COMPARISON OF FORECASTING RICE PRODUCTION IN MAGELANG CITY USING DOUBLE EXPONENTIAL SMOOTHING AND AUTOREGRESSIVE INTEGRATED MOVING AVERAGE (ARIMA)

M. Imron, Hani Khaulasari, Diva Ayu SNM, Jauharotul Inayah, Eka Eliyana S
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Abstract

Magelang City has experienced a significant decline in the rice production sector, triggering the need for forecasting research as the next crucial step. This research aims to forecast rice production in Magelang city. By applying Double Exponential Smoothing and ARIMA methods, the most suitable forecasting model is identified. Data on rice production was obtained from the Badan Pusat Statistik (BPS) of Magelang city. The results revealed that the ARIMA (0,1,1) model with MSE of 479,259 was the best choice. This model is expressed as . Using this model, rice production was forecast from July to December 2023, the forecasting results showed that rice paddy production is expected to fluctuate in the coming months. For July 2023, production is projected to be around 65,1762 units, followed by 51,4779 units in August, 58,2432 units in September, and so on.
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双指数平滑法与自回归综合移动平均法(arima)预测麦戈朗市水稻产量的比较
麦哲郎市的水稻生产部门经历了显著的下降,因此需要进行预测研究,作为下一个关键步骤。本研究旨在预测麦哲郎市水稻产量。应用双指数平滑和ARIMA方法,确定了最合适的预测模型。水稻产量数据来自马格郎市巴丹县统计局(BPS)。结果表明,MSE为479,259的ARIMA(0,1,1)模型是最佳选择。该模型表示为。利用该模型对2023年7 - 12月水稻产量进行了预测,预测结果表明,未来几个月水稻产量将出现波动。到2023年7月,预计产量约为65,1762辆,随后是8月的51,4779辆,9月的58,2432辆,以此类推。
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