Global optimization methods in geophysical inversion

著者

書誌事項

Global optimization methods in geophysical inversion

Mrinal K. Sen and Paul L. Stoffa

Cambridge University Press, 2017

2nd ed

  • : pbk

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注記

Includes bibliographical references (p. 268-278) and index

内容説明・目次

内容説明

Providing an up-to-date overview of the most popular global optimization methods used in interpreting geophysical observations, this new edition includes a detailed description of the theoretical development underlying each method and a thorough explanation of the design, implementation and limitations of algorithms. New and expanded chapters provide details of recently developed methods, such as the neighborhood algorithm, particle swarm optimization, hybrid Monte Carlo and multi-chain MCMC methods. Other chapters include new examples of applications, from uncertainty in climate modeling to whole Earth studies. Several different examples of geophysical inversion, including joint inversion of disparate geophysical datasets, are provided to help readers design algorithms for their own applications. This is an authoritative and valuable text for researchers and graduate students in geophysics, inverse theory and exploration geoscience, and an important resource for professionals working in engineering and petroleum exploration.

目次

  • Preface
  • 1. Preliminary statistics
  • 2. Direct, linear, and iterative-linear inverse methods
  • 3. Monte Carlo methods
  • 4. Simulated annealing methods
  • 5. Genetic algorithms
  • 6. Other global optimization methods
  • 7. Geophysical applications of SA and GA
  • 8. Uncertainty estimation
  • References
  • Index.

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