性因子的几种组合。在15秒时间信号、3.5级地震、核指数为10、复杂系数为2的情况下,得到了SVMR的最佳分类,精度为0.6±16.5 km,足以用于波哥大市的预警系统。建议为该模型提供前一阶段的深浅分类。
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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