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首页> 外文期刊>Journal of Advances in Modeling Earth Systems >Evaluating the trade?¢????offs between ensemble size and ensemble resolution in an ensemble?¢????variational data assimilation system
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Evaluating the trade?¢????offs between ensemble size and ensemble resolution in an ensemble?¢????variational data assimilation system

机译:评估交易量—集合数据中的集合大小和集合分辨率之间的偏差

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The current NCEP operational four?¢????dimensional ensemble?¢????variational data assimilation system uses a control forecast at T1534 resolution coupled with an 80 member ensemble at T574 resolution. Given an increase in computing resources, and assuming the control forecast resolution is fixed, would it be better to increase the ensemble size and keep the ensemble resolution the same, or increase the ensemble resolution and keep the ensemble size the same? To answer this question, experiments are conducted at reduced resolutions. Two sets of experiments are conducted which both use approximately four times more computational resources than the control experiment that uses a control forecast at T670 and an 80 member ensemble at T254. One increases the ensemble size to 320 but keeps the ensemble resolution at T254; and the other increases the ensemble resolution to T670 but retains an 80 ensemble size. When ensemble size increases to 320, turning off the static component of the background?¢????error covariance does not degrade performance. When the data assimilation parameters are tuned for optimal performance, increasing either ensemble size or ensemble resolution can improve the forecast performance. Increasing ensemble resolution is slightly, but significantly better than increasing ensemble size for these experiments, particularly when considering errors at smaller scales. Much of the benefit of increasing ensemble resolution comes about by eliminating the need for a deterministic control forecast and running all of the background forecasts at the same resolution. In this ?¢????single?¢????resolution?¢???? mode, the control forecast is replaced by an ensemble average, which reduces small?¢????scale errors significantly.
机译:当前的NCEP操作性4维整体集成变分数据同化系统使用T1534分辨率的控制预测与T574分辨率的80个成员的集成。给定计算资源的增加,并假设控制预测分辨率是固定的,那么增加整体大小并保持整体分辨率相同,还是增加整体分辨率并保持整体尺寸更好?为了回答这个问题,以降低的分辨率进行了实验。进行了两组实验,它们使用的计算资源都比使用T670处的控制预测和T254处的80个成员集合的控制实验大约多四倍。一种将整体大小增加到320,但将整体分辨率保持在T254。另一个将整体分辨率提高到T670,但保留80整体大小。当合奏大小增加到320时,关闭背景的静态分量误差协方差不会降低性能。调整数据同化参数以获得最佳性能时,增加总体大小或总体分辨率可以提高预测性能。对于这些实验,增加整体分辨率稍有提高,但比增加整体尺寸要好得多,尤其是在考虑较小规模的误差时。增加整体分辨率的大部分好处来自消除对确定性控制预测的需求,并以相同的分辨率运行所有背景预测。在此?¢ ???????决议??????模式下,控制预测由整体平均代替,这大大减小了小尺度误差。

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