Bridging observation, theory and numerical simulation of the ocean using Machine Learning
Maike Sonnewald, Redouane Lguensat, Daniel C. Jones, Peter D. Dueben,, Julien Brajard, Venkatramani Balaji

TL;DR
This paper reviews how machine learning enhances observational, theoretical, and numerical oceanography, addressing unique challenges and highlighting opportunities for advancing ocean science through ML techniques.
Contribution
It provides a comprehensive overview of ML applications in oceanography, focusing on observations, theory, and modeling, and discusses future potential and challenges.
Findings
ML improves in situ sampling and satellite data analysis
ML aids in model error correction and bias reduction
Potential for ML to revolutionize data assimilation in oceanography
Abstract
Progress within physical oceanography has been concurrent with the increasing sophistication of tools available for its study. The incorporation of machine learning (ML) techniques offers exciting possibilities for advancing the capacity and speed of established methods and also for making substantial and serendipitous discoveries. Beyond vast amounts of complex data ubiquitous in many modern scientific fields, the study of the ocean poses a combination of unique challenges that ML can help address. The observational data available is largely spatially sparse, limited to the surface, and with few time series spanning more than a handful of decades. Important timescales span seconds to millennia, with strong scale interactions and numerical modelling efforts complicated by details such as coastlines. This review covers the current scientific insight offered by applying ML and points to…
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