Simulating radiative transfer forward model using support vector machine technique[J]. Journal of Remote Sensing, 2009,13(2):257-262. DOI: 10.11834/jrs.20090246.
a technique simulating radiative transfer forward model is presented. Using European Centre for Medium-Range Weather Forecasts (ECMWF) RTTOV
8
7
radiative transfer forward model and 60L
S
D profile database
we simulate the brightness temperature received in AMSU-A instrument. Combine this brightness temperature datasets and correspondence profile datasets as training and validation database. After training the SVM network
the simulating technique is validated. The results show that SVM network describes the nonlinear projection relationship between input space and output space very well
and the simulated brightness temperature of channel 5—14 is precise. The RMS error of channel 6—14 is less than 0.1K and the mean standard deviation is less than 0.01K. In order to find whether SVM simulated brightness temperature is appropriate for temperature retrieval
muti-regression retrieval method is used to retrieve temperature profile. Experiment result shows that the SVM simulate brightness temperature is appropriate for the purpose
and the retrieval precision is not only equally but also a little more precise than the RTTOV