被动地震资料中雪崩事件的自动检测

Marc J. Rubin, T. Camp, A. Herwijnen, J. Schweizer
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引用次数: 27

摘要

2010-2011年冬季,我们在瑞士达沃斯郊外的一座山上部署了7台检波器,收集了100多天的地震数据,其中包含385起可能的雪崩事件(33起已确认的板状雪崩)。在本文中,我们描述了我们为开发一种模式识别工作流程所做的努力,该工作流程可以从被动地震数据中自动检测雪崩事件。我们最初的工作流程包括频域特征提取,基于聚类的分层子采样,以及100次训练和测试12种不同的分类算法。当对来自单个传感器的整个季节的数据进行测试时,所有12种机器学习算法的平均分类准确率都在84%以上,其中7种分类器达到90%以上。然后,我们用一个基于投票的范例进行了实验,该范例结合了来自所有七个传感器的信息。这种方法提高了总体的准确性和精密度,但在分类器召回率方面表现相当差。因此,我们决定采用其他信号预处理方法。我们致力于提高单传感器雪崩检测的整体性能,并采用基于光谱通量的事件选择来识别光谱能量瞬时显著增加的事件。在相对谱通量增加90%的阈值下,我们正确地选择了33个板雪崩中的32个,并将问题空间减少了近98%。当在这个仅包含重要事件的简化数据集上进行训练和测试时,决策残桩分类器达到了93%的总体准确率,89.5%的召回率,并将初始工作流的精度从2.8%提高到13.2%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatically Detecting Avalanche Events in Passive Seismic Data
During the 2010-2011 winter season, we deployed seven geophones on a mountain outside of Davos, Switzerland and collected over 100 days of seismic data containing 385 possible avalanche events (33 confirmed slab avalanches). In this article, we describe our efforts to develop a pattern recognition workflow to automatically detect snow avalanche events from passive seismic data. Our initial workflow consisted of frequency domain feature extraction, cluster-based stratified subsampling, and 100 runs of training and testing of 12 different classification algorithms. When tested on the entire season of data from a single sensor, all twelve machine learning algorithms resulted in mean classification accuracies above 84%, with seven classifiers reaching over 90%. We then experimented with a voting based paradigm that combined information from all seven sensors. This method increased overall accuracy and precision, but performed quite poorly in terms of classifier recall. We, therefore, decided to pursue other signal preprocessing methodologies. We focused our efforts on improving the overall performance of single sensor avalanche detection, and employed spectral flux based event selection to identify events with significant instantaneous increases in spectral energy. With a threshold of 90% relative spectral flux increase, we correctly selected 32 of 33 slab avalanches and reduced our problem space by nearly 98%. When trained and tested on this reduced data set of only significant events, a decision stump classifier achieved 93% overall accuracy, 89.5% recall, and improved the precision of our initial workflow from 2.8% to 13.2%.
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