VERIFICATION OF DISTRICT-LEVEL WEATHER FORECAST OF KOLKATA AND ITS SUBURBS DURING MONSOON ‘2019 & 2020 FOR COMPARATIVE STUDY OF THE PERFORMANCE OF MODEL BETWEEN PRE COVID NON-LOCKDOWN AND COVID LOCKDOWN PERIOD

Sukumar Roy
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Abstract

India Meteorological Department has started issuing district-level weather forecasts for up to 5 days on an operational basis from 1st June 2008. The weather parameters related to agro, namely rainfall, maximum and minimum temperature, wind speed, and direction, relative humidity, and cloudiness were chosen for outputs from the model. The rainfall forecast is generated based on multi-model ensemble techniques ( MME ) and ECMWF forecasts ( presently IMDGFS) are used for forecasting other parameters. These forecast generated for the districts of West Bengal by the model is further moderated by State Agro Met. Centre, Kolkata, and forwarded to six Agro Met. Field Units ( created by six agro-climatic zones in West Bengal ) and seven District Agro Met. Unit ( DAMU ) for preparation of weather-based District as well as Block level Agromet advisory bulletin which benefits the farmers in their crop production. Thus forecast verification of the model as well as moderated value for the monsoon season of 2019 and 2020 has been done to make a comparative study of the model performance concerning Kolkata and its suburbs based on Probability of Detection, False alarm, Heidke Skill score, Missing rate, Critical Success Index, True Skill Score, Hanssen, and Kuipers Index, etc. The monsoon rainfall of 2019 and 2020 was chosen to study the performance of the model concerning the pre-covid non-lockdown and covid lockdown period so that the effect of pollutants on the performance of the model can be analyzed. The verification results show that the model forecast, as well as a moderated forecast of this region, has to be more refined by taking inputs of other parameters and index that has been computed by different recent research works on this region because this region is under the influence of tropical climate. Moreover, the comparative study between monsoon 2019 and monsoon 2020 reveals that there have been changes in the performance of the model.
2019年和2020年季风期间加尔各答及其郊区地区级天气预报的验证,以比较covid前非封锁期间和covid封锁期间模型的性能
印度气象局已于2008年6月1日起开始发布最多5天的地区天气预报。与农业相关的天气参数,即降雨量、最高和最低温度、风速和风向、相对湿度和云量被选择作为模型的输出。降雨预报是基于多模式集合技术(MME)生成的,ECMWF预报(现为IMDGFS)用于预报其他参数。这些由模型对西孟加拉邦地区产生的预测由国家农业气象中心进一步调节。加尔各答中心,并转发到6号农业中心。野外单位(由西孟加拉邦的六个农业气候带创建)和七个地区农业中心。单位(DAMU)编制以天气为基础的地区和街区农业咨询公报,这有利于农民的作物生产。因此,对模型的预测验证以及2019年和2020年季风季节的调节值进行了验证,以便基于检测概率、假警报、Heidke技能分数、缺失率、关键成功指数、真实技能分数、hansen和Kuipers指数等,对加尔各答及其郊区的模型性能进行比较研究。选择2019年和2020年的季风降雨,研究新冠肺炎疫情前非封锁期和新冠肺炎疫情封锁期模型的性能,分析污染物对模型性能的影响。验证结果表明,由于该地区受热带气候的影响,模式预报以及对该地区的调节预报还需要进一步细化,需要输入近年来不同研究工作计算的其他参数和指标。此外,2019年季风与2020年季风的对比研究表明,模式的性能发生了变化。
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