关于减少预报误差的多模式超系综技术的说明

L. Kantha, S. Carniel, M. Sclavo
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引用次数: 5

摘要

多模式超系综(SE)技术在改进气象预报方面取得了相当大的成功,现在正应用于海洋模式。尽管该技术已被证明可以产生优于集合中的单个模型或简单的多模型集合预测的确定性预测,但显然需要了解其优势和局限性。本文试图在简单易懂的语境中做到这一点。结果表明,SE预报几乎总是优于简单集合预报,其改善程度取决于集合中模型的性质。然而,东南偏南预报相对于真实预报的能力取决于许多因素,其中最主要的是集合中模型的能力。可以预见的是,如果集合由技能较差的模型组成,则SE预测也将较差,尽管优于集合预测。另一方面,即使在集合中包含单个熟练模型,也会显着提高预测技能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A note on the multimodel superensemble technique for reducing forecast errors
The multimodel superensemble (SE) technique has been used with considerable success to improve meteorological forecasts and is now being applied to ocean models. Although the technique has been shown to produce deterministic forecasts that can be superior to the individual models in the ensemble or a simple multimodel ensemble forecast, there is a clear need to understand its strengths and limitations. This paper is an attempt to do so in simple, easily understood contexts. The results demonstrate that the SE forecast is almost always better than the simple ensemble forecast, the degree of improvement depending on the properties of the models in the ensemble. However, the skill of the SE forecast with respect to the true forecast depends on a number of factors, principal among which is the skill of the models in the ensemble. As can be expected, if the ensemble consists of models with poor skill, the SE forecast will also be poor, although better than the ensemble forecast. On the other hand, the inclusion of even a single skillful model in the ensemble increases the forecast skill significantly.
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