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Forecasting of Monsoon Heavy Rains: Challenges in NWP

机译:季风大雨预测:NWP挑战

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摘要

Last decade has seen a tremendous improvement in the forecasting skill of numerical weather prediction (NWP) models. This is attributed to increased sophistication in NWP models, which resolve complex physical processes, advanced data assimilation , increased grid resolution and satellite observations. However, prediction of heavy rains is still a challenge since the models exhibit large error in amounts as well as spatial and temporal distribution. Two state-of-art NWP models have been investigated over the Indian monsoon region to assess their ability in predicting the heavy rainfall events. The unified model operational at National Center for Medium Range Weather Forecasting (NCUM) and the unified model operational at the Australian Bureau of Meteorology (Australian Community Climate and Earth-System Simulator - Global (ACCESS-G)) are used in this study. The recent (JJAS 2015) Indian monsoon season witnessed 6 depressions and 2 cyclonic storms which resulted in heavy rains and flooding. The CRA method of verification allows the decomposition of forecast errors in terms of error in the rainfall volume, pattern and location. The case by case study using CRA technique shows that contribution to the rainfall errors come from pattern and displacement is large while contribution due to error in predicted rainfall volume is least.
机译:去年的数十年已经看到了数控天气预报(NWP)模型的预测技能的巨大改进。这归功于NWP模型中的复杂性增加,这解决了复杂的物理过程,高级数据同化,增加的网格分辨率和卫星观察。然而,由于模型在数量和空间和时间分布的情况下表现出大量误差以及空间和时间分布,因此对大雨预测仍然是一个挑战。已经在印度季风地区调查了两个最先进的NWP模型,以评估他们预测大雨事件的能力。在本研究中使用了国家中范围天气预报(NCUM)国家中范围天气预报(NCUM)和统一模型的统一模型和统一模型(澳大利亚社区气候和地球系统模拟器 - 全球(Access-G))。最近(JJAS 2015)印度季风季节目睹了6个萧条和2个循环风暴,导致大雨和洪水。 CRA验证方法允许在降雨量,图案和位置的错误中分解预测误差。通过使用CRA技术的情况表明,对降雨误差的贡献来自图案,位移是大的,而预测降雨量的误差是最少的贡献。

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