Applications of Data Assimilation and Inverse Problems in the Earth Sciences

Applications of Data Assimilation and Inverse Problems in the Earth Sciences

  • Alik Ismail-Zadeh
  • Fabio Castelli
  • Dylan Jones
  • Sabrina Sanchez
Publisher:Cambridge University PressISBN 13: 9781009180412ISBN 10: 100918041X

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Applications of Data Assimilation and Inverse Problems in the Earth Sciences is written by Alik Ismail-Zadeh and published by Cambridge University Press. It's available with International Standard Book Number or ISBN identification 100918041X (ISBN 10) and 9781009180412 (ISBN 13).

Many contemporary problems within the Earth sciences are complex, and require an interdisciplinary approach. This book provides a comprehensive reference on data assimilation and inverse problems, as well as their applications across a broad range of geophysical disciplines. With contributions from world leading researchers, it covers basic knowledge about geophysical inversions and data assimilation and discusses a range of important research issues and applications in atmospheric and cryospheric sciences, hydrology, geochronology, geodesy, geodynamics, geomagnetism, gravity, near-Earth electron radiation, seismology, and volcanology. Highlighting the importance of research in data assimilation for understanding dynamical processes of the Earth and its space environment and for predictability, it summarizes relevant new advances in data assimilation and inverse problems related to different geophysical fields. Covering both theory and practical applications, it is an ideal reference for researchers and graduate students within the geosciences who are interested in inverse problems, data assimilation, predictability, and numerical methods.