Use of total precipitable water classification of a priori error and quality control in atmospheric temperature and water vapor sounding retrieval

Advances in Atmospheric Sciences - Tập 29 - Trang 263-273 - 2012
Eun-Han Kwon1,2, Jun Li2,3, Jinlong Li2, B. J. Sohn1, Elisabeth Weisz2
1School of Earth and Environmental Sciences, Seoul National University, Seoul, Korea
2Cooperative Institute for Meteorological Satellite Studies, University of Wisconsin-Madison, Madison, USA
3National Satellite Meteorological Center, China Meteorological Administration, Beijing, China

Tóm tắt

This study investigates the use of dynamic a priori error information according to atmospheric moistness and the use of quality controls in temperature and water vapor profile retrievals from hyperspectral infrared (IR) sounders. Temperature and water vapor profiles are retrieved from Atmospheric InfraRed Sounder (AIRS) radiance measurements by applying a physical iterative method using regression retrieval as the first guess. Based on the dependency of first-guess errors on the degree of atmospheric moistness, the a priori first-guess errors classified by total precipitable water (TPW) are applied in the AIRS physical retrieval procedure. Compared to the retrieval results from a fixed a priori error, boundary layer moisture retrievals appear to be improved via TPW classification of a priori first-guess errors. Six quality control (QC) tests, which check non-converged or bad retrievals, large residuals, high terrain and desert areas, and large temperature and moisture deviations from the first guess regression retrieval, are also applied in the AIRS physical retrievals. Significantly large errors are found for the retrievals rejected by these six QCs, and the retrieval errors are substantially reduced via QC over land, which suggest the usefulness and high impact of the QCs, especially over land. In conclusion, the use of dynamic a priori error information according to atmospheric moistness, and the use of appropriate QCs dealing with the geographical information and the deviation from the first-guess as well as the conventional inverse performance are suggested to improve temperature and moisture retrievals and their applications.

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