利用时空特征对不平衡数据进行地震预报

Aaditya Sharma, Arnav Ahuja, Sonu Devi, S. Pasari
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引用次数: 1

摘要

随着精确记录地震活动的仪器的改进,地震数据的质量日益提高,导致更多信息的数据集。这些数据集具有时间和地理空间模式,可以通过时间和地理空间因素的特征工程提取。然而,不太频繁的大地震往往造成地震数据的不平衡。在本研究中,我们提出了三种基于机器学习的算法级技术,将时间序列地震数据转换为具有时间和地理空间特征的等效数据集,以处理震级类不平衡。来自喜马拉雅、中爪哇、苏拉威西、苏门答腊和东南亚等几个研究地区的结果进行了比较,讨论了所提出算法的有效性。准确度、精密度和F1分数作为评价指标。因此,本研究提供了一个在地震预报中使用机器学习算法来处理不平衡数据的公式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Use of Spatio-temporal Features for Earthquake Forecasting of imbalanced Data
With improvement in instrumentation to precisely record seismic activities, the quality of seismic data is improving day by day, leading to more informative data sets. These data sets possess temporal and geospatial patterns that can be extracted by feature engineering of temporal and geospatial factors. However, the less frequent large-magnitude earthquakes often create an imbalance in earthquake data. In this study, we propose three machine learning-based algorithm-level techniques to transform time series earthquake data into an equivalent data set with temporal and geospatial features to treat the magnitude class imbalance. Results from several study regions including the Himalayas, Central Java, Sulawesi, Sumatra, and Southeast Asia are compared to discuss the efficacy of the proposed algorithms. Accuracy, precision, and F1 score are used as evaluation metrics. Therefore, the present work has provided a formulation to use machine learning algorithms for imbalanced data in earthquake forecasting.
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