Econometric Modeling and Forecasting of Arabica and Robusta Coffee Production for Sustainable Agriculture Development

Ram Prasad Chandra
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Abstract

In the present study, we have used Box-Jenkins approaches an Autoregressive Integrated Moving Average model (ARIMA) for modeling and forecasting of annual amount of Arabica and Robusta coffee production and yield (ARCPY) in India. In this study used time series data was collected from the official website of the coffee board of India from 1986 to 2023 (38 observations). Augmented Dickey-Fuller (ADF) test has used for testing the stationarity of the time series, and the appropriate ARIMA model has selected based on minimum Akaike Information Criterion (AIC). The ARIMA models has compared with the other ARIMA models with respect to forecast accuracy measures, and the residuals has diagnosed for possible presence of autocorrelation, and white noise heteroscedasticity (WNH) test of the fitted models. The MAPE value of ACP and ACY has 8.94 and 9.35 percent respectively shows highly accurate forecasting percentage rate respectively. While, the MAPE value of RCP and RCY has 16.03 and 11.43 percent respectively shows good accurate forecasting percentage rate respectively. Thus, we found the ARIMA (2, 1, 4), (3, 1, 2), (0, 1, 3) and (2, 0, 1) models for Arabica and Robusta coffee; which has observed as the best suitable model for predicting the future annual amount of Arabica coffee production (ACP), Arabica coffee yield (ACY), Robusta coffee production (RCP) and Robusta coffee yield (RCY) respectively, and we have estimated that the annual amount of ACP and ACY achieved in the year 2023-24 from 97379.67 MTs, and 472.29 kg/hectare respectively to 93272.91 MTs, and 379.31 kg/hectare respectively in the year 2034-35 will decrease, and the annual amount of RCP and RCY achieved in the year 2023-24 from 268655.21 MTs, and 1110.68 kg/hectare respectively to 318614.85 MTs, and 1012.90 kg/hectare respectively in the year 2034-35 will reach.
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阿拉比卡和罗布斯塔咖啡生产的计量经济学建模和预测,促进可持续农业发展
在本研究中,我们使用 Box-Jenkins 方法和自回归综合移动平均模型(ARIMA)对印度阿拉比卡咖啡和罗布斯塔咖啡的年产量和收益率(ARCPY)进行建模和预测。本研究使用的时间序列数据来自印度咖啡委员会的官方网站,时间跨度为 1986 年至 2023 年(38 个观测值)。使用扩增迪基-富勒(ADF)检验来测试时间序列的静态性,并根据最小阿凯克信息准则(AIC)选择合适的 ARIMA 模型。ARIMA 模型与其他 ARIMA 模型在预测准确度方面进行了比较,并对残差进行了诊断,以确定是否存在自相关性,同时还对拟合模型进行了白噪声异方差(WNH)检验。ACP 和 ACY 的 MAPE 值分别为 8.94% 和 9.35%,显示预测准确率很高。而 RCP 和 RCY 的 MAPE 值分别为 16.03% 和 11.43%,表明预测准确率较高。因此,我们发现阿拉比卡咖啡和罗布斯塔咖啡的 ARIMA(2,1,4)、(3,1,2)、(0,1,3)和(2,0,1)模型是预测未来阿拉比卡咖啡年产量(ACP)、阿拉比卡咖啡产量(ACY)、罗布斯塔咖啡产量(RCP)和罗布斯塔咖啡产量(RCY)的最佳模型。67公吨和 472.29千克/公顷分别下降到2034-35年的93272.91公吨和379.31千克/公顷,2023-24年的RCP和RCY年产量将分别从268655.21公吨和1110.68千克/公顷下降到2034-35年的318614.85公吨和1012.90千克/公顷。
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