Back to Search Start Over

Chaos particle swarm optimization combined with circular median filtering for geophysical parameters retrieval from Windsat

Authors :
Zhenzhan Wang
Lei Zhang
Zhiyong Long
Huadong Du
Hanqing Shi
Source :
Journal of Ocean University of China. 15:593-605
Publication Year :
2016
Publisher :
Springer Science and Business Media LLC, 2016.

Abstract

This paper established a geophysical retrieval algorithm for sea surface wind vector, sea surface temperature, columnar atmospheric water vapor, and columnar cloud liquid water from WindSat, using the measured brightness temperatures and a matchup database. To retrieve the wind vector, a chaotic particle swarm approach was used to determine a set of possible wind vector solutions which minimize the difference between the forward model and the WindSat observations. An adjusted circular median filtering function was adopted to remove wind direction ambiguity. The validation of the wind speed, wind direction, sea surface temperature, columnar atmospheric water vapor, and columnar liquid cloud water indicates that this algorithm is feasible and reasonable and can be used to retrieve these atmospheric and oceanic parameters. Compared with moored buoy data, the RMS errors for wind speed and sea surface temperature were 0.92 m s−1 and 0.88°C, respectively. The RMS errors for columnar atmospheric water vapor and columnar liquid cloud water were 0.62 mm and 0.01 mm, respectively, compared with F17 SSMIS results. In addition, monthly average results indicated that these parameters are in good agreement with AMSR-E results. Wind direction retrieval was studied under various wind speed conditions and validated by comparing to the QuikSCAT measurements, and the RMS error was 13.3°. This paper offers a new approach to the study of ocean wind vector retrieval using a polarimetric microwave radiometer.

Details

ISSN :
19935021 and 16725182
Volume :
15
Database :
OpenAIRE
Journal :
Journal of Ocean University of China
Accession number :
edsair.doi...........44e2074d581251e9f170976f9b94f364