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首页> 外文期刊>Journal of Advances in Modeling Earth Systems >A Dynamic Blending Scheme to Mitigate Large‐Scale Bias in Regional Models
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A Dynamic Blending Scheme to Mitigate Large‐Scale Bias in Regional Models

机译:一种动态混合方案,用于缓解区域模型中的大规模偏差

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摘要

Several blending methods have been developed in dynamic downscaling and rapid cycled data assimilation. Blending the large‐scale part of the global model (GM) analysis or forecast has led to improvement in regional model (RM) simulations. However, in previous studies the blended waveband of the GM has generally been determined using a fixed, arbitrarily chosen cutoff wave number. Here we introduce a new dynamic blending (DB) scheme with a dynamic cutoff wave number computed according to the spectral characteristics of GM forecast quality and the spectral distribution of errors in the RM. The DB scheme is described and applied to eight‐day summertime and seven‐day wintertime cycled Weather Research and Forecasting Model forecasts over a regional domain in the continental United States. The scheme can determine a cutoff wave number with significant temporal variations. The temporal variation results from the error growth property of the RM and has a clear diurnal oscillation, suggesting that fewer (more) GM waves should be introduced into the RM at noon (night). The cutoff wave number difference between the two periods indicates seasonal variation of the cutoff wave number with larger day‐to‐day change in winter. Comparison among no blending experiment, two fixed wave number blending experiments, and two DB experiments with and without vertically varying cutoff wave number suggests that the DB scheme with vertically averaged but temporally varying cutoff wave number results in less model bias and less disturbance to the RM dynamic balance. By reducing the forecast background error, the DB scheme can potentially provide improved first guess for a rapid‐update‐cycle weather forecast system. Plain Language Summary Blending is a process to introduce large‐scale information from a global model to mitigate bias of weather forecasting in a regional model. However, in previous studies, the large‐scale waveband that should be introduced into regional model is difficult to determine. This study introduces a new scheme with a dynamic‐scale selection process, named dynamic blending. The dynamic blending method can potentially provide improved first guess for a rapid‐update‐cycle weather forecast system.
机译:已经在动态缩小和快速循环数据同化中开发了几种混合方法。混合全球模型(GM)分析或预测的大规模部分导致区域模型(RM)模拟的改进。然而,在先前的研究中,通常使用固定的任意选择的截止波数来确定GM的混合波带。在这里,我们引入了一种新的动态混合(DB)方案,其具有根据GM预测质量的频谱特性计算的动态截止波数和RM中误差的光谱分布。 DB方案描述于八天夏季,七天冬季循环天气研究和预测模型预测美国大陆区域领域。该方案可以确定具有显着的时间变化的截止波数。时间变化结果来自RM的误差生长特性并且具有明显的昼夜振荡,表明应该更少(更多)转基因波应该在中午(夜晚)的RM中引入RM。两个时段之间的截止波数差异表示冬季日常变化的截止波数的季节变化。在没有混合实验中,两个固定波数混合实验和具有垂直变化的截止波数的两个DB实验表明,具有垂直平均但时间上变化的截止波数的DB方案导致模型偏差较少,对RM的干扰较少动态平衡。通过减少预测背景误差,DB方案可能会提供改进的快速更新周期天气预报系统的改进猜测。简单语言摘要混合是一种从全球模型引入大规模信息的过程,以减轻区域模型中的天气预报偏差。然而,在先前的研究中,难以确定应该引入区域模型的大规模波段。本研究介绍了一种具有动态级选择过程的新方案,名为动态混合。动态混合方法可能会提供改进的快速更新周期天气预报系统的改进猜测。

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