Machine Learning for Seismic Signal Processing: Phase Classification on a Manifold

J. Ramirez, François G. Meyer
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引用次数: 28

Abstract

In this research, we consider the supervised learning problem of seismic phase classification. In seismology, knowledge of the seismic activity arrival time and phase leads to epicenter localization and surface velocity estimates useful in developing seismic early warning systems and detecting man-made seismic events. Formally, the activity arrival time refers to the moment at which a seismic wave is first detected and the seismic phase classifies the physics of the wave. We propose a new perspective for the classification of seismic phases in three-channel seismic data collected within a network of regional recording stations. Our method extends current techniques and incorporates concepts from machine learning. Machine learning techniques attempt to leverage the concept of "learning'' the patterns associated with different types of data characteristics. In this case, the data characteristics are the seismic phases. This concept makes sense because the characteristics of the phase types are dictated by the physics of wave propagation. Thus by "learning'' a signature for each type of phase, we can apply classification algorithms to identify the phase of incoming data from a database of known phases observed over the recording network. Our method first uses a multi-scale feature extraction technique for clustering seismic data on low-dimensional manifolds. We then apply kernel ridge regression on each feature manifold for phase classification. In addition, we have designed an information theoretic measure used to merge regression scores across the multi-scale feature manifolds. Our approach complements current methods in seismic phase classification and brings to light machine learning techniques not yet fully examined in the context of seismology. We have applied our technique to a seismic data set from the Idaho, Montana, Wyoming, and Utah regions collected during 2005 and 2006. This data set contained compression wave and surface wave seismic phases. Through cross-validation, our method achieves a 74.6% average correct classification rate when compared to analyst classifications.
地震信号处理的机器学习:流形上的相位分类
在本研究中,我们考虑了地震相位分类的监督学习问题。在地震学中,地震活动到达时间和相位的知识导致震中定位和地表速度估计,这对开发地震预警系统和检测人为地震事件很有用。形式上,地震活动到达时间是指首次探测到地震波的时刻,地震相位对地震波的物理性质进行了分类。我们提出了一种新的视角,用于在区域记录台网中收集的三通道地震数据的地震相分类。我们的方法扩展了当前的技术,并融合了机器学习的概念。机器学习技术试图利用“学习”与不同类型的数据特征相关联的模式的概念。在这种情况下,数据特征是地震相。这个概念是有意义的,因为相位类型的特征是由波传播的物理特性决定的。因此,通过“学习”每种相位类型的签名,我们可以应用分类算法从记录网络上观察到的已知相位数据库中识别传入数据的相位。我们的方法首先使用多尺度特征提取技术对低维流形上的地震数据进行聚类。然后对每个特征流形应用核脊回归进行相位分类。此外,我们还设计了一种用于合并多尺度特征流形的回归分数的信息理论度量。我们的方法补充了目前地震相位分类的方法,并带来了在地震学背景下尚未充分研究的轻型机器学习技术。我们已经将我们的技术应用于2005年和2006年期间从爱达荷州、蒙大拿州、怀俄明州和犹他州地区收集的地震数据集。该数据集包含压缩波和表面波地震相位。通过交叉验证,与分析师分类相比,我们的方法实现了74.6%的平均正确分类率。
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