Evaluation of 3D-Var and 4D-Var data assimilation on simulation of heavy rainfall events over the Indian region

IF 2.3 4区 地球科学 Q3 METEOROLOGY & ATMOSPHERIC SCIENCES
Shivaji S. Patel, Ashish Routray, Vivek Singh, R. Bhatla, Rohan Kumar, Elena Surovyatkina
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Abstract

The present study delineates the relative performance of 3D-Var and 4D-Var data assimilation (DA) techniques in the regional NCUM-R model to simulate three heavy rainfall events (HREs) over the Indian region. Four numerical experiments for three extreme rainfall cases were conducted by assimilating different combinations of observations from surface, aircraft, upper-air and satellite-derived Atmospheric Motion Vectors (AMVs) using 3D-Var and 4D-Var techniques. These experiments generated initial conditions (ICs) for the NCUM-R forecast model to simulate HREs. Key atmospheric variables, such as wind speed and direction, vertically integrated moisture transport (VIMT: kg.m−1.s−1), vertical profiles of relative humidity and temperature as well as various stability indices are analysed during the HREs. Forecast verification was performed using statistical skill scores and object-based methods from the METplus tool, comparing NCUM-R output against GPM rainfall data. The results demonstrate that the 4D-Var technique improves simulation accuracy compared to 3D-Var, particularly when assimilating satellite wind data. Incorporating satellite-derived AMVs improved the representation of rainfall intensity and spatial patterns, as well as other atmospheric variables. It is found that rainfall for Case-01, the VIMT was notably high along the eastern coast of India and southwest of BoB, with the 4DVS simulation better capturing moisture transport patterns compared to 3DVS and 3DV. The SWEAT index ranged from 205 to 250 J·kg−1 in the morning, rising to 250–300 J·kg−1 by noon, indicating increasing convective instability. On 18 March 2023 (Day-1), the K-index exceeded 30, signalling scattered thunderstorms, consistent with the IMD's reports of isolated to scattered rainfall on 19th and 20th March 2023. Similarly, it is found that satellite wind assimilation improved the statistical skill scores in predicting heavy precipitation in all three cases. Overall, the study suggested that the performance of the NCUM-R model integrated with the 4D-Var technique improved the model's forecast skill in the simulation of HREs.

Abstract Image

3D-Var和4D-Var资料同化对印度地区强降雨事件模拟的评价
本研究描述了3D-Var和4D-Var数据同化(DA)技术在区域ncm - r模式中模拟印度地区三次强降雨事件(HREs)的相对性能。利用3D-Var和4D-Var技术,利用地面、飞机、高空和卫星大气运动矢量(amv)观测数据的不同组合,对3种极端降雨情况进行了4次数值试验。这些实验为ncm - r预报模型模拟HREs生成了初始条件(ICs)。在HREs期间,分析了风速和风向、垂直综合水汽输送(VIMT: kg.m−1.s−1)、相对湿度和温度的垂直廓线以及各种稳定性指标等关键大气变量。使用METplus工具的统计技能分数和基于对象的方法进行预测验证,将ncm - r输出与GPM降雨数据进行比较。结果表明,与3D-Var相比,4D-Var技术提高了模拟精度,特别是在同化卫星风数据时。结合卫星衍生的amv改进了降雨强度和空间模式以及其他大气变量的表示。研究发现,Case-01、VIMT沿印度东部沿海和印度洋西南部的降水显著高,4DVS模拟比3DVS和3DV模拟更能捕捉水汽输送模式。上午,SWEAT指数在205 ~ 250 J·kg−1之间,中午上升到250 ~ 300 J·kg−1,表明对流不稳定性增加。2023年3月18日(第1天),k指数超过30,显示有分散雷暴,与IMD在2023年3月19日和20日的孤立到分散降雨报告一致。同样地,我们发现卫星风同化提高了三种情况下预测强降水的统计技能得分。综上所述,ncm - r模型与4D-Var技术的结合提高了模型在HREs模拟中的预测能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Meteorological Applications
Meteorological Applications 地学-气象与大气科学
CiteScore
5.70
自引率
3.70%
发文量
62
审稿时长
>12 weeks
期刊介绍: The aim of Meteorological Applications is to serve the needs of applied meteorologists, forecasters and users of meteorological services by publishing papers on all aspects of meteorological science, including: applications of meteorological, climatological, analytical and forecasting data, and their socio-economic benefits; forecasting, warning and service delivery techniques and methods; weather hazards, their analysis and prediction; performance, verification and value of numerical models and forecasting services; practical applications of ocean and climate models; education and training.
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