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Machine learning-based tsunami inundation prediction derived from offshore observations

Earth Sciences

Machine learning-based tsunami inundation prediction derived from offshore observations

I. E. Mulia, N. Ueda, et al.

This groundbreaking study, conducted by Iyan E. Mulia, Naonori Ueda, Takemasa Miyoshi, Aditya Riadi Gusman, and Kenji Satake, pioneers a real-time tsunami inundation prediction method leveraging machine learning and North Japan’s S-net data. With an astounding 99% reduction in computational costs, this model provides vital lead time in forecasts and addresses uncertainties in tsunami source estimations.

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Abstract
The world's largest and densest tsunami observing system gives us the leverage to develop a method for a real-time tsunami inundation prediction based on machine learning. Our method utilizes 150 offshore stations encompassing the Japan Trench to simultaneously predict tsunami inundation at seven coastal cities stretching ~100 km along the southern Sanriku coast. We trained the model using 3093 hypothetical tsunami scenarios from the megathrust (Mw 8.0–9.1) and nearby outer-rise (Mw 7.0–8.7) earthquakes. Then, the model was tested against 480 unseen scenarios and three near-field historical tsunami events. The proposed machine learning-based model can achieve comparable accuracy to the physics-based model with ~99% computational cost reduction, thus facilitates a rapid prediction and an efficient uncertainty quantification. Additionally, the direct use of offshore observations can increase the forecast lead time and eliminate the uncertainties typically associated with a tsunami source estimate required by the conventional modeling approach.
Publisher
Nature Communications
Published On
Sep 19, 2022
Authors
Iyan E. Mulia, Naonori Ueda, Takemasa Miyoshi, Aditya Riadi Gusman, Kenji Satake
Tags
tsunami prediction
machine learning
computational cost
forecast lead time
data assimilation
Japan
S-net
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