Forecasting Sales of Premium Oil Fuel, Pertalite, Pertamax, Pertamax Turbo and Bio Solar Using the Method Exponential Moving Average (EMA) (case Study: Klampis Gas Station Surabaya)

M. M. Putra, Rahmawati Febrifyaning Tias, Ayu Dwi Safitri
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Abstract

Along with the development and progress of current technology, fuel oil is one of the basic needs for both industry and transportation, demands will this fuel service becomes very important, and pertamina as the material provider fuel oil, must be able to guarantee the availability and smoothness of fuel products oil. The purpose of this study is to predict the amount of premium sales, pertalite, bio solar, Pertamax, and Pertamax turbo at Klampis Surabaya gas station for 2018 by using the forecasting method Exponential Moving Average ( EMA). Based on the results data processing carried out it can be concluded that the forecasting method that period 30 days are more accurate in predicting Premium, Pertalite, and Bio Solar 2018. And the 365 day period more accurate in predicting Pertamax, and Pertamax Turbo. Based on comparison of values MSE with MAPE, it can be concluded that using the MSE method to find values more good errors in this study. Based on the comparison of MSE values with MAPE, it can be concluded that using the MSE method to find better error valuesin this research.
利用指数移动平均线(EMA)方法预测优质石油燃料、Pertalite、Pertamax、Pertamax Turbo和Bio Solar的销售(案例研究:Klampis加油站泗水)
随着当前技术的发展和进步,燃料油是工业和交通运输的基本需求之一,这种需求将燃料油的服务变得非常重要,而印尼石油公司作为燃料油的原料供应商,必须能够保证燃料油的可用性和畅通性。本研究的目的是利用指数移动平均(EMA)预测方法,预测2018年Klampis泗水加油站的溢价销售额、pertalite、生物太阳能、Pertamax和Pertamax涡轮的数量。通过对结果数据的处理,可以得出周期为30天的预测方法对Premium、Pertalite和Bio Solar 2018的预测更为准确。而365天周期在预测Pertamax和Pertamax Turbo时更为准确。通过比较MSE和MAPE的值,可以得出MSE方法在本研究中找到的值误差更大。通过MSE与MAPE的比较,可以得出MSE方法在本研究中可以找到更好的误差值。
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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