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Advanced methods of joint inversion and fusion of multiphysics data
紀錄類型:
書目-語言資料,印刷品 : Monograph/item
正題名/作者:
Advanced methods of joint inversion and fusion of multiphysics data/ by Michael S. Zhdanov.
作者:
Zhdanov, Michael S.
出版者:
Singapore :Springer Nature Singapore : : 2023.,
面頁冊數:
xvi, 369 p. :ill. (some col.), digital ; : 24 cm.;
Contained By:
Springer Nature eBook
標題:
Natural Resource and Energy Economics. -
電子資源:
https://doi.org/10.1007/978-981-99-6722-3
ISBN:
9789819967223
Advanced methods of joint inversion and fusion of multiphysics data
Zhdanov, Michael S.
Advanced methods of joint inversion and fusion of multiphysics data
[electronic resource] /by Michael S. Zhdanov. - Singapore :Springer Nature Singapore :2023. - xvi, 369 p. :ill. (some col.), digital ;24 cm. - Advances in geological science,2524-3837. - Advances in geological science..
Introduction to inversion theory -- Elements of probability theory -- Vector spaces of models and data -- Principles of regularization theory -- Linear inverse problems -- Probabilistic methods of inverse problem solution -- Gradient-type methods of non-linear inversion -- Joint inversion based on analytical and statistical relationships between different physical properties -- Joint inversion based on structural similarities -- Joint focusing inversion of multiphysics data -- Joint minimum entropy inversion -- Gramian method of generalized joint inversion -- Probabilistic approach to gramian inversion -- Simultaneous processing and fusion of multiphysics data and images -- Machine learning in the context of inversion theory -- Machine learning inversion of multiphysics data -- Modeling and inversion of potential field data -- Case histories of joint inversion of gravity and magnetic data.
Different physical or geophysical methods provide information about distinctive physical properties of the objects, e.g., rock formations and mineralization. In many cases, this information is mutually complementary, which makes it natural for consideration in a joint inversion of the multiphysics data. Inversion of the observed data for a particular experiment is subject to considerable uncertainty and ambiguity. One productive approach to reducing uncertainty is to invert several types of data jointly. Nonuniqueness can also be reduced by incorporating additional information derived from available a priori knowledge about the target to reduce the search space for the solution. This additional information can be incorporated in the form of a joint inversion of multiphysics data. Generally established joint inversion methods, however, are inadequate for incorporating typical physical or geological complexity. For example, analytic, empirical, or statistical correlations between different physical properties may exist for only part of the model, and their specific form may be unknown. Features or structures that are present in the data of one physical method may not be present in the data generated by another physical method or may not be equally resolvable. This book presents and illustrates several advanced, new approaches to joint inversion and data fusion, which do not require a priori knowledge of specific empirical or statistical relationships between the different model parameters or their attributes. These approaches include the following novel methods, among others: 1) the Gramian method, which enforces the correlation between different parameters; 2) joint total variation functional or joint focusing stabilizers, e.g., minimum support and minimum gradient support constraints; 3) data fusion employing a joint minimum entropy stabilizer, which yields the simplest multiphysics solution that fits the multi-modal data. In addition, the book describes the principles of using artificial intelligence (AI) in solving multiphysics inverse problems. The book also presents in detail both the mathematical principles of these advanced approaches to joint inversion of multiphysics data and successful case histories of regional-scale and deposit-scale geophysical studies to illustrate their indicated advantages.
ISBN: 9789819967223
Standard No.: 10.1007/978-981-99-6722-3doiSubjects--Topical Terms:
1113585
Natural Resource and Energy Economics.
LC Class. No.: QE606.3.I68
Dewey Class. No.: 551.875
Advanced methods of joint inversion and fusion of multiphysics data
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