Evaluating energy performance in non-domestic buildings : a review

Abstract Evaluation methods can be used to determine what constitutes good energy performance in a building. With an increasing focus on energy use of buildings worldwide, this evaluation assumes a fundamental importance. This paper provides a comprehensive review of the available methods for analysing, classifying, benchmarking, rating and evaluating energy performance in non-domestic buildings. Methodologies are grouped in five categories: engineering calculations, simulation, statistical methods, machine learning and other methods. Techniques for evaluating buildings are described, their principal applications are shown and limitations are identified. The use of performance evaluation in energy efficiency programmes and standards is mapped. There is a need to further develop interactions between the main modelling techniques to produce simple, robust and validated models. Also, evaluation techniques must be developed to consider comfort or service provision in the buildings as a factor in energy performance.

[1]  Jlm Jan Hensen,et al.  Development of surrogate models using artificial neural network for building shell energy labelling , 2014 .

[2]  Nance E. Matson,et al.  Review of California and National Methods for Energy PerformanceBenchmarking of Commercial Buildings , 2005 .

[3]  V. Geros,et al.  Modeling and predicting building's energy use with artificial neural networks: Methods and results , 2006 .

[4]  Pedro J. Mago,et al.  Building hourly thermal load prediction using an indexed ARX model , 2012 .

[5]  C. Ghiaus Experimental estimation of building energy performance by robust regression , 2006 .

[6]  Tao Zhang,et al.  Modelling Electricity Consumption in Office Buildings: An Agent Based Approach , 2013, ArXiv.

[7]  Amrita Dasgupta,et al.  Operational versus designed performance of low carbon schools in England: Bridging a credibility gap , 2011, HVAC&R Research.

[8]  Yang Shuzi,et al.  A Further Discussion on Trends in the Development of Advanced Manufacturing Technology , 2006 .

[9]  Benjamin C. M. Fung,et al.  A systematic procedure to study the influence of occupant behavior on building energy consumption , 2011 .

[10]  Wen-Shing Lee,et al.  Benchmarking the energy performance for cooling purposes in buildings using a novel index-total performance of energy for cooling purposes , 2010 .

[11]  Roberto Lamberts,et al.  Developing energy consumption benchmarks for buildings: Bank branches in Brazil , 2014 .

[12]  Paul Bannister,et al.  Empirical Benchmarking of Building Performance , 2006 .

[13]  Dejan Mumovic,et al.  A comparative study of benchmarking approaches for non-domestic buildings : Part 2 – Bottom-up approach , 2014 .

[14]  Sung-Min Hong,et al.  Tailored energy benchmarks for offices and schools, and their wider potential , 2014 .

[15]  W. Bordass,et al.  Energy performance of occupied non-domestic buildings: Assessment by analysing end-use energy consumptions , 1997 .

[16]  Paul Strachan,et al.  Developing archetypes for domestic dwellings: An Irish case study , 2012 .

[17]  Zhaoxia Wang,et al.  An occupant-based energy consumption prediction model for office equipment , 2015 .

[18]  Paul Gerard Tuohy,et al.  Closing the gap in building performance: learning from BIM benchmark industries , 2015 .

[19]  P. Bannister NABERS: Lessons from 12 Years of Performance Based Ratings in Australia , 2012 .

[20]  Michael J. Witte,et al.  Analytical and comparative testing of EnergyPlus using IEA HVAC BESTEST E100-E200 test suite , 2004 .

[21]  Luis Pérez-Lombard,et al.  Constructing HVAC energy efficiency indicators , 2012 .

[22]  Soteris A. Kalogirou,et al.  Artificial neural networks in energy applications in buildings , 2006 .

[23]  M. N. Assimakopoulos,et al.  Using intelligent clustering techniques to classify the energy performance of school buildings , 2007 .

[24]  Semih Önüt,et al.  Energy efficiency assessment for the Antalya Region hotels in Turkey , 2006 .

[25]  Jon Hand,et al.  CONTRASTING THE CAPABILITIES OF BUILDING ENERGY PERFORMANCE SIMULATION PROGRAMS , 2008 .

[26]  Nelson Fumo,et al.  Methodology to estimate building energy consumption using EnergyPlus Benchmark Models , 2010 .

[27]  Liu Yang,et al.  Thermal comfort and building energy consumption implications - A review , 2014 .

[28]  Benjamin C. M. Fung,et al.  A decision tree method for building energy demand modeling , 2010 .

[29]  Priyadarsini Rajagopalan,et al.  Progress on building energy labelling techniques , 2012 .

[30]  Godfried Augenbroe,et al.  Uncertainty quantification of microclimate variables in building energy models , 2014 .

[31]  Robert Cohen,et al.  Mandating transparency about building energy performance in use , 2015 .

[32]  Enrico Fabrizio,et al.  Methodologies and Advancements in the Calibration of Building Energy Models , 2015 .

[33]  Paul Cooper,et al.  Understanding the risks and uncertainties introduced by common assumptions in energy simulations for Australian commercial buildings , 2014 .

