Sapnken Flavian Emmanuel, Acyl Ahmat Khazali, Boukar Michel, Nyobe Serge Luc Biobiongono, Tamba Jean Gaston
Laboratory of Technologies and Applied Science, University Institute of Technology, University of Douala, PO Box 8698, Douala, Cameroon.
Transports and Applied Logistics Laboratory, University Institute of Technology, University of Douala, PO Box 8698, Douala, Cameroon.
MethodsX. 2023 Feb 27;10:102097. doi: 10.1016/j.mex.2023.102097. eCollection 2023.
Forecasting energy consumption is a major concern for policymakers, oil industry companies, and many other associated businesses. Though there exist many forecasting tool, selecting the most appropriate one is critical. GM(1,1) has proven to be one of the most successful forecasting tool. GM(1,1) does not require any specific information and can be adapted to predict energy consumption using a minimum of four observations. Unfortunately, GM(1,1) on its own will generate too large forecast errors because it performs well only when data follow an exponential trend and should be implemented in a political-socio-economic free environment. To reduce these short-comings, this paper proposes a new GM(1,n) convolution model optimized by genetic algorithms integrating a sequential selection mechanism and arc consistency, abbreviated Sequential-GMC(1,n)-GA. The new model, like some recent hybrid versions, is robust and reliable, with MAPE of 1.44%, and RMSE of 0.833.•Modification, extension and optimization of grey multivariate model is done.•The model is very generic can be applied to a wide variety of energy sectors.•The new hybrid model is a valid forecasting tool that can be used to track the growth of households' energy demand.
预测能源消耗是政策制定者、石油行业公司以及许多其他相关企业主要关注的问题。尽管存在许多预测工具,但选择最合适的工具至关重要。GM(1,1)已被证明是最成功的预测工具之一。GM(1,1)不需要任何特定信息,并且可以使用最少四个观测值来预测能源消耗。不幸的是,GM(1,1)本身会产生太大的预测误差,因为它仅在数据呈指数趋势时表现良好,并且应该在政治 - 社会 - 经济自由的环境中实施。为了减少这些缺点,本文提出了一种新的GM(1,n)卷积模型,该模型通过集成顺序选择机制和弧一致性的遗传算法进行优化,简称为Sequential - GMC(1,n) - GA。新模型与最近的一些混合版本一样,具有鲁棒性和可靠性,平均绝对百分比误差(MAPE)为1.44%,均方根误差(RMSE)为0.833。
• 完成了灰色多元模型的修改、扩展和优化。
• 该模型非常通用,可应用于广泛的能源领域。
• 新的混合模型是一种有效的预测工具,可用于跟踪家庭能源需求的增长。