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arxiv: 2112.12966 · v1 · pith:ZSVXFLGWnew · submitted 2021-12-24 · 💻 cs.LG · physics.ao-ph

Machine learning for Earth System Science (ESS): A survey, status and future directions for South Asia

classification 💻 cs.LG physics.ao-ph
keywords earthlearningmachinescienceproblemssurveyworkalgorithms
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This survey focuses on the current problems in Earth systems science where machine learning algorithms can be applied. It provides an overview of previous work, ongoing work at the Ministry of Earth Sciences, Gov. of India, and future applications of ML algorithms to some significant earth science problems. We provide a comparison of previous work with this survey, a mind map of multidimensional areas related to machine learning and a Gartner's hype cycle for machine learning in Earth system science (ESS). We mainly focus on the critical components in Earth Sciences, including atmospheric, Ocean, Seismology, and biosphere, and cover AI/ML applications to statistical downscaling and forecasting problems.

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