Parameterization Schemes: Keys to Understanding Numerical Weather Prediction Models (Paperback)
Stensrud, David J.
- 出版商: Cambridge
 - 出版日期: 2009-12-03
 - 售價: $2,800
 - 貴賓價: 9.5 折 $2,660
 - 語言: 英文
 - 頁數: 480
 - 裝訂: Quality Paper - also called trade paper
 - ISBN: 0521126762
 - ISBN-13: 9780521126762
 - 
    相關分類:
    
      流體力學 Fluid-mechanics
 
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商品描述
Numerical weather prediction models play an increasingly important role in meteorology, both in short- and medium-range forecasting and global climate change studies. The most important components of any numerical weather prediction model are the subgrid-scale parameterization schemes, and the analysis and understanding of these schemes is a key aspect of numerical weather prediction. This book provides in-depth explorations of the most commonly used types of parameterization schemes that influence both short-range weather forecasts and global climate models. Several parameterizations are summarised and compared, followed by a discussion of their limitations. Review questions at the end of each chapter enable readers to monitor their understanding of the topics covered, and solutions are available to instructors at www.cambridge.org/9780521865401. This will be an essential reference for academic researchers, meteorologists, weather forecasters, and graduate students interested in numerical weather prediction and its use in weather forecasting.