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Global Seismicity Dynamics and Data-...
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Toriumi, Mitsuhiro.
Global Seismicity Dynamics and Data-Driven Science = Seismicity Modelling by Big Data Analytics /
紀錄類型:
書目-語言資料,印刷品 : Monograph/item
正題名/作者:
Global Seismicity Dynamics and Data-Driven Science/ by Mitsuhiro Toriumi.
其他題名:
Seismicity Modelling by Big Data Analytics /
作者:
Toriumi, Mitsuhiro.
面頁冊數:
IX, 231 p. 230 illus., 184 illus. in color.online resource. :
Contained By:
Springer Nature eBook
標題:
Big Data. -
電子資源:
https://doi.org/10.1007/978-981-15-5109-3
ISBN:
9789811551093
Global Seismicity Dynamics and Data-Driven Science = Seismicity Modelling by Big Data Analytics /
Toriumi, Mitsuhiro.
Global Seismicity Dynamics and Data-Driven Science
Seismicity Modelling by Big Data Analytics /[electronic resource] :by Mitsuhiro Toriumi. - 1st ed. 2021. - IX, 231 p. 230 illus., 184 illus. in color.online resource. - Advances in Geological Science,2524-3837. - Advances in Geological Science,.
- Introduction -- Nature of Earthquakes in the Solid Earth -- Global Seismicity of the Solid Earth -- Data – Driven Sciences for Geosciences -- Data-Driven Science of Seismicity -- Down Scaling Seismicity of Japanese Regions -- Correlated Seismicity of the Northern California Region -- Model of Seismicity Dynamics from Data-Driven Science -- Seismicity Dynamics Model of Global Earth and Japanese Island Region -- Predictive Modeling of Global and Regional Seismicity Rates -- Future Problems of Prediction of Giant Plate Boundary Earthquakes -- Application of Recurrent Neural Network (RNN) Modeling for Global Seismicity Dynamics -- Comments on Databases and Software Used in This Book.
The recent explosion of global and regional seismicity data in the world requires new methods of investigation of microseismicity and development of their modelling to understand the nature of whole earth mechanics. In this book, the author proposes a powerful tool to reveal the characteristic features of global and regional microseismicity big data accumulated in the databases of the world. The method proposed in this monograph is based on (1) transformation of stored big data to seismicity density data archives, (2) linear transformation of microseismicity density data matrixes to correlated seismicity matrixes by means of the singular value decomposition method, (3) time series analyses of globally and regionally correlated seismicity rates, and (4) the minimal non-linear equations approximation of their correlated seismicity rate dynamics. Minimal non-linear modelling is the manifestation for strongly correlated seismicity time series controlled by Langevin-type stochastic dynamic equations involving deterministic terms and random Gaussian noises. A deterministic term is composed minimally with correlated seismicity rate vectors of a linear term and of a term with a third exponent. Thus, the dynamics of correlated seismicity in the world contains linearly changing stable nodes and rapid transitions between them with transient states. This book contains discussions of future possibilities of stochastic extrapolations of global and regional seismicity in order to reduce earthquake disasters worldwide. The dataset files are available online and can be downloaded at springer.com.
ISBN: 9789811551093
Standard No.: 10.1007/978-981-15-5109-3doiSubjects--Topical Terms:
1017136
Big Data.
LC Class. No.: QC801-809
Dewey Class. No.: 550
Global Seismicity Dynamics and Data-Driven Science = Seismicity Modelling by Big Data Analytics /
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