Computation, Optimization, and Machine Learning in Seismology (AGU Advanced Textbooks) - Softcover

Buch 8 von 8: AGU Advanced Textbooks

Mallick, Subhashis

 
9781119654469: Computation, Optimization, and Machine Learning in Seismology (AGU Advanced Textbooks)

Inhaltsangabe

A textbook applying fundamental seismology theories to the latest computational tools

The goal of computational seismology is to digitally simulate seismic waves, create subsurface models, and match these models with observations to identify subsurface rock properties. With recent advances in computing technology, including machine learning, it is now possible to automate matching procedures and use waveform inversion or optimization to create large-scale models.

Computation, Optimization, and Machine Learning in Seismology provides students with a detailed understanding of seismic wave theory, optimization theory, and how to use machine learning to interpret seismic data.

Volume highlights include:

  • Mathematical foundations and key equations for computational seismology
  • Essential theories, including wave propagation and elastic wave theory
  • Processing, mapping, and interpretation of prestack data
  • Model-based optimization and artificial intelligence methods
  • Applications for earthquakes, exploration seismology, depth imaging, and multi-objective geophysics problems
  • Exercises applying the main concepts of each chapter

Die Inhaltsangabe kann sich auf eine andere Ausgabe dieses Titels beziehen.

Über die Autorin bzw. den Autor

Subhashis Mallick, University of Wyoming, USA

Von der hinteren Coverseite

Computation, Optimization, and Machine Learning in Seismology

The goal of computational seismology is to digitally simulate seismic waves, create subsurface models, and match these models with observations to identify subsurface rock properties. With recent advances in computing technology, including machine learning, it is now possible to automate matching procedures and use waveform inversion or optimization to create large-scale models.

Computation, Optimization, and Machine Learning in Seismology provides students with a detailed understanding of seismic wave theory, optimization theory, and how to use machine learning to interpret seismic data.

Volume highlights include:

  • Mathematical foundations and key equations for computational seismology
  • Essential theories, including wave propagation and elastic wave theory
  • Processing, mapping, and interpretation of prestack data
  • Model-based optimization and artificial intelligence methods
  • Applications for earthquakes, exploration seismology, depth imaging, and multi-objective geophysics problems
  • Exercises applying the main concepts of each chapter

„Über diesen Titel“ kann sich auf eine andere Ausgabe dieses Titels beziehen.