Komparasi Metode Regresi Linier, Exponential Smoothing dan ARIMA Pada Peramalan Volume Ekspor Minyak Kelapa Sawit di Indonesia

Trisna Yuniarti, J. Astuti, Irfan Rusmar, I. Widiana, Fajar Ciputra Daeng Bani
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Abstract

This study aims to compare several methods to get the best methods on forecasting the volume of Indonesian palm oil exports. In addition, this study also aims to estimate the volume of Indonesian palm oil exports for the next five years. Some of the forecasting methods used in this study are linear regression, exponential smoothing, and ARIMA. The data used is historical data on the volume of palm oil exports from 1981 to 2020. The results of calculations and analysis show that the exponential smoothing model of the damped trend method produces the smallest error value compared to other methods, the MAD value is 860,353, the MSE value is 1,707,738,707,222, the RSME value is 1,306,805, and the MAPE value is 20.6%. This method has chosen to be the best forecasting method for the next five years. The forecast results obtained that the volume of Indonesian palm oil exports for the next five years are28.864.223,31 tons, 28.967.062,92 tons, 29.064.976,80 tons, 29.158.200,89 tons, and 29.246.959,81 tons.
比较线性回归方法,Exponential smooma和ARIMA在印度尼西亚的棕榈油出口量
本研究旨在比较几种方法,以获得预测印尼棕榈油出口量的最佳方法。此外,本研究还旨在估计未来五年印尼棕榈油出口量。本研究使用的预测方法有线性回归、指数平滑和ARIMA。使用的数据是1981年至2020年棕榈油出口量的历史数据。计算和分析结果表明,与其他方法相比,阻尼趋势法的指数平滑模型产生的误差值最小,MAD值为860,353,MSE值为1,707,738,707,222,RSME值为1,306,805,MAPE值为20.6%。该方法被认为是未来5年的最佳预测方法。预测结果显示,未来5年印尼棕榈油出口量分别为28.864.223、31吨、28.967.062、92吨、29.064.976、80吨、29.158.200、89吨、29.246.959、81吨。
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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