Mitsuhiro Toriumi Toriumi Physics of Geochemical Mechanics and Deep Neural Network Modeling with Diffusion Augmentation

Physics of Geochemical Mechanics and Deep Neural Network Modeling with Diffusion Augmentation

von Mitsuhiro Toriumi

Applications to Earthquake Prediction

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Beschreibung

This book provides a new data augmentation method based on the local stochastic distribution patterns in natural time series data of global and regional seismicity rates and their correlated seismicity rates. The augmentation procedure is called the diffusion – denoising augmentation method from the local Gaussian distribution of segmented data of long time series. This method makes it possible to apply the deep machine learning necessary to neural network prediction of rare large earthquakes in the global and regional earth system.

The book presents the physical background of the processes showing the development of characteristic features in the global and regional correlated seismicity dynamics, which are manifested by the successive time series of 1990–2023. Physical processes of the correlated global seismicity change and the earth’s rotation, fluctuation of plate motion, and the earth’s ellipsoid ratio (C20 of satellite gravity change) are proposed in this book. The equivalency between Gaussian seismicity network dynamics and the minimal nonlinear dynamics model of correlated seismicity rates is also provided. In addition, the book contains simulated models of the shear crack jog wave, precipitation of minerals in the jog, and jog accumulation inducing shear crack propagation which leads to earthquakes in the plate boundary rocks under permeable fluid flow.


This book provides a new data augmentation method based on the local stochastic distribution patterns in natural time series data of global and regional seismicity rates and their correlated seismicity rates. The augmentation procedure is called the diffusion – denoising augmentation method from the local Gaussian distribution of segmented data of long time series. This method makes it possible to apply the deep machine learning necessary to neural network prediction of rare large earthquakes in the global and regional earth system.

The book presents the physical background of the processes showing the development of characteristic features in the global and regional correlated seismicity dynamics, which are manifested by the successive time series of 1990–2023. Physical processes of the correlated global seismicity change and the earth’s rotation, fluctuation of plate motion, and the earth’s ellipsoid ratio (C20 of satellite gravity change) are proposed in this book. The equivalency between Gaussian seismicity network dynamics and the minimal nonlinear dynamics model of correlated seismicity rates is also provided. In addition, the book contains simulated models of the shear crack jog wave, precipitation of minerals in the jog, and jog accumulation inducing shear crack propagation which leads to earthquakes in the plate boundary rocks under permeable fluid flow.


Provides a diffusion augmentation method for time series with rare events Evaluates the probability prediction of events on theoretical time series of 1D and 3D nonlinear and chaotic dynamics Includes a step-by-step tutorial to learn the physics of geochemical mechanics and global seismic activity change

Autor*in

Mitsuhiro Toriumi

Themen in »Physics of Geochemical Mechanics and Deep Neural Network Modeling with Diffusion Augmentation«

Global seismic activity Diffusion augmentation Earthquake probability prediction Neural network modeling Geochemical mechanics

Stimmen zu »Physics of Geochemical Mechanics and Deep Neural Network Modeling with Diffusion Augmentation«

Details

ISBN: 9789819793785
Verlag: Springer Singapore
Erscheinung: 04.01.2026

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