Forecast Verification and Visualization based on Gaussian Mixture Model Co-estimation

نویسندگان

  • Yunhai Wang
  • Chaoran Fan
  • Jian Zhang
  • Tao Niu
  • Song Zhang
  • Jinrong Jiang
چکیده

Precipitation forecast verification is essential to the quality of a forecast. The Gaussian Mixture Model can be used to approximate the precipitation of several rain bands and provide a concise view of the data, which is especially useful for comparing forecast and observation data. The robustness of such comparison mainly depends on the consistency of and the correspondence between the extracted rain bands in the forecast and observation data. We propose a novel co-estimation approach based on Gaussian Mixture Model in which forecast and observation data are analyzed simultaneously. This appoach natually increases the consistency of and correspondence between the extracted rain bands by exploiting the similarity between both forecast and observation data. Moreover, a novel visualization and exploration framework is implemented to help the meteorologists gain insight from the forecast. The proposed approach was applied to the forecast and observation data provided by the China Meteorological Administration. The results are evaluated by meteorologists and novel insight has been gained.

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عنوان ژورنال:
  • Comput. Graph. Forum

دوره 34  شماره 

صفحات  -

تاریخ انتشار 2015