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I. Jean-kuntzmann and U. Grenoble, Alpes where he is Professor Emeritus He is an adjunct professor at Florida State 387 University and has been visiting professor in many universities in USA he 388 introduced optimal control methods for the assimilation of data in geophysical models. Now this technique (also known as 4D VAR) 389 is used by many operational weather prediction centers worldwide, He was selected the Fellow of the American Meteorological, 1982.

H. Institute, . Technology, C. Harbin, and U. K. , He was a Post-Doctoral Researcher and had visiting experiences with the University 396 of Cambridge He obtained the NSFC Distinguished Young Scholars in 2016 His research interests 398 include sparse transforms, geophysical data processing, compressed sensing, inverse problems, and remote sensing, 2002.