Efficient buildings are an essential component of sustainability and energy transitions, which represent today a technoeconomic and socio-economic problem. New paradigms are emerging both for new and existing buildings (e.g. NZEBs) and passive design strategies are becoming increasingly common. However, the adoption of these strategies has to be carefully evaluated to prevent overheating in intermediate seasons and increasing cooling loads in summer, considering also climate change scenarios. Additionally, the variability of occupant comfort behaviour is generally neglected during design. The research presented aims at verifying the suitability of a simple, scalable calibration approach (based on multivariate linear regression) to link design and operational performance analysis transparently, using a Passive House case study building. First, the original baseline design configuration is compared with a larger spectrum of data generated by means of parametric simulation, following a Design of Experiment (DOE) approach. After that, regression models are trained first on simulation data and then progressively calibrated on measured data during a three year monitoring period. The two fundamental objectives are evaluating the robustness of design phase performance analysis through parametric simulation (i.e. detecting potentially critical assumptions) and maintaining a continuity with operation phase performance analysis (i.e. exploiting the feed-back from measured data).
Lamberto Tronchin, M.M. (2018). Linking design and operation performance analysis through model calibration: Parametric assessment on a Passive House building. ENERGY, 165(A), 26-40 [10.1016/j.energy.2018.09.037].
Linking design and operation performance analysis through model calibration: Parametric assessment on a Passive House building
Lamberto Tronchin;
2018
Abstract
Efficient buildings are an essential component of sustainability and energy transitions, which represent today a technoeconomic and socio-economic problem. New paradigms are emerging both for new and existing buildings (e.g. NZEBs) and passive design strategies are becoming increasingly common. However, the adoption of these strategies has to be carefully evaluated to prevent overheating in intermediate seasons and increasing cooling loads in summer, considering also climate change scenarios. Additionally, the variability of occupant comfort behaviour is generally neglected during design. The research presented aims at verifying the suitability of a simple, scalable calibration approach (based on multivariate linear regression) to link design and operational performance analysis transparently, using a Passive House case study building. First, the original baseline design configuration is compared with a larger spectrum of data generated by means of parametric simulation, following a Design of Experiment (DOE) approach. After that, regression models are trained first on simulation data and then progressively calibrated on measured data during a three year monitoring period. The two fundamental objectives are evaluating the robustness of design phase performance analysis through parametric simulation (i.e. detecting potentially critical assumptions) and maintaining a continuity with operation phase performance analysis (i.e. exploiting the feed-back from measured data).File | Dimensione | Formato | |
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