Laure E. Zanna is a Climate Scientist and Professor in Mathematics & Atmosphere/Ocean Science at the Courant Institute of Mathematical Sciences, New York University. She works on topics including climate system dynamics, the influence of the oceans on global scales, data science, and machine learning.[1] In July 2019 she was awarded the Nicholas P. Fofonoff Award for Early Career Research by the American Meteorological Society for "exceptional creativity in the development and application of new concepts in ocean and climate dynamics."[2] She is the lead principal investigator of the NSF-NOAA Climate Process Team on Ocean Transport and Eddy Energy,[3] and she is also the lead investigator of an international effort to improve climate models with scientific machine learning called M2LInES.[4]
Her work applies mathematical models to ocean data.[11] By understanding how ocean heat has changed in the past, Zanna's work help make more accurate predictions about climate change.[12][13][14]
Zanna's research has included using Green's function methods to relate observations of sea surface temperatures to the temperatures of the deep ocean.[15] By using an ocean transport model, Zanna demonstrated that temperature could be treated as a passive variable that did not impact circulation.[15] She demonstrated that atmospheric heat is mainly stored in the deep sea, with oceans storing up to 93% of the heat of climate change.[15][16][17] Specifically, the models developed by Zanna and her group showed that the deep oceans have absorbed 436 zettajoules of energy in the past 150 years.[18] This represents around 1,000 times the worldwide human energy consumption, or 1.5 atomic bombs every second for 150 years.[19][20] She also found that major ocean currents that transport nutrients and heat are changing.[17]
In 2022, Zanna was principle lecturer at the Geophysical Fluid Dynamics Program at Woods Hole Oceanographic Institution, where the topic was "Data-Driven GFD".[23]
^Bolton, Thomas; Zanna, Laure (2019). "Applications of Deep Learning to Ocean Data Inference and Subgrid Parameterization". Journal of Advances in Modeling Earth Systems. 11 (1): 376–399. Bibcode:2019JAMES..11..376B. doi:10.1029/2018MS001472. ISSN1942-2466.