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A Reduced Spectral Transform for the NCEP Seasonal Forecast Global Spectral Atmospheric Model

机译:NCEP季节性预报全球光谱大气模型的减少光谱变换

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A reduced spectral transformation is applied to the NCEP atmospheric global spectral model for operational seasonal forecasts. The magnitude of the associated Legendre coefficient provides a basis for this new transformation, which is a simple modification of a traditional reduced grid spectral transform. This transformation can be called a "reduced spectral" method because its Fourier and Legendre transformations need less computation than the traditional uniform full grid or reduced grid methods. In addition, the reduced spectral method saves an extra 50% on Legendre transformations and is easy to load balance for massively parallel computing under certain decompositions. A comparison, without model physics, among reduced spectral, reduced grid, and full grid transforms indicates that they have negligible differences up to more than a half-month integration and small differences up to a 1-month integration. Extended integrations without physics for up to 4 months show that there is proximity of zonal symmetry between reduced spectral and full grid transforms. When the comparison includes model physics, the results show negligible differences up to 7 days; but the chaotic nature, known as an internal variability, is amplified by physical parameterizations and produces significant differences among these methods after a 1-month integration, which is expected. The seasonally averaged results from 10 years of AMIP-type runs are similar between the reduced spectral method and the full grid method, indicating that they have similar model climatology. These experiments indicate that this reduced spectral transform can be used for short-range as well as seasonal or climate predictions.
机译:将减少的光谱变换应用于NCEP大气全球光谱模型,以进行季节性季节预报。关联的勒让德系数的大小为该新变换提供了基础,该变换是对传统缩减网格频谱变换的简单修改。这种变换可以称为“缩减谱”方法,因为其傅立叶变换和Legendre变换比传统的均匀全网格或缩减网格方法需要更少的计算。此外,减少频谱的方法在Legendre转换上节省了额外的50%,并且在某些分解条件下易于进行大规模并行计算的负载平衡。在没有模型物理的情况下,对频谱减少,网格减少和全网格转换的比较表明,在超过半个月的积分之前,它们的差异可以忽略不计,在长达1个月的积分上,它们的差异很小。在没有物理作用的情况下进行长达4个月的扩展积分表明,在减少的频谱变换和完整的网格变换之间存在区域对称性。当比较包括模型物理学时,结果显示长达7天的差异可以忽略不计;但是,通过物理参数设置会放大称为内部可变性的混沌性质,并且在经过1个月的积分后,这些方法之间会产生显着差异,这是可以预期的。缩减光谱法和全网格法在10年的AMIP类型运行中获得的季节性平均结果相似,表明它们具有相似的模式气候。这些实验表明,这种减少的光谱变换可用于短距离以及季节或气候预测。

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