基于多元高斯分布的土坝、堤被动地震数据异常检测

W. Fisher, B. Jackson, T. Camp, V. Krzhizhanovskaya
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引用次数: 3

摘要

随着美国各地的土坝和土堤(edl)达到其设计寿命,有效监测其结构完整性至关重要。本文研究了被动地震资料中异常事件的自动检测,作为连续实时监测EDL健康的一步。我们使用多元高斯机器学习模型来识别来自两个不同实验室土堤防的实验数据中的异常。此外,我们还探索了五种小波变换的信号去噪方法;去除不同的信号成分。Haar小波(去除3级分量)实现了最佳性能。在异常检测中,我们达到了97.3%的总体准确率和不到1.4%的假阴性。这些有希望的方法最终可以提供一种方法,可以比目前更早地识别老化edl中的内部侵蚀事件,从而有更多的时间来预防或减轻灾难性故障。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Anomaly Detection in Earth Dam and Levee Passive Seismic Data Using Multivariate Gaussian
As earth dams and levees (EDLs) across the United States reach the end of their design lives, effectively monitoring their structural integrity is of critical importance. This paper investigates automatic detection of anomalous events in passive seismic data as a step towards continuous real-time monitoring of EDL health. We use a multivariate Gaussian machine-learning model to identify anomalies in experimental data from two different laboratory earth embankments. Additionally, we explore five wavelet transform methods for signal denoising; removing different signal components. The best performance is achieved with the Haar wavelets (removing the Level 3 component). We achieve up to 97.3% overall accuracy and less than 1.4% false negatives in anomaly detection. These promising approaches could eventually provide a means for identifying internal erosion events in aging EDLs earlier than is currently possible, thereby allowing more time to prevent or mitigate catastrophic failures.
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