Publication | Open Access
Discovering Knowledge from a Residential Building Stock through Data Mining Analysis for Engineering Sustainability
18
Citations
12
References
2015
Year
EngineeringEnergy EfficiencyGreen BuildingBuilding Energy ConservationBuilding TechnologySocial SciencesBuilt EnvironmentEnergy RefurbishmentData ScienceData MiningKnowledge Discovery ProcessResidential Building StockData Mining AnalysisHousingEngineering SustainabilityKnowledge DiscoverySustainable BuildingBuilding EnergyPhysical AttributesBuilding PerformanceLow-energy HouseEnergy ManagementCivil EngineeringConstruction ManagementPhysical VariablesK-means Algorithm
In this paper, a dataset of 92,906 dwellings was analysed adopting data mining techniques for the classification of heating and domestic hot water primary energy demand and for the evaluation of the most influencing factors. The sample was classified in three energy demand categorical variables (Low, Medium, High) considering different geometrical and physical attributes. The output of the model made it possible to set reference threshold values among the physical variables. Moreover, high energy demand dwellings were analysed in depth using a k-means algorithm in order to evaluate the design variables which need to be considered in a refurbishment process.
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