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Machine Learning for Fast and Reliable Source-Location Estimation in Earthquake Early Warning

Omar M. Saad, Yunfeng Chen, Daniel T. Trugman, M. Sami Soliman, Lotfy Samy, Alexandros Savvaidis, Mohamed A. Khamis, Ali G. Hafez, Sergey Fomel, Yangkang Chen

2022IEEE Geoscience and Remote Sensing Letters46 citationsDOI

Abstract

We develop a random forest (RF) model for rapid earthquake location with an aim to assist earthquake early warning (EEW) systems in fast decision making. This system exploits P-wave arrival times at the first five stations recording an earthquake and computes their respective arrival time differences relative to a reference station (i.e., the first recording station). These differential P-wave arrival times and station locations are classified in the RF model to estimate the epicentral location. We train and test the proposed algorithm with an earthquake catalog from Japan. The RF model predicts the earthquake locations with high accuracy, achieving a mean absolute error (MAE) of 2.88 km. As importantly, the proposed RF model can learn from a limited amount of data (i.e., 10% of the dataset) and much fewer (i.e., three) recording stations and still achieve satisfactory results (MAE < 5 km). The algorithm is accurate, generalizable, and rapidly responding, thereby offering a powerful new tool for fast and reliable source-location prediction in EEW.

Topics & Concepts

Warning systemComputer scienceEstimationEarthquake locationEarthquake warning systemRemote sensingReal-time computingSeismologyGeologyInduced seismicityTelecommunicationsEngineeringSystems engineeringSeismology and Earthquake StudiesSeismic Waves and AnalysisEarthquake Detection and Analysis
Machine Learning for Fast and Reliable Source-Location Estimation in Earthquake Early Warning | Litcius