CEE 696-002: Data Assimilation in Civil and Environmental Engineering and Earth Science

Spring Semester 2021

Text

  • Kitanidis, A Course on Imaging with Incomplete Data

  • Kitanidis, Compressed State Kalman Filter: A Short Course

a copy of working draft will be available on the UH google drive for registered students

References

Inverse Modeling

  • Aster, Borchersi & Thurber, Parameter Estimation and Inverse Problems (3rd Ed), Elsevier, 2018

  • Menke, Geophysical Data Analysis: Discrete Inverse Theory (4th Ed.), Academic Press, 2018

  • Hansen, Discrete Inverse Problems: Insight and Algorithms, SIAM, 2010

  • Oliver, Reynolds & Liu, Inverse Theory for Petroleum Reservoir Characterization and Histroy Matching, Cambridge University Press, 2008

  • Tenorio, An introduction to Data Uncertainty and Uncertainty Quantification for Inverse Problems, SIAM, 2017

  • Kaipio & Somersalo, Statistical and Computational Inverse Problems, Springer, 2005

  • Parker, Geophysical Inverse Theory, Princeton Press, 1994

Data Assimiliation

  • Zarchan and Musoff, Fundamentals of Kalman Filtering - A Practical Approach (4th Ed.), AIAA, 2015

  • Evensen, Data Assimilation: The Ensemble Kalman Filter (2nd Ed.), Springer, 2009

  • Kalnay, Atmostpheric Modeling, Data Assimiliation, and Predictability, Cambridge University, 2003

  • NCAR-DAReS-DART: NCAR's Data Assimilation Research Testbed https:dart.ucar.edu/

Reviews

Linear Algebra

  • Strang, Linear Algebra and Learning from Data, Wellesley Cambridge Press, 2019

Probability/Statistics

  • Diaconis and Skyrms, Ten great ideas about chance. Princeton University Press, 2019

  • Sivia and Skilling, Data Analysis: a Bayesian Tutorial, Oxford University Press, 2006

  • MacKay, Information Theory, Inference and Learning Algorithms, Cambridge University Press, 2003

Python

Learn Python by teaching Karel the Robot from Stanford CS 160A

ETC

Hearly, Data Visualization: A practical introduction, Princeton University Press, 2018