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首页> 外文期刊>Atmospheric research >Prediction skill of rainstorm events over India in the TIGGE weather prediction models
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Prediction skill of rainstorm events over India in the TIGGE weather prediction models

机译:TIGGE天气预报模型中印度暴雨事件的预测技巧

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摘要

Extreme rainfall events pose a serious threat of leading to severe floods in many countries worldwide. Therefore, advance prediction of its occurrence and spatial distribution is very essential. In this paper, an analysis has been made to assess the skill of numerical weather prediction models in predicting rainstorms over India. Using gridded daily rainfall data set and objective criteria, 15 rainstorms were identified during the monsoon season (June to September). The analysis was made using three TIGGE (The Observing System Research and Predictability Experiment (THORPEX) Interactive Grand Global Ensemble) models. The models considered are the European Centre for Medium-Range Weather Forecasts (ECMWF), National Centre for Environmental Prediction (NCEP) and the UK Met Office (UKMO). Verification of the TIGGE models for 43 observed rainstorm days from 15 rainstorm events has been made for the period 2007-2015. The comparison reveals that rainstorm events are predictable up to 5 days in advance, however with a bias in spatial distribution and intensity. The statistical parameters like mean error (ME) or Bias, root mean square error (RMSE) and correlation coefficient (CC) have been computed over the rainstorm region using the multi-model ensemble (MME) mean. The study reveals that the spread is large in ECMWF and UKMO followed by the NCEP model. Though the ensemble spread is quite small in NCEP, the ensemble member averages are not well predicted. The rank histograms suggest that the forecasts are under prediction. The modified Contiguous Rain Area (CRA) technique was used to verify the spatial as well as the quantitative skill of the TIGGE models. Overall, the contribution from the displacement and pattern errors to the total RMSE is found to be more in magnitude. The volume error increases from 24 hr forecast to 48 hr forecast in all the three models.
机译:极端降雨事件构成了严重威胁,导致世界许多国家发生严重洪灾。因此,对其发生和空间分布的提前预测非常重要。在本文中,已经进行了分析以评估数值天气预报模型预测印度暴雨的技能。使用网格化的每日降雨数据集和客观标准,在季风季节(6月至9月)期间识别出15次暴雨。使用三个TIGGE(观测系统研究和可预测性实验(THORPEX)互动式全球整体合奏)模型进行了分析。所考虑的模型是欧洲中型天气预报中心(ECMWF),国家环境预测中心(NCEP)和英国气象局(UKMO)。在2007年至2015年期间,已经对15次暴雨事件中观察到的43个暴雨日的TIGGE模型进行了验证。比较表明,暴风雨事件可提前5天预测,但空间分布和强度存在偏差。已经使用多模型集合平均(MME)平均值计算了暴雨区域的统计参数,例如均值误差(ME)或偏差,均方根误差(RMSE)和相关系数(CC)。研究表明,在ECMWF和UKMO中,其传播较大,其次是NCEP模型。尽管在NCEP中集合的传播很小,但是并不能很好地预测集合成员的平均值。等级直方图表明预测处于预测之下。改进的连续雨区(CRA)技术用于验证TIGGE模型的空间和定量技术。总体而言,发现位移和图案误差对总RMSE的贡献更大。在所有三个模型中,体积误差都从预测的24小时增加到预测的48小时。

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