AI Chat Paper
Note: Please note that the following content is generated by AMiner AI. SciOpen does not take any responsibility related to this content.
{{lang === 'zh_CN' ? '文章概述' : 'Summary'}}
{{lang === 'en_US' ? '中' : 'Eng'}}
Chat more with AI
Article Link
Collect
Submit Manuscript
Show Outline
Outline
Show full outline
Hide outline
Outline
Show full outline
Hide outline
Research Article

Energy evaluation of residential buildings: Performance gap analysis incorporating uncertainties in the evaluation methods

Ingrid Allard( )Thomas OlofssonGireesh Nair
Department of Applied Physics and Electronics, Umeå University, 901 87 Umeå, Sweden
Show Author Information

Abstract

Calculation and measurement-based energy performance evaluations of the same building often provide different results. This difference is referred as "the performance gap". However, a large performance gap may not necessarily mean that there are flaws in the building or deviations from the intended design. The causes for the performance gap can be analysed by calibrating the simulation model to measured data. In this paper, an approach is introduced for verifying compliance with energy performance criteria of residential buildings. The approach is based on a performance gap analysis that takes the uncertainties in the energy evaluation methods into consideration. The scope is to verify building energy performance through simulation and analysis of measured data, identifying any performance gap due to deviations from the intended design or flaws in the finished building based on performance gap analysis. In the approach, a simulation model is calibrated to match the heat loss coefficient of the building envelope [kWh/K] instead of the measured energy. The introduced approach is illustrated using a single-family residential building. The heat loss coefficient was found useful towards identifying any deviations from the intended design or flaws in the finished building. The case study indicated that the method uncertainty was important to consider in the performance gap analysis and that the proposed approach is applicable even when the performance gap appears to be non-existing.

References

 
I Allard, T Olofsson, G Nair (2017). Energy Performance Indicators in the Swedish Building Procurement Process. Sustainability, 9: 1877.
 
ASHRAE (2015). ASHRAE Handbook—Fundamentarls. Atlanta: American Society of Heating, Refridgeratiing and Air-conditioning Engineers.
 
F Berg, A-C Flyen, Å Lund Godbolt, T Broström (2017). User-driven energy efficiency in historic buildings: A review. Journal of Cultural Heritage, 28: 188–195.
 
H Bülow-Hübe (2001). Energy-Efficient Window Systems—Effects on Energy Use and Daylight in Buildings. Lund: KFS AB.
 
E Burman, D Mumovic, J Kimpian (2014). Towards measurement and verification of energy performance under the framework of the European directive for energy performance of buildings. Energy, 77: 153–163.
 
D Coakley, P Raftery, M Keane (2014). A review of methods to match building energy simulation models to measured data. Renewable and Sustainable Energy Reviews, 37: 123–141.
 
I Danielski (2012). Large variations in specific final energy use in Swedish apartment buildings: Causes and solutions. Energy and Buildings, 49: 276–285.
 
P de Wilde (2014). The gap between predicted and measured energy performance of buildings: A framework for investigation. Automation in Construction, 41: 40–49.
 
Y El Fouih, P Stabat, P Rivière, P Hoang, V Archambault (2012). Adequacy of air-to-air heat recovery ventilation system applied in low energy buildings. Energy and Buildings, 54: 29–39.
 
EQUA Simulation AB (2013). User Manual—IDA Indoor Climate and Energy, Version 4.5. Solna, Sweden: EQUA Simulation AB.
 
EQUA Simulation AB (2017). IDA Indoor Climate and Energy. Available at http://www.equa.se/en/ida-ice. Accessed 20 Jan 2017.
 
K Gram-Hanssen, S Georg (2017). Energy performance gaps: promises, people, practices. Building Research & Information, 46: 1–9.
 
S Hammarsten (1987). A critical appraisal of energy-signature models. Applied Energy, 26: 97–110.
 
A Ioannou, LCM Itard (2015). Energy performance and comfort in residential buildings: Sensitivity for building parameters and occupancy. Energy and Buildings, 96: 216–233.
 
Institute for Energy and Transport. (2012). Photovoltaic Geographical Information System (PVGIS). European Comission. Available at http://re.jrc.ec.europa.eu/pvgis/apps4/pvest.php. Accessed 26 Sept 2017.
 
ISO (2017). Thermal performance of buildings—Transmission and ventilation heat transfer coefficients —Calculation method. Geneva: International Organization for Standardization.
 
