哈里亚纳邦Kurukshetra地区气象参数判别函数预测小麦收获前产量

Chetna, Nisha, M. Devi
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摘要

在本文中,应用气象参数的判别函数分析来建立适合的统计模型来预测哈里亚纳邦Kurukshetra地区的小麦产量。35年小麦产量时间序列数据(1985-86 ~ 2019-20年)根据产量的去趋势分布分为适宜、正常和不利三组。将这些群体视为3个总体,利用作物季节周数据对5个气象参数进行判别函数分析。由此得到的判别分数作为回归变量,随时间趋势在统计模型的发展中得到应用。在所有六个程序中,都建议使用每周天气数据。所建立的模型已用于预测2017-18年和2019-20年小麦产量,这两个年份未包括在模型的开发中。研究发现,大多数模型在收获前两个月左右能提供可靠的小麦产量预测。然而,在所有开发的模型中,模型5被发现是最合适的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Forecasting of Pre-harvest Wheat Yield using Discriminant Function Analysis of Meteorological Parameters of Kurukshetra District of Haryana
In the present paper, an application of discriminant function analysis of meteorological parameters for developing suitable statistical models to forecast wheat yield in Kurukshetra district of Haryana has been demonstrated. Time series data on wheat yield for 35 years (1985-86 to 2019-20) have been divided into three groups, viz. congenial, normal, and adverse based on de-trended yield distribution. Considering these groups as three populations, discriminant function analysis using weekly data of crop season on five meteorological parameters has been carried out. The discriminant scores obtained from this have been used as regressor variables along with time trend in development of statistical models. In all six procedures using weekly weather data have been proposed. The models developed have been used to forecast the wheat yield for the year 2017-18 and 2019-20 which were not included in the development of the models. It has been found that most of the models provide reliable forecast of the wheat yield about two months before the harvest. However, the model-5 has been found to be the most suitable among all the models developed.
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