Day-ahead industrial load forecasting for electric RTG cranes

Feras Alasali1, Stephen Haben2, Victor M. Becerra3, William Holderbaum4,1
1School of Systems Engineering, University of Reading, Berkshire, UK
2Mathematical Institute, University of Oxford, Oxford, UK
3School of Engineering, University of Portsmouth, Portsmouth, UK
4School of Engineering, Metropolitan Manchester University, Manchester, UK

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