首页> 外文期刊>The Indian Journal of Agricultural Sciences >Forecasting of growth rates of wheat yield of Uttar Pradesh through non-linear growth models
【24h】

Forecasting of growth rates of wheat yield of Uttar Pradesh through non-linear growth models

机译:通过非线性增长模型预测北方邦小麦产量增长率

获取原文
获取原文并翻译 | 示例
           

摘要

Wheat production in India is about 70 million tonnes per year which counts for approximately 12 per cent of world's production. Being the second largest in population, it is also the second largest in wheat consumption after China, with a huge and growing wheat demand. Major wheat growing states in India are Uttar Pradesh, Punjab, Haryana, Rajasthan, Madhya Pradesh, Gujarat and Bihar. All of north is replenished with wheat cultivation. Uttar Pradesh, the largest wheat growing region of the country, produces around 28 million tonnes of wheat and Bihar produces around 5 million tonnes. The usual parametric approach for growth rate analysis is to assume multiplicative error in the underlying nonlinear geometric model and then fit the linearized model by 'method of least squares'. This paper deals with a critical study of wheat yield of Uttar Pradesh with a non-linear approach. The available data of rice during different years is taken into consideration and different statistical models are fitted for that. The time series data on annual yield of wheat in UP from 1970-2010 were collected from various sources. Growth rates are computed through non-linear models, viz. Logistic, Gompertz and Monomolecular models. Different nonlinear procedures such as Gauss-Newton Method, Steepest-Descent Method, Levenberg-Merquadt Technique and Do Not Use Derivative (DUD) Method were used in this study to estimate the nonlinear growth rates. The results showed that logistic model performed better followed by Gompertz and monomolecular
机译:印度的小麦年产量约为7,000万吨,约占世界总产量的12%。作为人口第二大国,它也是仅次于中国的第二大小麦消费国,小麦需求量巨大且不断增长。印度主要的小麦种植州是北方邦,旁遮普邦,哈里亚纳邦,拉贾斯坦邦,中央邦,古吉拉特邦和比哈尔邦。整个北部都充满了小麦种植。北方邦是该国最大的小麦产区,生产约2800万吨小麦,而比哈尔邦(Bihar)则生产约500万吨。增长率分析的常用参数方法是在底层非线性几何模型中假设乘法误差,然后通过“最小二乘法”拟合线性化模型。本文采用非线性方法对北方邦小麦产量进行了批判性研究。考虑了不同年份稻米的可用数据,并为此拟合了不同的统计模型。 1970-2010年间UP小麦年产量的时间序列数据来自各种来源。增长率是通过非线性模型来计算的。 Logistic,Gompertz和单分子模型。本研究使用了不同的非线性程序,例如高斯-牛顿法,最速下降法,Levenberg-Merquadt技术和不使用导数(DUD)方法来估计非线性增长率。结果表明Logistic模型表现更好,其次是Gompertz和单分子

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号