Data driven occupancy information for energy simulation and energy use assessment in residential buildings

Energy - Tập 218 - Trang 119539 - 2021
Karthik Panchabikesan1, Fariborz Haghighat1, Mohamed El Mankibi2
1Energy and Environment Group, Department of Building, Civil, And Environmental Engineering, Concordia University, Montreal, H3G 1M8, Canada
2Building and Civil Engineering Laboratory (LGCB), Ecole Nationale des Travaux Publics de l’Etat (ENTPE), Vaulx-en-Velin, Lyon, France

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