A Machine Learning Approach to the Observation Operator for Satellite Radiance Data Assimilation

被引:6
|
作者
Liang, Jianyu [1 ,2 ,6 ]
Terasaki, Koji [1 ,2 ,7 ]
Miyoshi, Takemasa [1 ,2 ,3 ,4 ,5 ]
机构
[1] RIKEN Ctr Computat Sci, Data Assimilat Res Team, Kobe, Japan
[2] RIKEN Cluster Pioneering Res, Predict Sci Lab, Kobe, Japan
[3] RIKEN interdisciplinary Theoret & Math Sci iTHEMS, Wako, Japan
[4] Japan Agcy Marine Earth Sci & Technol JAMSTEC, Applicat Lab, Yokohama, Japan
[5] Univ Maryland, Dept Atmospher & Ocean Sci, Maryland, NY USA
[6] RIKEN Ctr Computat Sci, 7-1-26 Minatojima Minami Machi,Chuo Ku, Kobe, Hyogo 6500047, Japan
[7] Japan Meteorol Agcy, Meteorol Res Inst, Ibaraki, Japan
关键词
satellite radiance data assimilation; machine learning; neural network; observation operator; forward operator; RADIATIVE-TRANSFER MODEL; WATER;
D O I
10.2151/jmsj.2023-005
中图分类号
P4 [大气科学(气象学)];
学科分类号
0706 ; 070601 ;
摘要
The observation operator (OO) is essential in data assimilation (DA) to derive the model equivalent of obser-vations from the model variables. In the satellite DA, the OO for satellite microwave brightness temperature (BT) is usually based on the radiative transfer model (RTM) with a bias correction procedure. To explore the possi-bility to obtain OO without using physically based RTM, this study applied machine learning (ML) as OO (ML-OO) to assimilate BT from Advanced Microwave Sounding Unit-A (AMSU-A) channels 6 and 7 over oceans and channel 8 over both land and oceans under clear-sky conditions. We used a reference system, consisting of the nonhydrostatic icosahedral atmospheric model (NICAM) and the local ensemble transform Kalman filter (LETKF). The radiative transfer for TOVS (RTTOV) was implemented in the system as OO, combined with a separate bias correction procedure (RTTOV-OO). The DA experiment was performed for 1 month to assimilate conventional observations and BT using the reference system. Model forecasts from the experiment were paired with observa-tions for training the ML models to obtain ML-OO. In addition, three DA experiments were conducted, which re-vealed that DA of the conventional observations and BT using ML-OO was slightly inferior, compared to that of RTTOV-OO, but it was better than the assimilation based on only conventional observations. Moreover, ML-OO treated bias internally, thereby simplifying the overall system framework. The proposed ML-OO has limitations due to (1) the inability to treat bias realistically when a significant change is present in the satellite characteristics, (2) inapplicability for many channels, (3) deteriorated performance, compared with that of RTTOV-OO with respect to accuracy and computational speed, and (4) physically based RTM is still used to train the ML-OO. Future studies can alleviate these drawbacks, thereby improving the proposed ML-OO.
引用
收藏
页码:79 / 95
页数:17
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