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首页> 外文期刊>Journal of Geophysical Research, D. Atmospheres: JGR >Model bias correction for dust storm forecast using ensemble Kalman filter
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Model bias correction for dust storm forecast using ensemble Kalman filter

机译:使用集合卡尔曼滤波的沙尘暴预报模型偏差校正

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摘要

First attempt to correct model bias in a dust transport model using ensemble Kalman filter (EnKF) assimilation targeting heavy dust episodes during the period of 15–24 March 2002 over north China is successfully performed. The uncertainty of dust emissions and surface wind fields are taken into account individually and simultaneously to correct their biases. The 24-h surface forecasts are significantly improved with the root mean square error reduced by more than 45% on 20 March and by 50% on 21 March after correcting the biases. The results indicate that there are high biases due to the dust emissions and surface wind fields. These biases converge to the values similar with those obtained in previous sensitivity analyses indicating that the EnKF can accurately correct the bias. The corrected total dust emissions are decreased more than 33%. However, when considered simultaneously, they do not converge to the same results as those considered individually. This indicates that the two biases can compensate for each other in terms of predicted surface dust concentration.
机译:成功进行了针对集合尘埃传播模型的模型偏差的首次尝试,该模型针对2002年3月15日至24日在华北地区发生的重度尘埃事件使用集合卡尔曼滤波器(EnKF)同化。灰尘排放量和地表风场的不确定性将被单独考虑,并同时予以纠正。校正偏倚后,3月20日的均方根误差降低了45%以上,3月21日的3月21日降低了50%,因此24小时的地面预报得到了显着改善。结果表明,由于粉尘排放和地表风场的影响较大。这些偏差收敛到与以前的灵敏度分析中获得的值相似的值,表明EnKF可以准确地校正偏差。校正后的总粉尘排放量减少了33%以上。但是,当同时考虑时,它们不能收敛到与单独考虑时相同的结果。这表明这两个偏差可以根据预测的表面粉尘浓度相互补偿。

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