Real-time discrimination of earthquake signals by integrating artificial intelligence technology into IoT devices

Zhi Geng(Institute of Geology and Geophysics), Yanfei Wang(Institute of Geology and Geophysics), Wenyong Pan(Institute of Geology and Geophysics), Caixia Yu(Institute of Geology and Geophysics), Zhijing Bai(Institute of Geology and Geophysics), Hongzhou Zhang(Institute of Geology and Geophysics)
Communications Earth & Environment
January 31, 2025
Cited by 7Open Access
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Abstract

Abstract The real-time detection and analysis of seismic signals is crucial in geophysics research, especially when it comes to monitoring catastrophic events. We present an evolutionary deep learning method that yields a model named MCU-Quake. This model encodes the discrimination process as a single numerical value, offering interpretability with only 2693 parameters. Trained on raw seismic waveforms from Utah, USA, MCU-Quake demonstrates its generalization capability across a global natural earthquake dataset. Notably, the model effectively identifies typical explosions during the Russia-Ukraine war in Europe. The knowledge to discriminate between ambient noise, explosions and natural earthquakes can be represented by values of −5.01 (std: 1.14), 1.96 (std: 0.36), 1.01 (std: 0.49), respectively. The model can be deployed on Internet of Things (IoT) devices, including most microcontrollers, which are constrained by limited computational resources (kilo-bytes of memory) and energy consumption (micro-Watts). The results indicate the prospect of on-site missions of artificial intelligent sensors.


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