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首页> 外文期刊>Journal of Earth Science & Climatic Change >Fractal Analysis, Information-Theoretic Similarities and SVM Classificationfor Multichannel, Multi-Frequency Pre-Seismic ElectromagneticMeasurements
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Fractal Analysis, Information-Theoretic Similarities and SVM Classificationfor Multichannel, Multi-Frequency Pre-Seismic ElectromagneticMeasurements

机译:多通道,多频率地震前电磁测量的分形分析,信息理论相似性和SVM分类

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A multichannel, multi-frequency approach on the analysis of critical electromagnetic (EM) signatures prior to earthquakes is presented. The algorithm employed is based on single-channel techniques for the identification of longmemory trends in fractal processes and attempts to take advantage of the increased information content that is provided by multichannel EM recordings. The EM measurements consist of four channels which correspond to four distinct EM radiation frequencies. Two of these frequencies lie in the kHz range and the other two in the MHz range. Our analysis of a three-month EM activity period shows that there exists some degree of similarity between EM channels that are close in frequency, in terms of an information theoretic measure. More importantly, the multichannel-based detection results seem to be in close agreement with the main earthquake occurrences of the three-month period. The combined output of the multiple channels is used to train a Support Vectors Machine (SVM) classifier in order to identify precursory EM signal segments of forthcoming seismic events and a high accuracy rate is reported.
机译:提出了一种在地震前分析关键电磁(EM)特征的多通道,多频率方法。所采用的算法基于单通道技术,用于识别分形过程中的长记忆趋势,并尝试利用多通道EM记录提供的增加的信息内容。电磁测量包括四个通道,分别对应四个不同的电磁辐射频率。其中两个频率在kHz范围内,另外两个在MHz范围内。我们对为期三个月的EM活动期的分析表明,就信息理论而言,频率接近的EM通道之间存在一定程度的相似性。更重要的是,基于多通道的检测结果似乎与三个月期间的主要地震发生非常吻合。多个通道的组合输出用于训练支持向量机(SVM)分类器,以识别即将发生的地震事件的前兆EM信号段,并且报告了较高的准确率。

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