对LPG 3KG气体供应的分析比较使用了线性回归和k -手段

Annisa Rismanitanti, Rima Mawarni, Sidik Rahmatullah, Dwi Marisa Efendi, Sulis Nurbaiti
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引用次数: 0

摘要

石油和天然气行业对印尼的国家发展具有重要意义。在石油和天然气行业,一个值得关注的有趣商品是液化石油气。液化石油气是一种在压力下液化的碳氢化合物气体,便于储存、运输和处理,主要成分由丙烷/C3、丁烷/C4组成,或者可以混合生产混合液化石油气。此时PT. BLORA MUSTIKA不关注家庭需求何时增加,何时不增加,这意味着液化石油气数据没有正确使用,只是记录。当然,这使得PT BLORA MUSTIKA无法预测次级分销商的需求,并导致液化石油气经常供应不足,导致社区难以获得3公斤液化石油气。这个问题可以与多元线性回归和K-Means方法进行计算和比较。通过使用多元线性回归和K-Means方法,希望它将使PT. BLORA MUSTIKA更容易确定子分销商的需求预测,从而不存在LPG天然气供应短缺,哪种方法可以获得更有效和高效的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PERBANDINGAN PENGOLAHAN DATA PREDIKSI PERSEDIAAN GAS LPG 3KG MENGGUNAKAN REGRESI LINIER BERGANDA DAN K-MEANS
he oil and natural gas sector is a sector that is used with great importance for Indonesia's national development. An interesting commodity to watch out for in the oil and gas industry is liquefied petroleum gas (LPG). LPG is a hydrocarbon gas that has been liquefied under pressure to facilitate storage, transportation, and handling and the main ingredients consist of propane/C3, butane/C4 or can be mixed to produce mixed LPG..At this time PT. BLORA MUSTIKA does not focus on when household needs increase and when not, the meaning of this is that LPG gas data is not used properly and is only recorded, this of course makes PT BLORA MUSTIKA unable to predict demand from sub-distributors and results in frequent an empty supply of LPG gas causing difficulties for the community to obtain 3 Kg LPG gas. This problem can be calculated and compared with the Multiple Linear Regression and K-Means methods.By using the Multiple Linear Regression and K-Means method, it is hoped that it will make it easier for PT. BLORA MUSTIKA in determining demand predictions from sub-distributors so that there is no shortage of LPG gas supplies and which method can be obtained which is more effective and efficient.
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