User behaviour models to forecast electricity consumption of residential customers based on smart metering data

Energy Reports - Tập 8 - Trang 3680-3691 - 2022
Florencia Lazzari1, Gerard Mor1, Jordi Cipriano1, Eloi Gabaldon1, Benedetto Grillone2, Daniel Chemisana3, Francesc Solsona4
1International Center for Numerical Methods in Engineering, Building Energy and Environment Group, CIMNE-Lleida, Pere de Cabrera 16, Office 2G, 25001 Lleida, Spain
2International Center for Numerical Methods in Engineering, Building Energy and Environment, GAIA building (TR14), Rambla Sant Nebridi 22, 08222 Terrassa, Spain
3Applied Physics Section of the Environmental Science Department, University of Lleida, Jaume II 69, 25001 Lleida, Spain
4Department of Computer Science, University of Lleida, Jaume II 69, 25001 , Lleida, Spain

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