Application of Artificial Neural Networks for Sea-Surface Wind-Speed Retrieval From IRS-P4 (MSMR) Brightness Temperature

被引:11
|
作者
Jena, Babula [1 ]
Swain, Debadatta [2 ]
Tyagi, A. [1 ]
机构
[1] Natl Ctr Antarctic & Ocean Res, Goa 403804, India
[2] Vikram Sarabhai Space Ctr, Space Phys Lab, Trivandrum 695022, Kerala, India
关键词
Artificial neural networks (ANNs); buoy; Indian Remote Sensing Satellite (IRS-P4) Multifrequency Scanning Microwave Radiometer (MSMR); sea-surface wind speed (SSWS); WATER-VAPOR; SATELLITE; OCEAN;
D O I
10.1109/LGRS.2010.2041632
中图分类号
P3 [地球物理学]; P59 [地球化学];
学科分类号
0708 ; 070902 ;
摘要
Indian Remote Sensing Satellite Multifrequency Scanning Microwave Radiometer (MSMR)-measured brightness temperatures (T(B)) in 6.6-, 10.65-, 18-, and 21-GHz channels with dual polarizations were utilized to retrieve sea-surface wind speed (SSWS). A concurrent and collocated database was constructed on MSMR T(B) - and deep-sea (DS)-buoy-recorded wind speeds for the period of June 1999-July 2001 over the north Indian Ocean. A radial-basis-function-based artificial-neural-network (ANN) algorithm was developed to estimate SSWS from MSMR T(B) values. Multiple ANNs were generated by the systematic variation of the architecture of input-and hidden-layer nodes. The performance of the most successful algorithm was evaluated based on statistical summary and network performance. The accuracy of the ANN-based wind-speed algorithm was compared with DS-buoy observations, and the result was then compared with the output of the regression analysis between buoy-and MSMR operational-global- retrieval-algorithm (OGRA)-derived SSWS values. On the average, 84% (92%) of ANN-estimated MSMR SSWS observations are within +/- 2 m/s (+/- 3 m/s) when compared with DS-buoy observations. The correlation and root mean square error of 0.80 and 1.79 m/s, respectively, for ANN-predicted SSWS values are much better than that obtained from OGRA. The performance of the ANN algorithm was also evaluated during a super cyclone (October 1999) over the Bay of Bengal. The ANN algorithm could capture the high cyclonic winds, and the values match reasonably well with Special Sensor Microwave/Imager and Sea Winds Scatterometer (QuikSCAT) operational wind products.
引用
收藏
页码:567 / 571
页数:5
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