S Lidelöw, K Flodberg Munck (2015). Byggentreprenörens energisignatur. Luleå och Malmö: NCC Construction Sverige och Luleå tekniska universitet. (in Swedish)
 
A Mahdavi (2011). The human dimension of building performance simulation. In: Proceedings of the 12th International IBPSA Building Simulation Conference, Sydney, Australia.
 
T Maile, V Bazjanac, M Fischer (2012). A method to compare simulated and measured data to assess building energy performance. Building and Environment, 56: 241–251.
 
Meteotest (2014). Meteonorm 7.1. Available at http://meteonorm.com. Accessed 10 Jan 2014.
 
R Östin, E Eklund, C Johansson (2012). Energieffektivt byggande i kallt klimat. CERBOF. (in Swedish)
 
T Reddy (2006). Literature review on calibration of building energy simulation programs: Uses, problems, procedures, uncertainty, and tools. ASHRAE Transactions, 112(1): 226–240.
 
T Reddy, I Maor, C Panjapornpon (2007). Calibrating detailed building energy simulation programs with measured data—Part 1: General methodology (RP-1051). HVAC&R Research, 13: 221–241.
 
P Sahlin, A Bring (1991). IDA Solver—A tool for building and energy systems simulation. In: Proceedings of International IBPSA Building Simulation Conference (pp. 339–348), Nice, France.
 
P Schild, M Mysen (2009). Technical Note AIVC 65—Recommendations on Specific Fan Power and Fan System Efficiency. Energy Conservation in Buildings and Community Systems Programme, International Energy Agency.
 
L Schultz (2003). Normalårskorrigering av energianvändningen i byggnader - en jämförelse mellan två metoder. Effektiv. (in Swedish)
 
J-U Sjögren, S Andersson, T Olofsson (2009). Sensitivity of the total heat loss coefficient determined by the energy signature approach to different time periods and gained energy. Energy and Buildings, 41: 801–808.
 
The Swedish National Board of Housing (2012). Handbok för energihushållning enligt Boverkets byggregler - utgåva två. the Swedish National Board of Housing, Building, and Planning.
 
The Swedish National Board of Housing, Building and Planning (2007). Indata för energiberäkningar i kontor och småhus. En sammanställning av brukarrelaterad indata för elanvändning, personvärme och tappvarmvatten. The Swedish National Board of Housing, Building and Planning (Boverket).
 
The Swedish National Board of Housing, Building and Planning (2015). BBR 22 - Boverkets föreskrifter om ändring i verkets byggregler (2011:6) - föreskrifter och allmänna råd. The Swedish National Board of Housing Building and Planning (Boverket).
 
P Torcellini, S Pless, M Deru, D Crawley (2006). Zero energy buildings: A critical look at the definition. ACEEE Summer Study. Pacific Grove, CA, USA: National Renewable Energy Laboratory.
 
J Vesterberg, S Andersson, T Olofsson (2016). A single-variate building energy signature approach for periods with substantial solar gain. Energy and Buildings, 122: 185–191.
 
S Wang, C Yan, F Xiao (2012). Quantitative energy performance assessment methods for existing buildings. Energy and Buildings, 55: 873–888.
 
F Yousefi, Y Gholipour, W Yan (2017). A study of the impact of occupant behaviors on energy performance of building envelopes using occupants’ data. Energy and Buildings, 148: 182–198.
 
H-x Zhao, F Magoulès (2012). A review on the prediction of building energy consumption. Renewable and Sustainable Energy Reviews, 16: 3586–3592.
 
M Zhao, HG Künzel, F Antretter (2015). Parameters influencing the energy performance of residential buildings in different Chinese climate zones. Energy and Buildings, 96: 64–75.
Building Simulation
Pages 725-737
Cite this article:
Allard I, Olofsson T, Nair G. Energy evaluation of residential buildings: Performance gap analysis incorporating uncertainties in the evaluation methods. Building Simulation, 2018, 11(4): 725-737. https://doi.org/10.1007/s12273-018-0439-7

716

Views

34

Crossref

N/A

Web of Science

34

Scopus

0

CSCD

Altmetrics

Received: 21 November 2017
Revised: 26 January 2018
Accepted: 22 February 2018
Published: 20 March 2018
© Tsinghua University Press and Springer-Verlag GmbH Germany, part of Springer Nature 2018
Return