The quantitative precipitation forecast (QPF) performance for heavy rains is still a challenge, even for the most advanced state-of-art high-resolution Nume'/> Skill of Predicting Heavy Rainfall Over India: Improvement in Recent Years Using UKMO Global Model
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Skill of Predicting Heavy Rainfall Over India: Improvement in Recent Years Using UKMO Global Model

机译:预测印度大雨降雨的技能:近年来使用UKMO全球模型的改进

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AbstractThe quantitative precipitation forecast (QPF) performance for heavy rains is still a challenge, even for the most advanced state-of-art high-resolution Numerical Weather Prediction (NWP) modeling systems. This study aims to evaluate the performance of UK Met Office Unified Model (UKMO) over India for prediction of high rainfall amounts (>2 and >5?cm/day) during the monsoon period (JJAS) from 2007 to 2015 in short range forecast up to Day 3. Among the various modeling upgrades and improvements in the parameterizations during this period, the model horizontal resolution has seen an improvement from 40?km in 2007 to 17?km in 2015. Skill of short range rainfall forecast has improved in UKMO model in recent years mainly due to increased horizontal and vertical resolution along with improved physics schemes. Categorical verification carried out using the four verification metrics, namely, probability of detection (POD), false alarm ratio (FAR), frequency bias (Bias) and Critical Success Index, indicates that QPF has improved by >29 and >24% in case of POD and FAR. Additionally, verification scores like EDS (Extreme Dependency Score), EDI (Extremal Dependence Index) and SEDI (Symmetric EDI) are used with special emphasis on verification of extreme and rare rainfall events. These scores also show an improvement by 60% (EDS) and >34% (EDI and SEDI) during the period of study, suggesting an improved skill of predicting heavy rains.
机译:<标题>抽象 ara id =“par1”>大雨的定量降水预测(QPF)性能仍然是一个挑战,即使对于最先进的最先进的高分辨率数值天气预报(NWP) )建模系统。本研究旨在评估英国Met办公室统一模型(UKMO)对印度的表现,以便在短程预测中预测季风期(JJAS)在季风期(JJAS)期间的高降雨量(> 2和> 5?CM /日)最多一天3.在此期间的各种建模升级和改进方面,模型水平分辨率从2007年40 km的改善,2015年的17 km。短程降雨预测在克罗米尔有所改善近年来的模型主要是由于水平和垂直分辨率增加以及改善的物理方案。使用四个验证度量进行的分类验证,即检测概率(POD),误报率(偏差),频率偏差(偏置)和关键成功索引表示,QPF在情况下通过> 29和> 24%提高了改善豆荚和远。此外,EDS(极端依赖性得分),EDI(极端依赖指数)和SEDI(对称EDI)等验证分数用于特别强调验证极端和罕见的降雨事件。这些分数在研究期间还显示出60%(EDS)和> 34%(EDI和SEDI)的改善,表明提高了预测大雨的技能。

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