In the recent years, existing public buildings have been put under the spotlight for the application of retrofit strategies prescribed by the European Energy Efficiency Directives. Among them, schools have a pivotal role since, besides energy performance, they have to cope also with high indoor environmental quality requirements. However, the definition of a refurbishment policy for the stock of school buildings presents some criticalities: limited data are often available, comprehensive energy audits are too onerous to apply to each school building, and the findings of many case-studies discussed in the literature can be too specific for a robust generalization. In this context, this work proposes a new integrated method for energy audit on large stocks of existing buildings, avoiding case-by-case analyses and focusing on identifying the most significant retrofit areas and priorities of intervention. This approach, based on the combination of different data mining techniques (i.e., Wrapper Feature Selection, Random Forests, Hierarchical and k-medoids Clustering), is meant to deliver a useful tool for the existing buildings’ stock to professionals and Public Administrations. The method is described and discussed, and then applied for validation purpose on a case study of 41 educational buildings in the Province of Treviso, Italy.
A stepwise approach integrating feature selection, regression techniques and cluster analysis to identify primary retrofit interventions on large stocks of buildings
Cappelletti, Francesca;Romagnoni, Piercarlo
2019-01-01
Abstract
In the recent years, existing public buildings have been put under the spotlight for the application of retrofit strategies prescribed by the European Energy Efficiency Directives. Among them, schools have a pivotal role since, besides energy performance, they have to cope also with high indoor environmental quality requirements. However, the definition of a refurbishment policy for the stock of school buildings presents some criticalities: limited data are often available, comprehensive energy audits are too onerous to apply to each school building, and the findings of many case-studies discussed in the literature can be too specific for a robust generalization. In this context, this work proposes a new integrated method for energy audit on large stocks of existing buildings, avoiding case-by-case analyses and focusing on identifying the most significant retrofit areas and priorities of intervention. This approach, based on the combination of different data mining techniques (i.e., Wrapper Feature Selection, Random Forests, Hierarchical and k-medoids Clustering), is meant to deliver a useful tool for the existing buildings’ stock to professionals and Public Administrations. The method is described and discussed, and then applied for validation purpose on a case study of 41 educational buildings in the Province of Treviso, Italy.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.