Inversion of Odin limb sounding submillimeter observations by a neural network technique -: art. no. 8062

被引:6
作者
Jiménez, C [1 ]
Eriksson, P [1 ]
Murtagh, D [1 ]
机构
[1] Chalmers Univ Technol, Dept Radio & Space Sci, SE-41296 Gothenburg, Sweden
关键词
neural networks; inversion techniques; limb sounding; atmospheric measurements;
D O I
10.1029/2002RS002644
中图分类号
P1 [天文学];
学科分类号
0704 ;
摘要
[1] The limb sounder radiometer on board the satellite Odin is the first instrument measuring emission from space in the submillimeter region to map atmospheric species. Nonlinear inversions of Odin spectra by iterative approaches are computationally very intensive, so a faster neural network technique has been developed. The technique is tested here by inverting simulated observations in the 544.2-545.0 GHz band, retrieving O-3 by the neural networks and an optimal estimation approach based on the Marquardt-Levenberg algorithm. Special consideration is given here to the implementation of a spectral reduction technique and the treatment of the main random uncertainties. The reduction technique is based on deriving spectral eigenvectors from the weighting functions of the observations and successfully reduced the dimensionality of the spectral space by two orders of magnitude. The random uncertainties are treated by incorporating their possible realizations into the training sets, and inversion of simulated spectra with thermal noise, temperature, and pointing uncertainties gave similar retrieval errors for the neural networks and optimal estimation, with the neural networks being much faster. However, a problem remains because optimal estimation can easily incorporate last-minute a priori information that reduces the random uncertainty and subsequently the retrieval error, but it is not so easy for the neural networks to incorporate the same information.
引用
收藏
页数:8
相关论文
共 15 条
[1]   Studies for the Odin sub-millimetre radiometer.: II.: Retrieval methodology [J].
Baron, P ;
Ricaud, P ;
de la Noë, J ;
Eriksson, JEP ;
Merino, F ;
Ridal, M ;
Murtagh, DP .
CANADIAN JOURNAL OF PHYSICS, 2002, 80 (04) :341-356
[2]  
Bishop C. M., 1995, NEURAL NETWORKS PATT
[3]  
Cressie N, 1993, STAT SPATIAL DATA
[4]  
Demuth H, 2000, NEURAL NETWORK TOOLB
[5]   Studies for the Odin sub-millimetre radiometer:: I.: Radiative transfer and instrument simulation [J].
Eriksson, P ;
Merino, F ;
Murtagh, D ;
Baron, P ;
Ricaud, P ;
de la Noë, J .
CANADIAN JOURNAL OF PHYSICS, 2002, 80 (04) :321-340
[6]  
ERIKSSON P, 2000, ATMOPSHERIC MILLIMET, V2, P57
[7]  
FORESEE FD, 1997, IEEE 1997 INT JOINT
[8]   TRAINING FEEDFORWARD NETWORKS WITH THE MARQUARDT ALGORITHM [J].
HAGAN, MT ;
MENHAJ, MB .
IEEE TRANSACTIONS ON NEURAL NETWORKS, 1994, 5 (06) :989-993
[9]   Ozone profiles from GOME satellite data: Algorithm description and first validation [J].
Hoogen, R ;
Rozanov, VV ;
Burrows, JP .
JOURNAL OF GEOPHYSICAL RESEARCH-ATMOSPHERES, 1999, 104 (D7) :8263-8280
[10]   A neural network technique for inversion of atmospheric observations from microwave limb sounders [J].
Jiménez, C ;
Eriksson, P .
RADIO SCIENCE, 2001, 36 (05) :941-953