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Altimeter significant wave height data assimilation in the South China Sea using Ensemble Optimal Interpolation

Altimeter significant wave height data assimilation in the South China Sea using Ensemble Optimal Interpolation
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摘要 The application of ensemble optimal interpolation in wave data assimilation in the South China Sea is presented. A sampling strategy for a stationary ensemble is first discussed. The stationary ensemble is constructed by sampling from 24-h-interval significant wave height differences of model outputs over a long period,and is validated with altimeter significant wave height data,indicating that the ensemble errors have nearly the same probability distribution function. The background error covariance fields expressed by the ensemble sampled are anisotropic. Updating the static samples by season,the seasonal characteristics of the correlation coefficient distribution are reflected. Hindcast experiments including assimilation and control runs are conducted for the summer of 2010 in the South China Sea. The effect of ensemble optimal interpolation assimilation on wave hindcasts is validated using different satellite altimeter data(Jason-1 and 2 and ENVISAT) and buoy observations. It is found that the ensemble-optimal-interpolation-based wave assimilation scheme for the South China Sea achieves improvements similar to those of the previous optimal-interpolation-based scheme,indicating that the practical application of this computationally cheap ensemble method is feasible. The application of ensemble optimal interpolation in wave data assimilation in the South China Sea is presented. A sampling strategy for a stationary ensemble is first discussed. The stationary ensemble is constructed by sampling from 24-h-interval significant wave height differences of model outputs over a long period, and is validated with altimeter significant wave height data, indicating that the ensemble errors have nearly the same probability distribution function. The background error covariance fields expressed by the ensemble sampled are anisotropic. Updating the static samples by season, the seasonal characteristics of the correlation coefficient distribution are reflected. Hindcast experiments including assimilation and control runs are conducted for the summer of 2010 in the South China Sea. The effect of ensemble optimal interpolation assimilation on wave hindcasts is validated using different satellite altimeter data (Jason-1 and 2 and ENVISAT) and buoy observations. It is found that the ensemble-optimal-interpolation-based wave assimilation scheme for the South China Sea achieves improvements similar to those of the previous optimal-interpolation-based scheme, indicating that the practical application of this computationally cheap ensemble method is feasible.
出处 《Chinese Journal of Oceanology and Limnology》 SCIE CAS CSCD 2015年第5期1309-1319,共11页 中国海洋湖沼学报(英文版)
基金 Supported by the National Special Research Fund for Non-Profit Marine Sector(Nos.201005033,201105002) the National Natural Science Foundation of China(No.U1133001) the National High Technology Research and Development Program of China(863 Program)(No.2012AA091801) the NSFC-Shandong Joint Fund for Marine Science Research Centers(No.U1406401)
关键词 ensemble optimal interpolation wave assimilation stationary ensemble 资料同化 南海海域 集合 插值方法 最优插值法 ENVISAT 误差协方差 季节性特征
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