Sorry, you need to enable JavaScript to visit this website.

On the architectural and energy classification of existing buildings: A case study of a district in the city of Palermo

TitoloOn the architectural and energy classification of existing buildings: A case study of a district in the city of Palermo
Tipo di pubblicazionePresentazione a Congresso
Anno di Pubblicazione2016
AutoriFerrante, Paola, Gennusa M.L., Peri G., Porretto V., Sanseverino E.R., and Vaccaro V.
Conference NameEEEIC 2016 - International Conference on Environment and Electrical Engineering
EditoreInstitute of Electrical and Electronics Engineers Inc.
ISBN Number9781509023196
Parole chiaveBuilding sectors, Buildings, Demand and supply, Experimental approaches, Multi-disciplinary approach, Residential building, Scale analysis, Smart cities, Urban energy systems, Zoning
Abstract

Town Administrations are increasingly facing the challenge to identify smart planning actions to reduce the cities' energy demand by improving the efficiency of the urban energy systems. Buildings play an important role in this regarding both the demand and supply energy. In this scenario, the neighborhood or district scale seems to be the most appropriate to implement a multi-disciplinary approach on which smart planning relies. This paper shows the application, to a district of the city of Palermo (Sicily, Italy), of a methodology for architectural-energy classification of existing buildings. Such methodology provides, regarding the building sector, an easy tool that can support smart planning at district scale using data available to the municipalities. The work also shows a first experimental approach for the neighborhoods' characterization. The basic idea guiding this work is to identify possible features and subsequent intervention actions for energy refurbishment in neighborhoods clusters. © 2016 IEEE.

URLhttps://www.scopus.com/inward/record.uri?eid=2-s2.0-84988446675&doi=10.1109%2fEEEIC.2016.7555412&partnerID=40&md5=3dcb0f7af6a49bf6929ce6e0bb8fb384
DOI10.1109/EEEIC.2016.7555412
Citation KeyFerrante2016