Numerical Modeling of Ocean-Atmosphere Interactions
A special issue of Atmosphere (ISSN 2073-4433). This special issue belongs to the section "Biosphere/Hydrosphere/Land–Atmosphere Interactions".
Deadline for manuscript submissions: closed (23 June 2023) | Viewed by 393
Special Issue Editor
Interests: numerical modeling; air–sea interaction; forecast system; typhoon
Special Issue Information
Dear Colleagues,
Ocean–atmosphere interactions represent the process of mutual influence, interaction and adaptation between motions of various scales, accompanied by the exchange of various physical quantities between the ocean and the atmosphere. these interactions play an important role in long-term weather and climate change, and are one of the most essential factors in ocean forecasting and weather prediction. Ocean–atmosphere interactions in different regions or weather processes have significant differences in physical phenomena and the altering of characteristics, and their impacts on local or global weather and climate are significantly different. The study of ocean–atmosphere interactions and their climate dynamic mechanisms can provide an important theoretical basis for the profound understanding of climate change and the improvement of climate prediction ability.
Nowadays, supercomputer technology has become very advanced, and thus numerical simulations are a crucial tool in scientific studies, along with theoretical analyses and observational research. Numerical modelling also plays a very important role in the study of ocean–atmosphere interactions, such as the research on the physical mechanism and prediction of ENSO, and the evaluation and forecasting of extreme weather processes (such as typhoons and storm surges). Meanwhile, an increasing number of numerical models for different research objects and purposes have been developed, and numerical simulation techniques (such as coupling tools and coupling data assimilation) continue to thrive.
This Special Issue aims to develop and explore ocean–atmosphere modelling tools as well as techniques and applications related to ocean–atmosphere interactions. The topics of interest include, but are not limited to, coupled ocean–atmosphere numerical modelling and its application and prediction; the analysis of extreme weather processes; applications of artificial intelligence or machine learning in ocean–atmosphere numerical models; and an ocean–atmosphere environmental forecasting system.
Dr. Mingkui Li
Guest Editor
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Keywords
- ocean–atmosphere interactions
- numerical modelling
- extreme weather process
- coupling
- forecast system
- machine learning
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