The prediction of the magnitude of an earthquake is still a challenge in the studies of seismic processes. The machine learning approaches have been developed recently to predict only the magnitude of next incoming earthquake using historical data. In this study, we combine neural networks with the meta-learning to predict not only the magnitude of the next earthquake, but also that of several earthquakes in the future. We successfully applied this novel method to predict the magnitude of Italian earthquakes above three different threshold magnitude. The experimental results show that the meta-learning based neural networks perform much better than the classical machine learning.

Multi-Step Forecasting of Earthquake Magnitude Using Meta-Learning Based Neural Networks

Telesca L
2022

Abstract

The prediction of the magnitude of an earthquake is still a challenge in the studies of seismic processes. The machine learning approaches have been developed recently to predict only the magnitude of next incoming earthquake using historical data. In this study, we combine neural networks with the meta-learning to predict not only the magnitude of the next earthquake, but also that of several earthquakes in the future. We successfully applied this novel method to predict the magnitude of Italian earthquakes above three different threshold magnitude. The experimental results show that the meta-learning based neural networks perform much better than the classical machine learning.
2022
Istituto di Metodologie per l'Analisi Ambientale - IMAA
Earthquakes; magnitude; meta-learning; neural networks; prediction
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Descrizione: Multi-Step Forecasting of Earthquake Magnitude Using Meta-Learning Based Neural Networks
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/416055
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