论文标题

将机器学习应用于地震侦探人群的数据

Applying Machine Learning to Crowd-sourced Data from Earthquake Detective

论文作者

Ranadive, Omkar, van der Lee, Suzan, Tang, Vivian, Chao, Kevin

论文摘要

动态触发的地震和震颤产生了两类弱的地震信号,它们的检测,识别和身份验证传统上要求进行费力的分析。机器学习(ML)近年来已成为地球物理分析中的强大效率工具,包括检测时间序列中特定信号。但是,检测埋在噪声挑战中的弱信号ML算法,部分原因是无处不在的训练数据并不总是可用。在这种情况下,ML可能像人类专家效率低下一样无效。在这一有效性和效率的交集中,我们利用了过去十年中普及的第三个工具:公民科学。公民科学项目地震侦探利用志愿者的眼睛和耳朵在潜在动态触发(PDT)事件中检测和分类弱信号。在这里,我们介绍了地震侦探数据集 - PDT地震和震颤上的一组众群标签。我们应用机器学习来对这些PDT地震事件进行分类,并探讨隔离和分类此类弱信号所面临的挑战。我们确认,使用基于图像和小波的算法,机器学习可以从小地震中检测信号。此外,我们报告说,我们的ML算法还可以检测到PDT震颤的信号,这先前尚未证明。公民科学数据集的分类和ML代码可以在线获得。

Dynamically triggered earthquakes and tremor generate two classes of weak seismic signals whose detection, identification, and authentication traditionally call for laborious analyses. Machine learning (ML) has grown in recent years to be a powerful efficiency-boosting tool in geophysical analyses, including the detection of specific signals in time series. However, detecting weak signals that are buried in noise challenges ML algorithms, in part because ubiquitous training data is not always available. Under these circumstances, ML can be as ineffective as human experts are inefficient. At this intersection of effectiveness and efficiency, we leverage a third tool that has grown in popularity over the past decade: Citizen science. Citizen science project Earthquake Detective leverages the eyes and ears of volunteers to detect and classify weak signals in seismograms from potentially dynamically triggered (PDT) events. Here, we present the Earthquake Detective data set - A crowd-sourced set of labels on PDT earthquakes and tremor. We apply Machine Learning to classify these PDT seismic events and explore the challenges faced in segregating and classifying such weak signals. We confirm that with an image- and wavelet-based algorithm, machine learning can detect signals from small earthquakes. In addition, we report that our ML algorithm can also detect signals from PDT tremor, which has not been previously demonstrated. The citizen science data set of classifications and ML code are available online.

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