Super-resolution data assimilation

被引:22
作者
Barthelemy, Sebastien [1 ,2 ]
Brajard, Julien [3 ]
Bertino, Laurent [3 ]
Counillon, Francois [1 ,2 ,3 ]
机构
[1] Univ Bergen, Geophys Inst, Bergen, Norway
[2] Bjerknes Ctr Climate Res, Bergen, Norway
[3] Nansen Environm & Remote Sensing Ctr, Bergen, Norway
基金
欧盟地平线“2020”;
关键词
Super-resolution; Neural network; Ensemble data assimilation; Quasi-geostrophic model; ENSEMBLE DATA; GLOBAL OCEAN; KALMAN FILTER; RESOLUTION;
D O I
10.1007/s10236-022-01523-x
中图分类号
P7 [海洋学];
学科分类号
0707 ;
摘要
Increasing model resolution can improve the performance of a data assimilation system because it reduces model error, the system can more optimally use high-resolution observations, and with an ensemble data assimilation method the forecast error covariances are improved. However, increasing the resolution scales with a cubical increase of the computational costs. A method that can more effectively improve performance is introduced here. The novel approach called "Super-resolution data assimilation" (SRDA) is inspired from super-resolution image processing techniques and brought to the data assimilation context. Starting from a low-resolution forecast, a neural network (NN) emulates the fields to high-resolution, assimilates high-resolution observations, and scales it back up to the original resolution for running the next model step. The SRDA is tested with a quasi-geostrophic model in an idealized twin experiment for configurations where the model resolution is twice and four times lower than the reference solution from which pseudo-observations are extracted. The assimilation is performed with an Ensemble Kalman Filter. We show that SRDA outperforms both the low-resolution data assimilation approach and a version of SRDA with cubic spline interpolation instead of NN. The NN's ability to anticipate the systematic differences between low- and high-resolution model dynamics explains the enhanced performance, in particular by correcting the difference of propagation speed of eddies. With a 25-member ensemble at low resolution, the SRDA computational overhead is 55% and the errors reduce by 40%, making the performance very close to that of the high-resolution system (52% of error reduction) that increases the cost by 800%. The reliability of the ensemble system is not degraded by SRDA.
引用
收藏
页码:661 / 678
页数:18
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