DocumentCode :
42839
Title :
Error Variance Estimation for Individual Geophysical Parameter Retrievals
Author :
Zuoyu Tao ; Blackwell, William J. ; Staelin, D.H.
Author_Institution :
Oracle, Redwood City, CA, USA
Volume :
51
Issue :
3
fYear :
2013
fDate :
Mar-13
Firstpage :
1718
Lastpage :
1727
Abstract :
Neural networks (NNs) are developed for estimating the error variances of individual infrared and microwave atmospheric temperature and humidity profile retrievals, thus potentially significantly improving their assimilation into numerical weather prediction models. Currently, most assimilation processes require error covariance matrices that are typically estimated over diverse profile ensembles. In addition to these “ensemble error variances,” this work explores the estimation of “sample error variances” that are relevant to a single sample of the ensemble (that is, an individual profile retrieval and its error at each pressure level). This analysis is facilitated by considering an individual profile retrieval as the most likely sample from a distribution of retrievals, given an individual sensor observation vector. The sample error variance is defined as the variance of this distribution. The approach described in this paper does not attempt to compute these retrieval distributions explicitly, as this is computationally prohibitive for hyperspectral sounders. Instead, NNs are trained to estimate the variances of these distributions directly. Examples over ocean utilizing AIRS/AMSU soundings on the NASA Aqua satellite and those from a proposed hyperspectral microwave sounder show that the predicted sample error variances agree well with the true sample error variances as determined by European Centre for Medium-Range Weather Forecasts analyzes colocated to the sensor observations. Furthermore, simple quality indicators derived using thresholding of the sample variance estimates compare favorably to AIRS Level-2 Version-5 quality flags.
Keywords :
atmospheric humidity; atmospheric pressure; atmospheric techniques; atmospheric temperature; covariance matrices; error analysis; neural nets; weather forecasting; AIRS Level-2 Version-5 quality; AIRS sounding; AMSU sounding; NASA aqua satellite; assimilation processes; ensemble error variance; error covariance matrices; error variance estimation; geophysical parameter retrieval; humidity profile; hyperspectral microwave sounder; infrared atmospheric temperature; medium-range weather forecasts; microwave atmospheric temperature; neural networks; numerical weather prediction model; ocean; pressure level; profile ensembles; retrieval distributions; sensor observation vector; true sample error variances; Artificial neural networks; Atmospheric modeling; Clouds; Estimation; Ocean temperature; Standards; Training; Atmospheric modeling; geophysical signal processing; hyperspectral sensors; remote sensing;
fLanguage :
English
Journal_Title :
Geoscience and Remote Sensing, IEEE Transactions on
Publisher :
ieee
ISSN :
0196-2892
Type :
jour
DOI :
10.1109/TGRS.2012.2207728
Filename :
6302184
Link To Document :
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