Neural network retrieval of ocean surface parameters from SSM/I data


Autoria(s): Meng, Lei; He, Yijun; Chen, Jinnian; Wu, Yumei
Data(s)

2007

Resumo

A new algorithm based on the multiparameter neural network is proposed to retrieve wind speed (WS), sea surface temperature (SST), sea surface air temperature, and relative humidity ( RH) simultaneously over the global oceans from Special Sensor Microwave Imager (SSM/I) observations. The retrieved geophysical parameters are used to estimate the surface latent heat flux and sensible heat flux using a bulk method over the global oceans. The neural network is trained and validated with the matchups of SSM/I overpasses and National Data Buoy Center buoys under both clear and cloudy weather conditions. In addition, the data acquired by the 85.5-GHz channels of SSM/I are used as the input variables of the neural network to improve its performance. The root-mean-square (rms) errors between the estimated WS, SST, sea surface air temperature, and RH from SSM/I observations and the buoy measurements are 1.48 m s(-1), 1.54 degrees C, 1.47 degrees C, and 7.85, respectively. The rms errors between the estimated latent and sensible heat fluxes from SSM/I observations and the Xisha Island ( in the South China Sea) measurements are 3.21 and 30.54 W m(-2), whereas those between the SSM/ I estimates and the buoy data are 4.9 and 37.85 W m(-2), respectively. Both of these errors ( those for WS, SST, and sea surface air temperature, in particular) are smaller than those by previous retrieval algorithms of SSM/ I observations over the global oceans. Unlike previous methods, the present algorithm is capable of producing near-real-time estimates of surface latent and sensible heat fluxes for the global oceans from SSM/I data.

Identificador

http://ir.qdio.ac.cn/handle/0/1762

http://www.irgrid.ac.cn/handle/1471x/166867

Fonte

Meng, Lei; He, Yijun; Chen, Jinnian; Wu, Yumei.Neural network retrieval of ocean surface parameters from SSM/I data,MONTHLY WEATHER REVIEW,2007,135(2):586-597

Palavras-Chave #Meteorology & Atmospheric Sciences #SENSOR MICROWAVE IMAGER #AIR-SEA FLUXES #ALGORITHM
Tipo

期刊论文