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Breeder hybrid algorithm approach for natural gas demand forecasting model

机译:天然气需求预测模型的混合混合算法方法

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A breeder hybrid algorithm consisting of the constitution of nonlinear regression-based breeder genetic algorithm and simulated annealing is proposed for the objective of forecasting the natural gas demand with a smaller error rate. The main aim of this study is to show general natural gas demand forecasting model of the breeder hybrid algorithm based nonlinear regression. The most important difference that distinguishes this natural gas demand forecasting model from other models in the literature is that the proposed model evolves continuously with the best solutions in both the breeder genetic algorithm and simulated annealing parts. It is applied to Turkey natural gas demand forecasting to show its superiority and applicability. The consumption amount of natural gas has between 1985 and 2000 is determined as dependent variable whereas the independent variables are determined as the gross national product, population and the growth rate. Then, the consumption amounts of natural gas between 2001 and 2014 are forecasted with significantly small MAPE values that are obtained 0.0188 and 0.0143 for year 2014 using the proposed algorithms and compared to different solutions in the literature. The proposed algorithms are superior to the comparable algorithms in the literature. Then, two scenarios are applied for the years between 2015 and 2030 for future projection. (C) 2017 Elsevier Ltd. All rights reserved.
机译:为了预测误差较小的天然气需求,提出了一种基于非线性回归的遗传算法和模拟退火算法的遗传算法。这项研究的主要目的是显示基于非线性回归的繁殖者混合算法的一般天然气需求预测模型。将该天然气需求预测模型与文献中的其他模型区分开来的最重要区别是,所提出的模型在种源遗传算法和模拟退火部件中均以最佳解决方案不断发展。它被应用于土耳其天然气需求预测,以显示其优越性和适用性。 1985年至2000年之间的天然气消费量被确定为因变量,而自变量被确定为国民生产总值,人口和增长率。然后,使用建议的算法,使用2001年和2014年分别获得的0.0188和0.0143的非常小的MAPE值,预测2001年至2014年之间的天然气消费量。所提出的算法优于文献中的可比算法。然后,对2015年至2030年之间的年份应用了两种方案,以进行未来的预测。 (C)2017 Elsevier Ltd.保留所有权利。

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