Spatial-Temporal Trend Modeling for Ozone Concentration in Tehran City

Authors

  • Somayeh Mousavi
Abstract:

 Fitting a suitable covariance function for the correlation structure of spatial-temporal data requires de-trending the data. In this article, some potential models for spatial-temporal trend are presented. Eventually the best model will be announced for de-trending tropospheric ozone concentration data for the city of Tehran (Capital city of Iran). By using the selected trend model, some features of the covariance function of de-trended data will be specified. 

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Journal title

volume 8  issue 2

pages  177- 192

publication date 2012-03

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