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PREDICTIVE MODELING TECHNIQUES TO FORECAST ENERGY DEMAND IN THE UNITED STATES: A FOCUS ON ECONOMIC AND DEMOGRAPHIC FACTORS

机译:预测美国能源需求的预测建模技术:专注于经济和人口因素

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Effective energy planning and governmental decision making policies heavily rely on accurate forecast of energy demand. This paper discusses and compares five different forecasting techniques to model energy demand in the United States using economic and demographic factors. Two Artificial Neural Network (ANN) models, two regression analysis models and one autoregressive integrated moving average (ARIMA) model are developed based on historical data from 1950-2013. While ANN model 1 and regression model 1 use Gross Domestic Product (GDP), Gross National Product (GNP) and per capita personal income as independent input factors, ANN model 2 and regression model 2 employ GDP, GNP and population (POP) as the predictive factors. The forecasted values resulted from these models are compared with the forecast made by the U.S. Energy Information Administration (EIA) for the period of 2014-2019. The forecasted results of ANN models and regression model 1 are close to those of the U.S. EIA, however the results of regression model 2 and ARIMA model are significantly different from the forecast made by the U.S. EIA. Finally, a comparison of the forecasted values resulted from three efficient models showed the energy demand would vary between 95.51 and 100.08 quadrillion British thermal unit for the period of 2014-2019.
机译:有效的能源规划和政府决策使政策大幅依赖于准确的能源需求预测。本文讨论了五种不同的预测技术,使用经济和人口因素在美国进行模型能源需求。两个人工神经网络(ANN)模型,两个回归分析模型和一个自动增加的集成移动平均(ARIMA)模型是根据1950 - 2013年的历史数据开发的。虽然ANN模型1和回归模型1使用国内生产总值(GDP),国内生产总值(GNP)和人均个人收入作为独立输入因素,ANN模型2和回归模型2雇用GDP,GNP和人口(POP)作为预测因素。将这些模型导致的预测值与2014 - 2019年期间的美国能源信息管理局(EIA)的预测进行了比较。 ANN模型和回归模型1的预测结果接近美国EIA的结果,但回归模型2和ARIMA模型的结果与美国EIA所做的预测显着不同。最后,从三种有效模型引起的预测值的比较显示,在2014 - 2019年期间的95.51和100.08英国热门单位之间的能量需求会有所不同。

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