Using a novel multi-variable grey model to forecast the electricity consumption of Shandong Province in China

Energy - Tập 157 - Trang 327-335 - 2018
Lifeng Wu1, Xiaohui Gao1, Yanli Xiao1, Yingjie Yang2, Xiangnan Chen1
1College of Economics and Management, Hebei University of Engineering, Handan 056038, China
2Centre for Computational Intelligence, De Montfort University, Leicester, LE1 9BH, UK

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