Title of article
The impact of spatial correlation and incommensurability on model evaluation
Author/Authors
Swall، نويسنده , , Jenise L. and Foley، نويسنده , , Kristen M.، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2009
Pages
14
From page
1204
To page
1217
Abstract
Standard evaluations of air quality models rely heavily on a direct comparison of monitoring data matched with the model output for the grid cell containing the monitorʹs location. While such techniques may be adequate for some applications, conclusions are limited by such factors as the sparseness of the available observations (limiting the number of grid cells at which the model can be evaluated) and the incommensurability between volume-averages and pointwise observations. We examine several sets of simulations to illustrate the effect of incommensurability in a variety of cases distinguished by the type and extent of spatial correlation present. Block kriging, a statistical method which can be used to address the issue, is then demonstrated using the simulations. Lastly, we apply this method to actual data and discuss the practical importance of understanding the impact of spatial correlation structure and incommensurability.
Keywords
Block Kriging , air quality modeling , Spatial interpolation , statistical simulation
Journal title
Atmospheric Environment
Serial Year
2009
Journal title
Atmospheric Environment
Record number
2234601
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