Advertisement

The Methodology of the Model Verification Based on the Comparison with Measurements and with other Models

  • M. A. Sofiev
Part of the NATO • Challenges of Modern Society book series (NATS, volume 22)

Abstract

Mathematical models of atmospheric processes are a complicated matter for Quality Assurance (QA). As well as for measurements, QA procedure is oriented to numerical evaluation of the model precision, potential character of distortions and possibilities of their reduction. The procedure should not answer the question “how good this model is”. Normally after obtaining an extensive numerical information about the model quality, investigator takes a decision whether current model meets the requirements of a particular task.

Keywords

Regression Slope Normal Distribution Function Correlation Radius Quality Assurance Procedure Common Model Data 
These keywords were added by machine and not by the authors. This process is experimental and the keywords may be updated as the learning algorithm improves.

Preview

Unable to display preview. Download preview PDF.

Unable to display preview. Download preview PDF.

References

  1. Dalkey N., Helmer (1963), An Experimental Application of the Delphi Method to the Use of Experts, Management science, v.9, p.458Google Scholar
  2. Huber P.J. (1981), Robust statistics, Wiley Series in Probability and Mathematical Statistics, John Wiley and Sons, New Your, Chichester, Brisbane, Toronto.Google Scholar
  3. Johnson N.L., Leone F.C. (1977), Statistics and Experimental Design in Engineering and Physical Sciences, Vol. I, second edition, John Wiley & Sons, New York-London-Sydney-Toronto (Russian edition ДЖонс Н., ЛИон Ф.Статистика и Ппанирвание Эксперимента в Технике и Науке (методы обработки Данных), ред. Лецкий З.К.мир,Москва,1977, 610 стр)Google Scholar
  4. Quade E.S. (1970), An Extent Concept of Model, Proceedings of the 5th International O.R. Conference, J.R. Lawrence (ed.) Tavistock Publ., Ltd., London.Google Scholar
  5. Shannon R.E. (1975) System Simulation Art and Science, Prentice-Hall, Inc. m Engelewood Ciffs, New Jersey, (Russian edition: Шеннон Р. Имитационное Моделирование Снстем-Искусство и Наука, ред. Е.К.Масловский, Москва,Мир, 1978, 301 стр.)Google Scholar
  6. Sofiev M. (1994) Statistical Properties of the Model Verification Problem and Special Methods for Comparison of Measured and Calculated Data, Proceedings of Eurotrac Symposium’94 / ed. Patricia M. Borrel et al-The Hague: SPB Academic Publishing.-I11, p.869.Google Scholar
  7. Sofiev1 M.A. (1996) Quality Assurance of the Model Estimates of Long-Range Air Pollution Transport and Deposition, EUROTRAC Newsletter 17 196, pp.31-33Google Scholar
  8. Sofiev M., Galperin M. (1994), Robustness of Methods for Comparison of Measured and Calculated Data, Proc. of EMEP workshop on the Accuracy of Measurements, EMEP/CCC Rep.2/94Google Scholar
  9. Sofiev M.A., Maslyaev A.M., Gusev A.V. (1996) Heavy metal model intercomparison. Methodology and results for Pb in 1990, EMEP/MSC-E report 2/96, Moscow, March 1996, pp. 100.Google Scholar

Copyright information

© Springer Science+Business Media New York 1998

Authors and Affiliations

  • M. A. Sofiev
    • 1
  1. 1.Hydrometeorological Research Centre of RFMoscowRussia

Personalised recommendations