Toward autonomous detection of anomalous GNSS data via applied unsupervised artificial intelligence

Michael P. Dye, D. S. Stamps, Myles Mason, E. Saria
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引用次数: 3

Abstract

Artificial intelligence applications within the geo-sciences are becoming increasingly common, yet there are still many challenges involved in adapting established techniques to geoscience data sets. Applications in the realm of volcanic hazards assessment show great promise for addressing such challenges. Here, we describe a Jupyter Notebook we developed that ingests real-time GNSS data streams from the EarthCube CHORDS (Cloud-Hosted Real-time Data Services for the geosciences) portal TZVOLCANO, applies unsupervised learning algorithms to perform automated data quality control ("noise reduction"), and explores autonomous detection of unusual volcanic activity using a neural network. The TZVOLCANO CHORDS portal streams real-time Global Navigation Satellite System (GNSS) positioning data in 1 second intervals from the TZVOLCANO network, which monitors the active volcano Ol Doinyo Lengai in Tanzania, through UNAVCO’s real-time GNSS data services. UNAVCO’s real-time data services provide near-real-time positions processed by the Trimble Pivot system. The positioning data (latitude, longitude, and height) are imported into this Jupyter Notebook in user-defined time spans. The positioning data are then collected in sets by the Jupyter Notebook and processed to extract a useful calculated variable in preparation for the machine learning algorithms, of which we choose the vector magnitude. Unsupervised K-means and Gaussian Mixture machine learning algorithms are then utilized to locate and remove data points ("filter") that are likely caused by noise and unrelated to volcanic signals. We find that both the K-means and Gaussian Mixture machine learning algorithms perform well at identifying regions of high noise within tested GNSS data sets, but the Gaussian Mixtures approach performs better. The filtered data are then used to train an artificial intelligence neural network that predicts volcanic deformation. Our Jupyter Notebook has the potential to be used for detecting potentially hazardous volcanic activity in the form of rapid vertical or horizontal displacement of the Earth’s surface.
应用无监督人工智能实现GNSS异常数据的自主检测
人工智能在地球科学领域的应用正变得越来越普遍,但在将现有技术应用于地球科学数据集方面仍存在许多挑战。火山灾害评估领域的应用显示了解决这些挑战的巨大希望。在这里,我们描述了我们开发的Jupyter Notebook,它从EarthCube CHORDS(用于地球科学的云托管实时数据服务)门户网站TZVOLCANO获取实时GNSS数据流,应用无监督学习算法执行自动数据质量控制(“降噪”),并使用神经网络探索异常火山活动的自主检测。TZVOLCANO CHORDS门户网站通过UNAVCO的实时GNSS数据服务,每隔1秒从TZVOLCANO网络传输实时全球导航卫星系统(GNSS)定位数据,该网络通过UNAVCO的实时GNSS数据服务监测坦桑尼亚的活火山Ol Doinyo Lengai。联安援助团的实时数据服务提供由Trimble Pivot系统处理的近实时位置。定位数据(纬度、经度和高度)在用户定义的时间跨度内导入到此Jupyter Notebook中。然后由Jupyter Notebook将定位数据收集成组,并对其进行处理以提取有用的计算变量,为机器学习算法做准备,我们选择其中的矢量幅度。然后使用无监督K-means和高斯混合机器学习算法来定位和删除可能由噪声引起且与火山信号无关的数据点(“过滤器”)。我们发现K-means和高斯混合机器学习算法在识别测试的GNSS数据集中的高噪声区域方面表现良好,但高斯混合方法表现更好。过滤后的数据被用来训练人工智能神经网络来预测火山变形。我们的“木星笔记本”有可能被用来探测地球表面垂直或水平快速移动的潜在危险火山活动。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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