Uncertainties in Numerical Weather Prediction is a comprehensive work on the most current understandings of uncertainties and predictability in numerical simulations of the atmosphere. It provides general knowledge on all aspects of uncertainties in the weather prediction models in a single, easy to use reference. The book illustrates particular uncertainties in observations and data assimilation, as well as the errors associated with numerical integration methods. Stochastic methods in parameterization of subgrid processes are also assessed, as are uncertainties associated with surface-atmosphere exchange, orographic flows and processes in the atmospheric boundary layer. Through a better understanding of the uncertainties to watch for, readers will be able to produce more precise and accurate forecasts. This is an essential work for anyone who wants to improve the accuracy of weather and climate forecasting and interested parties developing tools to enhance the quality of such forecasts. Provides a comprehensive overview of the state of numerical weather prediction at spatial scales, from hundreds of meters, to thousands of kilometersFocuses on short-term 1-15 day atmospheric predictions, with some coverage appropriate for longer-term forecastsIncludes references to climate prediction models to allow applications of these techniques for climate simulations INDICE: 1. Data assimilation 2. Convection and precipitation 3. Cloud microphysics and aerosols 4. Radiation 5. Turbulent mixing 6. Surface processes 7. Orographic processes 8. Scale interaction and conceptual tools 9. Mathematical tools and methods 10. Solutions of dynamical models 11. Ensemble prediction 12. Post-processing methods
- ISBN: 978-0-12-815491-5
- Editorial: Elsevier
- Encuadernacion: Rústica
- Páginas: 250
- Fecha Publicación: 01/08/2019
- Nº Volúmenes: 1
- Idioma: Inglés