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RESEARCH PRODUCT

Data fusion analysis applied to different climate change models: An application to the energy consumptions of a building office

Ilenia TinnirelloFrancesco GuarinoMaurizio CelluraDaniele Croce

subject

Meteorology020209 energyMechanical Engineering0211 other engineering and technologiesClimate change02 engineering and technologyBuilding and ConstructionOverfittingSensor fusionWind speedData setRobustness (computer science)021105 building & construction0202 electrical engineering electronic engineering information engineeringEnvironmental scienceClimate modelClimate change Building simulation Heating and cooling Data fusion IPCC Regression Elastic netElectrical and Electronic EngineeringPredictive modellingCivil and Structural Engineering

description

Abstract The paper aims to achieve the modelling of climate change effects on heating and cooling in the building sector, through the use of the available Intergovernmental Panel on Climate Change forecasted data. Data from several different climate models will be fused with regards to mean air temperature, wind speed and horizontal solar radiation. Several climatic models data were analysed ranging from January 2006 to December 2100. Rather than considering each model in isolation, we propose a data fusion approach for providing a robust combined model for morphing an existing weather data file. The final aim is simulating future energy use for heating and cooling of a reference building as a consequence of the expected climate changes. We compare results, in terms of robustness to overfitting, for two different fusion methodologies, based on the comparison between errors on punctual historical data or prediction models that can be obtained by each climate simulator and by the actual ERA-INTERIM data set. Finally, we map the new aggregated data into a prediction trace of heating and cooling energy requirements. The expected energy demand is in the range of the one provided by single climate models, with a variability that reaches up to the 10% of the overall energy requirements. The approach proposed is an advancement as it allows to achieve better fits with existing re-analysis data if compared to specific global circulation models output data. Thus a more reliable estimation of energy use for heating and cooling can be achieved.

10.1016/j.enbuild.2019.05.002http://hdl.handle.net/10447/357008