6533b820fe1ef96bd1279264

RESEARCH PRODUCT

Artificial neural network decision support tool for assessment of the energy performance and the refurbishment actions for the non-residential building stock in Southern Italy

Marco BeccaliMarina BonomoloAlessandra GalatiotoGiuseppina CiullaValerio Lo Brano

subject

Architectural engineeringDecision support systemEngineeringDecision support tool020209 energyRetrofit action02 engineering and technologyAudit010501 environmental sciences01 natural sciencesCivil engineeringIndustrial and Manufacturing EngineeringEnergy auditEconomic indicator0202 electrical engineering electronic engineering information engineeringElectrical and Electronic EngineeringStock (geology)0105 earth and related environmental sciencesCivil and Structural EngineeringSettore ING-IND/11 - Fisica Tecnica AmbientaleArtificial neural networkbusiness.industryMechanical EngineeringEnergy performanceBuilding and ConstructionEnergy consumptionPollutionNon-residential buildingEnergy efficiencyGeneral EnergyANNbusinessEfficient energy use

description

The public buildings sector represents one of the most intensive items of EU energy consumption; the application of retrofit solutions in existing buildings is a crucial way to reduce its impact. To facilitate the knowledge of the energy performance of existing non-residential buildings and the choice of the more adequate actions, Public Administrations (PA) should have the availability of proper tools. Within the Italian project "POI 2007-13", a database and a decision support tool, for easy use, even to a non-technical user, have been developed. A large set of data, obtained from the energy audits of 151 existing public buildings located in four regions of South Italy have been analysed, elaborated, and organised in a database. This was used to identify the best architectures of two ANNs and to train them. The first ANN provides the actual energy performance of any building; the second ANN assesses key economic indicators. A decision support tool, based on the use of these ANNs is conceived for a fast prediction of the energy performance of buildings and for a first selection of energy retrofit actions that can be applied.

https://doi.org/10.1016/j.energy.2017.05.200