Deep learning facilitates earthquake early warning
Deep learning has been well-developed to handle tasks that are difficult to execute using algorithms, yet are easily understood through human experience, making it a powerful tool for automating tasks.
In seismology, the most successful application of deep learning has been the automatic detection of seismic phases with an efficiency unprecedented by previous algorithms. This advantage is also beneficial for earthquake early warning systems.
In a new study, used tremendous amounts of synthetic waveforms, generated from 10,000 simulated earthquakes, to train a deep learning neural network (M-Large) to predict ground shaking intensity using only a portion of real-time waveforms. The trained neural network achieved a significant improvement in warning time (about 40 seconds for earthquakes with (MMI) greater than 4) using high-rate global navigation satellite system (HR-GNSS) data. This research also suggests that the earthquake scaling relationship is utilized by the neural network to predict rupture parameters.