Development of Prediction System for Crude Palm Oil (CPO) Production with Time Series Data Mining Approach

Achmad Solichin, U. Hasanah, Jayanta
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引用次数: 1

Abstract

Palm oil is a plantation commodity that snowballs when compared to other plantation crops such as coffee or cocoa. The Indonesian palm oil industry has a comparative advantage in the form of a large area of land and the lowest production cost of Crude Palm Oil (CPO) in the world. Indonesia's palm oil production in August 2019 recorded an increase of 14% over the same period in 2018. However, the amount of Indonesia's CPO production can still be optimized and increased. The amount of CPO production is very dependent on several factors, such as weather conditions, land area, and the number of Fresh Fruit Bunches (FFB). To help the Palm Oil Mill (POM), this study compares three data mining algorithms to predict the amount of CPO production based on the number of FFBs. The algorithms being compared are multilayer perceptron (MLP), support vector regression (SVR), and linear regression (LR). Based on test results using test data from a palm oil company in Indonesia, the SVR algorithm can provide higher accuracy than the other two algorithms. The SVR gets a PTA value of 0.694, MSE of 955.002, MAPE of 55.169, and MAD of 22.227. Then, we developed a prototype that applied the SVR algorithm to predict the amount of CPO production. The SQA test results on the prototype resulted in 80.225 software quality in the good category.
基于时间序列数据挖掘方法的粗棕榈油产量预测系统开发
棕榈油是一种种植园商品,与咖啡或可可等其他种植园作物相比,棕榈油是一种滚雪球。印度尼西亚棕榈油产业具有比较优势,其土地面积大,生产粗棕榈油(CPO)的成本在世界上最低。印度尼西亚2019年8月的棕榈油产量比2018年同期增长了14%。然而,印尼的CPO产量仍然可以优化和增加。CPO的产量很大程度上取决于几个因素,如天气条件、土地面积和新鲜水果束(FFB)的数量。为了帮助棕榈油厂(POM),本研究比较了三种数据挖掘算法,以预测基于ffb数量的CPO产量。被比较的算法是多层感知器(MLP)、支持向量回归(SVR)和线性回归(LR)。基于印度尼西亚棕榈油公司测试数据的测试结果,SVR算法比其他两种算法提供更高的精度。SVR的PTA值为0.694,MSE为955.002,MAPE为55.169,MAD为22.227。然后,我们开发了一个原型,应用SVR算法来预测CPO的产量。对原型的SQA测试结果得出80.225的软件质量处于良好类别。
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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