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Short-Range Numerical Weather Prediction of Extreme Precipitation Events Using Enhanced Surface Data Assimilation

机译:使用增强表面数据同化的极端降水事件的短程数值天气预报

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A limited-area kilometre scale numerical weather prediction system is applied to evaluate the effect of refined surface data assimilation on short-range heavy precipitation forecasts. The refinements include a spatially dependent background error representation, use of a flow-dependent data assimilation technique, and use of data from a satellite-based scatterometer instrument. The effect of the enhancements on short-term prediction of intense precipitation events is confirmed through a number of case studies. Verification scores and subjective evaluation of one particular case points at a clear impact of the enhanced surface data assimilation on short-range heavy precipitation forecasts and suggest that it also tends to slightly improve them. Although this is not strictly statistically demonstrated, it is consistent with the expectation that a better surface state should improve rainfall forecasts.
机译:应用有限区域的公里规模数值天气预报系统,以评估精致表面数据同化对短程重水降水预测的影响。该改进包括空间依赖的背景错误表示,使用流相关的数据同化技术,以及使用来自卫星散射计仪器的数据。通过许多案例研究证实了增强对强度降水事件短期预测的影响。验证分数和对一个特殊情况的主观评价在显性影响的表面数据同化对短程重度降水预测的情况下,表明它还易于改善它们。虽然这并不严格统计证明,但它与期望更好的表面状态应该改善降雨预测。

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