[34]  Ashwin Sabapathy,et al.  Energy efficiency benchmarks and the performance of LEED rated buildings for Information Technology facilities in Bangalore, India , 2010 .

[35]  Tony Roskilly,et al.  This Work Is Licensed under a Creative Commons Attribution 4.0 International License Royapoor M, Roskilly T. Building Model Calibration Using Energy and Environmental Data. Energy and Buildings Building Model Calibration Using Energy and Environmental Data Keywords: Model Calibration Measured Energy , 2022 .

[36]  Joseph C. Lam,et al.  An analysis of climatic influences on chiller plant electricity consumption , 2009 .

[37]  Craig P. Wray,et al.  Standard Method of Test for the Evaluation of Building Energy Analysis Computer Programs , 1999 .

[38]  Paul Bannister,et al.  Energy and Water Performance Benchmarking in the Retail Sector: NABERS Shopping Centres , 2010 .

[39]  G. Mihalakakou,et al.  Using principal component and cluster analysis in the heating evaluation of the school building sector , 2010 .

[40]  Adrian Leaman,et al.  Assessing building performance in use 5: conclusions and implications , 2001 .

[41]  Mohammad S. Al-Homoud,et al.  Computer-aided building energy analysis techniques , 2001 .

[42]  Zheng O'Neill,et al.  Comparisons of inverse modeling approaches for predicting building energy performance , 2015 .

[43]  Samuel Thomas,et al.  Energy Efficiency Market Report - Capturing the Multiple Benefits of Energy Efficiency , 2015 .

[44]  Andrea Gasparella,et al.  Energy audit of schools by means of cluster analysis , 2015 .

[45]  Jian Chu,et al.  Forecasting building energy consumption using neural networks and hybrid neuro-fuzzy system: A compa , 2011 .

[46]  Jin Wen,et al.  Review of building energy modeling for control and operation , 2014 .

[47]  Tianzhen Hong,et al.  Advances in research and applications of energy-related occupant behavior in buildings ☆ , 2016 .

[48]  Randall Thomas,et al.  Environmental Design: An Introduction for Architects and Engineers , 1995 .

[49]  Catalina Spataru,et al.  A Review of the Regulatory Energy Performance Gap and Its Underlying Causes in Non-domestic Buildings , 2016, Front. Mech. Eng..

[50]  Paul Strachan,et al.  Practical application of uncertainty analysis , 2001 .

[51]  Andrea Costa,et al.  Model calibration for building energy efficiency simulation , 2014 .

[52]  Rehan Sadiq,et al.  Improving the energy efficiency of the existing building stock: A critical review of commercial and institutional buildings , 2016 .

[53]  P. Bohdanowicz,et al.  Determinants and benchmarking of resource consumption in hotels : Case study of Hilton international and Scandic in Europe , 2007 .

[54]  Guillermo Escrivá-Escrivá,et al.  New indices to assess building energy efficiency at the use stage , 2011 .

[55]  Denise Young,et al.  The potential for energy efficiency gains in the Canadian commercial building sector: A stochastic frontier study , 2007 .

[56]  Anand Sivasubramaniam,et al.  Energy disaggregation analysis of a supermarket chain using a facility-model , 2015 .

[57]  R. Judkoff,et al.  Applying the building energy simulation test (BESTEST) diagnostic method to verification of space conditioning equipment models used in whole-building energy simulation programs , 2002 .

[58]  William Chung,et al.  Benchmarking the energy efficiency of commercial buildings , 2006 .

[59]  Guohai Liu,et al.  Building's electricity consumption prediction using optimized artificial neural networks and principal component analysis , 2015 .

[60]  Rp Rick Kramer,et al.  Simplified thermal and hygric building models: A literature review , 2012 .

[61]  Stefano Paolo Corgnati,et al.  Total energy use in buildings -analysis and evaluation methods , 2011 .

[62]  Ian Paul Knight,et al.  Assessing electrical energy use in HVAC systems , 2012 .

[63]  Edward T. White,et al.  International Green Construction Code , 2018 .

[64]  P Pieter-Jan Hoes,et al.  User behavior in whole building simulation , 2009 .

[65]  Jelena Srebric,et al.  BUILDING CLASSIFICATION BASED ON SIMULATED ANNUAL RESULTS: TOWARDS REALISTIC BUILDING PERFORMANCE EXPECTATIONS , 2013 .

[66]  Fu Xiao,et al.  A simplified energy performance assessment method for existing buildings based on energy bill disaggregation , 2012 .

[67]  Mikko Kolehmainen,et al.  Data-based method for creating electricity use load profiles using large amount of customer-specific hourly measured electricity use data , 2010 .

[68]  Godfried Augenbroe,et al.  Analysis of uncertainty in building design evaluations and its implications , 2002 .

[69]  David Hsu Identifying key variables and interactions in statistical models of building energy consumption using regularization , 2015 .

[70]  Enedir Ghisi,et al.  Uncertainty analysis of the computer model in building performance simulation , 2014 .

