Symposium on Planning, Nowcasting, and Forecasting in the Urban Zone

P1.9

Assimilation of GOES IR data for urban meteorological modeling: evaluation of the importance of subgrid inhomogeneity

Sang-Ok Han, Texas A&M University, College Station, TX; and A. Pour Biazar, R. McNider, J. Nielsen-Gammon, W. Lapenta, K. Doty, and S. L. Haines

A recently-developed technique for assimilating skin temperature tendency information into the land surface characteristics of a mesoscale model simulation is applied to simulations of an ozone episode in Houston, Texas. It is expected that the daytime Houston urban heat island produces local variations in surface temperature, mixing height, and wind. Toward giving simulations of this phenomenon a direct observational basis, satellite-observed changes in surface temperature are used to infer soil moisture availability compatible with the model and with the observed temperature changes. In order to properly resolve the inhomogeneities within Houston itself, the method is applied at a resolution of 4 km for the first time.

The resulting simulations perform well in certain key measures relative to highly-tuned simulations without satellite data assimilation. For example, the mixing heights at sounding locations are more accurate during most of the episode with satellite data assimilation. Wind fields are also improved on critical days when the original model run had difficulty.

Nevertheless, the large subgrid scale variations in land surface characteristics may cause systematic errors in the satellite assimilation technique which would be insignificant over more homogeneous surfaces. Using idealized models, we estimate the magnitude of these errors and develop corrections for them.

The first such error is in the estimate of surface skin temperature itself. While the assimilation technique assumes that the satellite-observed skin temperature represents an average over the image pixel, the actual emissions at the relevant infrared wavelengths from surfaces within the pixel are a strongly nonlinear function of temperature. This introduces a small positive bias in the satellite temperature estimates which depends on the degree of subpixel temperature inhomogeneity.

The second error occurs is caused not by the assimilation technique but by the model itself due to the neglect of subgrid scale variability within the PBL scheme. The neglect of this process causes a small negative bias in the estimation of surface fluxes from an inhomogeneous surface. This effect is quantified with the use of a one-dimensional PBL model. This error, as well, depends on the magnitude of subgrid surface inhomogeneity, so the two errors act to oppose each other.

Poster Session 1, Urban Zone Posters (Hall 4AB)
Monday, 12 January 2004, 2:30 PM-4:00 PM, Hall 4AB

Previous paper  Next paper

Browse or search entire meeting

AMS Home Page