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Statistics in atmospheric science. (English) Zbl 1055.62135

Summary: This paper reviews the use of statistical methods in atmospheric science. The applications covered include the development, assessment and use of numerical physical models of the atmosphere and more empirical analysis unconnected to physical models.

MSC:

62P12 Applications of statistics to environmental and related topics
86A10 Meteorology and atmospheric physics
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