Influence of model calibration and optimization techniques on the evaluation of thermal comfort and retrofit measures of a Lisbon household using building energy simulation

The European Directive 2018/844 proposes 2050 as the year to stablish ‘a sustainable, (…) and decarbonized energy system’. The Directive points the way at the Member state level, proposing the impr...

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