Stable operation process of earthquake early warning system based on machine learning: trial test and management perspective

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Abstract

Earthquake Early Warning (EEW) is an alert system, based on seismic wave propagation theory, to reduce human casualties. EEW systems mainly utilize technologies through both network-based and on-site methods. The network-based method estimates the hypocenter and magnitude of an earthquake using data from multiple seismic stations, while the on-site method predicts the intensity measures from a single seismic station. Therefore, the on-site method reduces the lead time compared to the network-based method but is less accurate. To increase the accuracy of on-site EEW, our system was designed with a hybrid method, which included machine learning algorithms. At this time, machine learning was used to increase the accuracy of the initial P-wave identification rate. Additionally, a new approach using a nearby seismic station, called the 1+ α method, was proposed to reduce false alarms. In this study, an on-site EEW trial operation was performed to evaluate its performance. The warning cases for small and large events were reviewed and the possibility of stable alert decisions was confirmed.

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Ahn, J. K., Park, E., Kim, B., Hwang, E. H., & Hong, S. (2023). Stable operation process of earthquake early warning system based on machine learning: trial test and management perspective. Frontiers in Earth Science, 11. https://doi.org/10.3389/feart.2023.1157742

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