Details
Title
Combined modelling for iron ore demand forecasting with intelligent optimization algorithmsJournal title
Gospodarka Surowcami Mineralnymi - Mineral Resources ManagementYearbook
2021Volume
vol. 37Issue
No 1Affiliation
Ren, Min : Northeastern University, Shenyang, China ; Dai, Jianyong : University of South China, Hengyang, China ; Zhu, Wancheng : Northeastern University, Shenyang ; Dai, Feng : Northeastern University, ShenyangAuthors
Keywords
iron ore demand ; combined model ; intelligent optimization algorithm ; forecasting accuracyDivisions of PAS
Nauki TechniczneCoverage
21-38Publisher
Komitet Zrównoważonej Gospodarki Surowcami Mineralnymi PAN ; Instytut Gospodarki Surowcami Mineralnymi i Energią PANBibliography
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