Using machine learning to build temperature-based ozone parameterizations for climate sensitivity simulations
Peer Nowack(Karlsruhe Institute of Technology), Apostolos Voulgarakis(Goddard Institute for Space Studies), Peter Braesicke(University of Cambridge), J. A. Pyle(University of Cambridge), Joanna D. Haigh(Imperial College London), Nathan Luke Abraham(University of Cambridge)
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