DocumentCode :
3603554
Title :
Variational Bayes and the Principal Component Analysis Coupled With Bayesian Regulation Backpropagation Network to Retrieve Total Precipitable Water (TPW) From GCOM-W1/AMSR2
Author :
Islam, Tanvir ; Srivastava, Prashant K. ; Petropoulos, George P.
Author_Institution :
Jet Propulsion Lab., California Inst. of Technol., Pasadena, CA, USA
Volume :
8
Issue :
10
fYear :
2015
Firstpage :
4819
Lastpage :
4824
Abstract :
The Bayes Principal components Backpropagation Network (BPBN) is proposed to retrieve total precipitable water (TPW) from the AMSR2 instrument on-board recently launched GCOM-W1 satellite. The proposed algorithm is a physical inversion method, developed using a radiative transfer model to assure that the geophysical retrieval of the TPW is consistent with the radiative transfer theory. The algorithm is comprised of- a Bayes variational algorithm for bias correction, the principal components transformation of the bias-corrected radiometric brightness temperature, and finally, a Bayesian regulation backpropagation network to translate the principal components to TPW estimate in the geophysical space. The algorithm is applicable over ocean, and in clear and cloudy scenes. However, the rainy and sea ice scenes are excluded in the retrieval. A random forest classifier and NASA sea ice temperature retrieval algorithm are used to detect and suppress the rainy and sea ice scenes, respectively. On the whole, the BPBN is a “comprehensive” algorithm, from discarding the redundant scenes to transforming the radiometric information to TPW estimate, and doesn´t use any auxiliary data. This will make it very useful for assimilating into the numerical weather prediction models. The retrieval accuracy of the BPBN algorithm is around 2 kg/m2.
Keywords :
atmospheric precipitation; atmospheric techniques; ocean temperature; oceanographic techniques; remote sensing; sea ice; weather forecasting; AMSR2 instrument; BPBN algorithm; Bayes principal components backpropagation network; Bayes variational algorithm; Bayesian regulation backpropagation network; GCOM-W1 satellite; GCOM-W1-AMSR2; NASA sea ice temperature retrieval algorithm; TPW geophysical retrieval; auxiliary data; bias-corrected radiometric brightness temperature; geophysical space; numerical weather prediction models; principal component analysis; principal component transformation; radiative transfer model; radiative transfer theory; rainy scenes; random forest classifier; sea ice scenes; total precipitable water; variational Bayes; Atmospheric modeling; Backpropagation; Bayes methods; Ocean temperature; Principal component analysis; Sea ice; Sea measurements; $H_2 O$ absorption; Atmospheric moisture retrieval; European Centre for Medium-Range Weather Forecasts (ECMWF) analysis; H2O absorption; data assimilation; inversion algorithm; passive microwave radiometer; radiative transfer model; radiosonde; sea ice screening; water vapor sounding;
fLanguage :
English
Journal_Title :
Selected Topics in Applied Earth Observations and Remote Sensing, IEEE Journal of
Publisher :
ieee
ISSN :
1939-1404
Type :
jour
DOI :
10.1109/JSTARS.2015.2447532
Filename :
7152861
Link To Document :
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