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Future application of probabilistic methods for building performance simulations

Ekström, Tomas LU (2020) BuildSim Nordic 2020
Abstract
Many countries strive for continued reductions in energy demand from new buildings as a way of mitigating the impact of climate change. Consequently, the importance of accurate and efficient building performance simulations (BPS) increases to improve the prediction in energy demand during the design-process for buildings. As observed in earlier studies, there is currently a performance gap between the predicted annual energy demand from BPS based on deterministic methods compared to the measured annual energy use of a building. The performance gap is dependent on several parameters and types of uncertainties, as shown in previous studies. Using a probabilistic method, with stochastic input data using the Monte Carlo-method and dynamic BPS... (More)
Many countries strive for continued reductions in energy demand from new buildings as a way of mitigating the impact of climate change. Consequently, the importance of accurate and efficient building performance simulations (BPS) increases to improve the prediction in energy demand during the design-process for buildings. As observed in earlier studies, there is currently a performance gap between the predicted annual energy demand from BPS based on deterministic methods compared to the measured annual energy use of a building. The performance gap is dependent on several parameters and types of uncertainties, as shown in previous studies. Using a probabilistic method, with stochastic input data using the Monte Carlo-method and dynamic BPS software, makes it possible to calculate a probability distribution for the energy use of a
specific building and indicate the probability of attaining a specific energy performance. This paper presents a summary of the overall results and conclusion from earlier papers regarding probabilistic methods for energy performance simulations and risk analysis, and how the results could improve future BPSs. This paper shows recent developments in available tools and how
these methods could be used in practice to include different types of uncertainties when performing risk analyses. Future research and developments needed to improve and broaden the application of the methods and how to include improved quality or quantity of data to improve additional or future simulations are discussed. (Less)
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author
organization
publishing date
type
Contribution to conference
publication status
submitted
subject
conference name
BuildSim Nordic 2020
conference location
Oslo, Norway
conference dates
2020-10-13 - 2020-10-14
project
Predicting the Energy Performance of Buildings - A Method using Probabilistic Risk Analysis for Data-driven Decision-support
language
English
LU publication?
yes
id
3fd8e3f4-c61c-4a11-bdd8-ab06ea5c1b8b
date added to LUP
2020-01-27 14:01:04
date last changed
2021-03-22 17:39:28
@misc{3fd8e3f4-c61c-4a11-bdd8-ab06ea5c1b8b,
  abstract     = {{Many countries strive for continued reductions in energy demand from new buildings as a way of mitigating the impact of climate change. Consequently, the importance of accurate and efficient building performance simulations (BPS) increases to improve the prediction in energy demand during the design-process for buildings. As observed in earlier studies, there is currently a performance gap between the predicted annual energy demand from BPS based on deterministic methods compared to the measured annual energy use of a building. The performance gap is dependent on several parameters and types of uncertainties, as shown in previous studies. Using a probabilistic method, with stochastic input data using the Monte Carlo-method and dynamic BPS software, makes it possible to calculate a probability distribution for the energy use of a<br/>specific building and indicate the probability of attaining a specific energy performance. This paper presents a summary of the overall results and conclusion from earlier papers regarding probabilistic methods for energy performance simulations and risk analysis, and how the results could improve future BPSs. This paper shows recent developments in available tools and how<br/>these methods could be used in practice to include different types of  uncertainties when performing risk analyses. Future research and developments needed to improve and broaden the application of the methods and how to include improved quality or quantity of data to improve additional or future simulations are discussed.}},
  author       = {{Ekström, Tomas}},
  language     = {{eng}},
  title        = {{Future application of probabilistic methods for building performance simulations}},
  year         = {{2020}},
}