A Comparative Analytical Study of Many Regression Model Approaches, Arima Model and a Hybrid Model for Forecasting Area, Production, and Productivity of Coconut in Kerala, India

Vaisakh Venu, None Vipin P. R., None Prajitha N. K.
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Abstract

This study is intended to provide reliable and context-specific forecasting methodologies to support sustainable agricultural planning, resource allocation and policy formulation for the coconut industry in Kerala. It evaluates ARIMA models for Kerala’s coconut production area, production, and productivity. The ARIMA (0, 2, 1) model is preferred for the area of coconut production due to the precision of its residual statistics and the normality of its residual plots. The best fit for production and productivity is provided by the polynomial regression model of orders 3 and 9, respectively, which has lower MAPE, RMSE, and higher R2 values than ARIMA models. The hybrid model, which was created using the best-fitting polynomial and ARIMA models, provides a more accurate representation of the data than either the corresponding polynomial or ARIMA model due to its high R2 and low MAPE values. The hybrid models for area, production, and productivity have MAPE and R2 values of 1.78, 3.56, 3.01, and 0.9799, 0.9664, and 0.9395, respectively.
多种回归模型方法、Arima模型与混合模型在印度喀拉拉邦椰子面积、产量和生产力预测中的比较分析研究
本研究旨在为喀拉拉邦椰子产业的可持续农业规划、资源配置和政策制定提供可靠和具体的预测方法。它评估了喀拉拉邦椰子生产面积、产量和生产率的ARIMA模型。由于残差统计量的精度和残差样地的正态性,ARIMA(0,2,1)模型更适合于椰子生产区域。3阶和9阶多项式回归模型对产量和生产率的拟合效果最佳,其MAPE、RMSE和R2值均低于ARIMA模型。使用最佳拟合多项式和ARIMA模型创建的混合模型,由于其高R2和低MAPE值,因此比相应的多项式或ARIMA模型提供了更准确的数据表示。面积、产量和生产力混合模型的MAPE和R2分别为1.78、3.56、3.01和0.9799、0.9664和0.9395。
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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