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Predicting fault slip via transfer learning

Kun Wang, Christopher W. Johnson, Kane C. Bennett, Paul A. Johnson

2021Nature Communications52 citationsDOIOpen Access PDF

Abstract

Data-driven machine-learning for predicting instantaneous and future fault-slip in laboratory experiments has recently progressed markedly, primarily due to large training data sets. In Earth however, earthquake interevent times range from 10's-100's of years and geophysical data typically exist for only a portion of an earthquake cycle. Sparse data presents a serious challenge to training machine learning models for predicting fault slip in Earth. Here we describe a transfer learning approach using numerical simulations to train a convolutional encoder-decoder that predicts fault-slip behavior in laboratory experiments. The model learns a mapping between acoustic emission and fault friction histories from numerical simulations, and generalizes to produce accurate predictions of laboratory fault friction. Notably, the predictions improve by further training the model latent space using only a portion of data from a single laboratory earthquake-cycle. The transfer learning results elucidate the potential of using models trained on numerical simulations and fine-tuned with small geophysical data sets for potential applications to faults in Earth.

Topics & Concepts

Transfer of learningSlip (aerodynamics)Computer scienceFault (geology)Training setGeologyTransfer (computing)Transfer functionRange (aeronautics)Machine learningData modelingAlgorithmNumerical modelsArtificial intelligenceData assimilationSynthetic dataTraining (meteorology)Earthquake predictionPattern recognition (psychology)Computer simulationFault modelMathematical modelData miningEarthquake simulationTransfer problemearthquake and tectonic studiesSeismology and Earthquake StudiesEarthquake Detection and Analysis