Cloud liquid and ice water content estimation from satellite: a regression approach based on neural networks
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Domenico Cimini | Pietro Mastro | Guido Masiello | Tim Hultberg | Elisabetta Ricciardelli | Filomena Romano | Thomas August | Francesco Di Paola | G. Masiello | F. Romano | E. Ricciardelli | T. August | D. Cimini | T. Hultberg | F. Di Paola | Pietro Mastro
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