Quantitative Forecasting of Soybean Commodity Production in Indonesia using POM-QM Software

Food serves not only as a fundamental requirement for human existence but also embodies a significant economic asset, particularly through the agricultural production of food crops. The objective of this research is to project soybean output in Indonesia utilizing Production and Operations Mana...

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Main Authors: Dhian Herdhiansyah, La Ode Alwi, Asriani Asriani
Format: Article
Language:English
Published: Society for Innovative Agriculture 2025-04-01
Series:Journal of Global Innovations in Agricultural Sciences
Online Access:https://www.jgiass.com/pdf-reader.php?file=Quantitative-Forecasting-of-Soybean-Commodity-Production-in-Indonesia-using-POM-QM-Software.pdf&path=issue_papers
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author Dhian Herdhiansyah
La Ode Alwi
Asriani Asriani
author_facet Dhian Herdhiansyah
La Ode Alwi
Asriani Asriani
author_sort Dhian Herdhiansyah
collection DOAJ
description Food serves not only as a fundamental requirement for human existence but also embodies a significant economic asset, particularly through the agricultural production of food crops. The objective of this research is to project soybean output in Indonesia utilizing Production and Operations Management-Quantitative Method (POM-QM) software. The dataset concerning soybean production spanning from 2000 to 2024 reveals notable variability, characterized by intervals of both scarcity and abundance. Three distinct time-series forecasting methodologies were implemented: Double Moving Average (DMA), Weighted Moving Average (WMA), and Single Exponential Smoothing (SES). The optimal model was determined based on critical precision indicators, which include Mean Absolute Deviation (MAD), Mean Square Error (MSE), and Mean Absolute Percentage Error (MAPE). Among the employed methodologies, WMA emerged as the most precise, demonstrating a MAPE value of 17.89%. The projected soybean production is approximated at 558.3 tons, suggesting an adequate supply to satisfy consumer requirements. It is advisable for the government to leverage these projections to proficiently forecast and strategize for forthcoming national soybean demand. Keywords: Quantitative forecasting, production, soybean commodity, POM-QM
format Article
id doaj-art-c20ee7749111485d9d4e968e7a5c1f1a
institution DOAJ
issn 2788-4538
2788-4546
language English
publishDate 2025-04-01
publisher Society for Innovative Agriculture
record_format Article
series Journal of Global Innovations in Agricultural Sciences
spelling doaj-art-c20ee7749111485d9d4e968e7a5c1f1a2025-08-20T03:07:55ZengSociety for Innovative AgricultureJournal of Global Innovations in Agricultural Sciences2788-45382788-45462025-04-0172773610.22194/JGIAS/25.1577Quantitative Forecasting of Soybean Commodity Production in Indonesia using POM-QM SoftwareDhian HerdhiansyahLa Ode AlwiAsriani Asriani Food serves not only as a fundamental requirement for human existence but also embodies a significant economic asset, particularly through the agricultural production of food crops. The objective of this research is to project soybean output in Indonesia utilizing Production and Operations Management-Quantitative Method (POM-QM) software. The dataset concerning soybean production spanning from 2000 to 2024 reveals notable variability, characterized by intervals of both scarcity and abundance. Three distinct time-series forecasting methodologies were implemented: Double Moving Average (DMA), Weighted Moving Average (WMA), and Single Exponential Smoothing (SES). The optimal model was determined based on critical precision indicators, which include Mean Absolute Deviation (MAD), Mean Square Error (MSE), and Mean Absolute Percentage Error (MAPE). Among the employed methodologies, WMA emerged as the most precise, demonstrating a MAPE value of 17.89%. The projected soybean production is approximated at 558.3 tons, suggesting an adequate supply to satisfy consumer requirements. It is advisable for the government to leverage these projections to proficiently forecast and strategize for forthcoming national soybean demand. Keywords: Quantitative forecasting, production, soybean commodity, POM-QMhttps://www.jgiass.com/pdf-reader.php?file=Quantitative-Forecasting-of-Soybean-Commodity-Production-in-Indonesia-using-POM-QM-Software.pdf&path=issue_papers
spellingShingle Dhian Herdhiansyah
La Ode Alwi
Asriani Asriani
Quantitative Forecasting of Soybean Commodity Production in Indonesia using POM-QM Software
Journal of Global Innovations in Agricultural Sciences
title Quantitative Forecasting of Soybean Commodity Production in Indonesia using POM-QM Software
title_full Quantitative Forecasting of Soybean Commodity Production in Indonesia using POM-QM Software
title_fullStr Quantitative Forecasting of Soybean Commodity Production in Indonesia using POM-QM Software
title_full_unstemmed Quantitative Forecasting of Soybean Commodity Production in Indonesia using POM-QM Software
title_short Quantitative Forecasting of Soybean Commodity Production in Indonesia using POM-QM Software
title_sort quantitative forecasting of soybean commodity production in indonesia using pom qm software
url https://www.jgiass.com/pdf-reader.php?file=Quantitative-Forecasting-of-Soybean-Commodity-Production-in-Indonesia-using-POM-QM-Software.pdf&path=issue_papers
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AT asrianiasriani quantitativeforecastingofsoybeancommodityproductioninindonesiausingpomqmsoftware