论文标题

通过机器学习预测实验室地震

Predicting laboratory earthquakes with machine learning

论文作者

van Klaveren, Silke, Vasconcelos, Ivan, Niemeijer, Andre

论文摘要

地震的成功预测是地球科学中的圣杯之一。传统的预测使用复发间隔的统计信息,但是这些预测还不够准确。在最近的一篇论文中,提出了一种机器学习方法,并将其应用于实验室地震的数据。机器学习算法利用通过声学发射对辐射能量的连续测量,作者能够成功预测实验室地震的时机。在这里,我们重现了它们的模型,该模型应用于玻璃珠的凿层层,并将其应用于使用盐孔层获得的数据集。在此盐实验中,设置了不同的负载点速度,导致复发时间变化。我们使用的机器学习技术称为随机森林,并在跨界时期使用声学排放。随机森林模型也成功地对两种材料进行了相对可靠的预测,也很早就在地震发生之前。显然,在整个实验过程中,数据中有有关下一场地震时间的信息。因为玻璃珠的能量逐渐且越来越释放,而对于盐能量仅在前体活动期间释放,因此预测中使用的重要特征是不同的。我们将结果的差异解释为由于滑移的微力学而引起的。研究表明,机器学习方法可以揭示有关不稳定滑移事件时间(地震)时间的数据中存在的信息。需要进一步的研究来确定负责的微机械过程,然后可以使用这些过程来推断自然条件。

The successful prediction of earthquakes is one of the holy grails in Earth Sciences. Traditional predictions use statistical information on recurrence intervals, but those predictions are not accurate enough. In a recent paper, a machine learning approach was proposed and applied to data of laboratory earthquakes. The machine learning algorithm utilizes continuous measurements of radiated energy through acoustic emissions and the authors were able to successfully predict the timing of laboratory earthquakes. Here, we reproduced their model which was applied to a gouge layer of glass beads and applied it to a data set obtained using a gouge layer of salt. In this salt experiment different load point velocities were set, leading to variable recurrence times. The machine learning technique we use is called random forest and uses the acoustic emissions during the interseismic period. The random forest model succeeds in making a relatively reliable prediction for both materials, also long before the earthquake. Apparently there is information in the data on the timing of the next earthquake throughout the experiment. For glass beads energy is gradually and increasingly released whereas for salt energy is only released during precursor activity, therefore the important features used in the prediction are different. We interpret the difference in results to be due to the different micromechanics of slip. The research shows that a machine learning approach can reveal the presence of information in the data on the timing of unstable slip events (earthquakes). Further research is needed to identify the responsible micromechanical processes which might be then be used to extrapolate to natural conditions.

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