基于能源生产前期数据的单、多元线性回归预测能源消费

Quota Alief Sias, Sol Lim, Rahma Gantassi, Yonghoon Choi
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引用次数: 1

摘要

本文描述了使用单线性回归(SLR)和多元线性回归(MLR)方法预测日常能源需求的人工智能(AI)的实现。单反实现使用一个输入变量,即产生的总能量。MLR实现采用多个输入变量,这些输入变量取自各种能源(如天然气、煤炭、地热、水、风能、生物质能、石油等)的详细能源生产数据。通过分析以往的能源生产数据,可以对能源需求进行预测。MLR实现比SLR实现获得更小的误差值,从而表现出更好的性能。本文解释了能源需求和供应可以直接一起分析,从而产生更全面的分析。
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Implementation of Single and Multi Linear Regression for Prediction of Energy Consumption based on Previous Data of Energy Production
This paper describes the implementation of artificial intelligence (AI) using single linear regression (SLR) and multiple linear regression (MLR) methods to predict daily energy needs. SLR implementation is applied using one input variable that is the total energy produced. MLR implementation is applied with more than one input variable, which is taken from detailed energy production data from various energy sources such as gas, coal, geothermal, water, wind, biomass, oil, etc. This paper shows that energy demand prediction can be obtained by analyzing energy production data from previous time. MLR implementation shows better performance because it can get a smaller error value than SLR implementation. This paper explains that energy demand and supply can be analyzed directly together to produce a more comprehensive analysis.
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