Predicting missing Energy Performance Certificates: Spatial interpolation of mixture distributions
Marc Grossouvre,
Didier Rullière,
Jonathan Villot
Affiliations
Marc Grossouvre
Mines Saint-Etienne, CNRS, UMR 6158 LIMOS, Institut Henri Fayol, Departement GMI, Espace Fauriel, 29 rue Ponchardier, Saint-Etienne, 42023, France; U.R.B.S. SAS, Bâtiment des Hautes Technologie, 20 Rue Professeur Benoit LAURAS, Saint-Etienne, 42000, France; Corresponding author at: Mines Saint-Etienne, CNRS, UMR 6158 LIMOS, Institut Henri Fayol, Departement GMI, Espace Fauriel, 29 rue Ponchardier, Saint-Etienne, 42023, France.
Didier Rullière
Mines Saint-Etienne, Univ Clermont Auvergne, CNRS, UMR 6158 LIMOS, Institut Henri Fayol, Espace Fauriel, 29 rue Ponchardier, Saint-Etienne, 42023, France
Jonathan Villot
Mines Saint-Etienne, Univ Lyon, CNRS, Univ Jean Monnet, Univ Lumiere Lyon 2, Univ Lyon 3 Jean Moulin, ENS Lyon, ENTPE, ENSA Lyon, UMR 5600 EVS, Institut Henri Fayol, Saint-Etienne, 42023, France
Mass renovation goals aimed at energy savings on a national scale require a significant level of public financial commitment. To identify target buildings, decision-makers need a thorough understanding of energy performance. Energy Performance Certificates (EPC) provide information about areas of space, such as land plots or a building’s footprint, without specifying exact locations. They cover only a fraction of dwellings. This paper demonstrates that learning from observed EPCs to predict missing ones at the building level can be viewed as a spatial interpolation problem with uncertainty both on input and output variables. The Kriging methodology is applied to random fields observed at random locations to determine the Best Linear Unbiased Predictor (BLUP). Although the Gaussian setting is lost, conditional moments can still be derived. Covariates are admissible, even with missing observations. We present applications using both simulated and real data, with a specific case study of a city in France serving as an example.