Detecting cloud contamination in passive microwave satellite measurements over land

被引:7
作者
Favrichon, Samuel [1 ]
Prigent, Catherine [1 ]
Jimenez, Carlos [2 ]
Aires, Filipe [1 ]
机构
[1] Sorbonne Univ, Observ Paris, Univ PSL, CNRS,LERMA, Paris, France
[2] Estellus, Paris, France
关键词
SURFACE-TEMPERATURE; LIQUID WATER; CLASSIFICATION; EMISSIVITIES; RETRIEVAL; ALGORITHM;
D O I
10.5194/amt-12-1531-2019
中图分类号
P4 [大气科学(气象学)];
学科分类号
0706 ; 070601 ;
摘要
Remotely sensed brightness temperatures from passive observations in the microwave (MW) range are used to retrieve various geophysical parameters, e.g. near-surface temperature. Cloud contamination, although less of an issue at MW than at visible to infrared wavelengths, may adversely affect retrieval quality, particularly in the presence of strong cloud formation (convective towers) or precipitation. To limit errors associated with cloud contamination, we present an index derived from stand-alone MW brightness temperature observations, which measure the probability of residual cloud contamination. The method uses a statistical neural network model trained with the Global Precipitation Microwave Imager (GMI) observations and a cloud classification from Meteosat Second Generation-Spinning Enhanced Visible and Infrared Imager (MSG-SEVIRI). This index is available over land and ocean and is developed for multiple frequency ranges to be applicable to successive generations of MW imagers. The index confidence increases with the number of available frequencies and performs better over the ocean, as expected. In all cases, even for the more challenging radiometric signatures over land, the model reaches an accuracy of >= 70% in detecting contaminated observations. Finally an application of this index is shown that eliminates grid cells unsuitable for land surface temperature estimation.
引用
收藏
页码:1531 / 1543
页数:13
相关论文
共 35 条
[1]   A new neural network approach including first guess for retrieval of atmospheric water vapor, cloud liquid water path, surface temperature, and emissivities over land from satellite microwave observations [J].
Aires, F ;
Prigent, C ;
Rossow, WB ;
Rothstein, M .
JOURNAL OF GEOPHYSICAL RESEARCH-ATMOSPHERES, 2001, 106 (D14) :14887-14907
[2]   A Land and Ocean Microwave Cloud Classification Algorithm Derived from AMSU-A and -B, Trained Using MSG-SEVIRI Infrared and Visible Observations [J].
Aires, Filipe ;
Marquisseau, Francis ;
Prigent, Catherine ;
Seze, Genevieve .
MONTHLY WEATHER REVIEW, 2011, 139 (08) :2347-2366
[3]  
Berg W., 2016, GPM GMI R COMMON CAL, DOI [10.5067/GPM/GMI/R/1C/05, DOI 10.5067/GPM/GMI/R/1C/05]
[4]  
Bridle J. S., 1990, Neurocomputing, P227
[5]   A cloud filtering method for microwave upper tropospheric humidity measurements [J].
Buehler, S. A. ;
Kuvatov, M. ;
Sreerekha, T. R. ;
John, V. O. ;
Rydberg, B. ;
Eriksson, P. ;
Notholt, J. .
ATMOSPHERIC CHEMISTRY AND PHYSICS, 2007, 7 (21) :5531-5542
[6]  
Chollet F., 2015, Keras
[7]   MSG/SEVIRI cloud mask and type from SAFNWC [J].
Derrien, M ;
Le Gleau, H .
INTERNATIONAL JOURNAL OF REMOTE SENSING, 2005, 26 (21) :4707-4732
[8]   Logistic regression and artificial neural network classification models: a methodology review [J].
Dreiseitl, S ;
Ohno-Machado, L .
JOURNAL OF BIOMEDICAL INFORMATICS, 2002, 35 (5-6) :352-359
[10]  
Finkensieper S., 2016, Satell. Appl. Facil. Clim. Monit, DOI [10.5676/EUM_SAF_CM/CLAAS/V002, DOI 10.5676/EUM_SAF_CM/CLAAS/V002]