[71]  Jonathan M Cullen,et al.  Reducing energy demand: what are the practical limits? , 2011, Environmental science & technology.

[72]  Christine Demanuele,et al.  Bridging the gap between predicted and actual energy performance in schools , 2010 .

[73]  P.W.M.H. Steskens,et al.  T1.3 Performance Indicators for health and comfort , 2010 .

[74]  Chris Nicholls Energy use in non-domestic buildings: the UK government's new evidence base , 2014 .

[75]  William Chung,et al.  Review of building energy-use performance benchmarking methodologies , 2011 .

[76]  Christoph F. Reinhart,et al.  Urban building energy modeling – A review of a nascent field , 2015 .

[77]  B. Dong,et al.  Applying support vector machines to predict building energy consumption in tropical region , 2005 .

[78]  Gongsheng Huang,et al.  Re-evaluation of building cooling load prediction models for use in humid subtropical area , 2013 .

[79]  David Hsu,et al.  Comparison of integrated clustering methods for accurate and stable prediction of building energy consumption data , 2015 .

[80]  Melek Yalcintas,et al.  An energy benchmarking model based on artificial neural network method with a case example for tropical climates , 2006 .

[81]  Jlm Jan Hensen,et al.  Overview of HVAC system simulation , 2010 .

[82]  Fu Xiao,et al.  Quantitative energy performance assessment methods for existing buildings , 2012 .

[83]  Frédéric Magoulès,et al.  A review on the prediction of building energy consumption , 2012 .

[84]  Raymond J. Cole,et al.  Learning from failure: understanding the anticipated–achieved building energy performance gap , 2015 .

[85]  Arun Kumar,et al.  A review on modeling and simulation of building energy systems , 2016 .

[86]  Seong-Hwan Yoon,et al.  Stochastic comparison between simplified energy calculation and dynamic simulation , 2013 .

[87]  Carlos Martinez-Ortiz,et al.  Building simulation approaches for the training of automated data analysis tools in building energy management , 2013, Adv. Eng. Informatics.

[88]  Pieter de Wilde,et al.  Longitudinal prediction of the operational energy use of buildings , 2011 .

[89]  Ma Barrett A Handbook of Sustainable Building Design and Engineering , 2009 .

[90]  Guy R. Newsham,et al.  Do LEED-certified buildings save energy? Yes, but ... , 2009 .

[91]  Mark S. Martinez,et al.  International performance measurement & verification protocol: Concepts and options for determining energy and water savings , 2001 .

[92]  A. Pedrinia,et al.  A methodology for building energy modelling and calibration in warm climates , 2002 .

[93]  Yeonsook Heo,et al.  Calibration of building energy models for retrofit analysis under uncertainty , 2012 .

[94]  Adrian Leaman,et al.  Assessing building performance in use 3: energy performance of the Probe buildings , 2001 .

[95]  S. P. Pieri,et al.  Identifying energy consumption patterns in the Attica hotel sector using cluster analysis techniques with the aim of reducing hotels’ CO2 footprint , 2015 .

[96]  Paul Bannister,et al.  Energy and Water Performance Benchmarking in the Retail Sector , 2010 .

[97]  Lung-Chieh Lin,et al.  Evaluating and ranking the energy performance of office building using technique for order preference by similarity to ideal solution , 2011 .

[98]  Wen-Shing Lee,et al.  Benchmarking the energy efficiency of government buildings with data envelopment analysis , 2008 .

[99]  Sten de Wit,et al.  Uncertainty in building simulation , 2004 .

[100]  Emily M. Ryan,et al.  Validation of building energy modeling tools under idealized and realistic conditions , 2012 .

[101]  David E. Claridge,et al.  ASHRAE's Guideline 14-2002 for Measurement of Energy and Demand Savings: How to Determine What Was Really Saved by the Retrofit , 2005 .

[102]  C. Filippín Benchmarking the energy efficiency and greenhouse gases emissions of school buildings in central Argentina , 2000 .

[103]  Endong Wang,et al.  Benchmarking whole-building energy performance with multi-criteria technique for order preference by similarity to ideal solution using a selective objective-weighting approach , 2015 .

[104]  Paul Raftery,et al.  A review of methods to match building energy simulation models to measured data , 2014 .

[105]  Chris Bales,et al.  Report on auditing tool for assessment of building needs , 2015 .

[106]  Tony N.T. Lam,et al.  Principal component analysis and long-term building energy simulation correlation , 2010 .

[107]  Rokia Raslan,et al.  Variations in results of building energy simulation tools, and their impact on BREEAM and LEED ratings: A case study , 2013 .

[108]  Rokia Raslan,et al.  Results variability in accredited building energy performance compliance demonstration software in the UK: an inter-model comparative study , 2010 .

[109]  Burcin Becerik-Gerber,et al.  Why is the reliability of building simulation limited as a tool for evaluating energy conservation measures , 2015 .

[110]  Supachart Chungpaibulpatana,et al.  Assessment of potential energy saving using cluster analysis: A case study of lighting systems in buildings , 2012 .

[111]  Pieter de Wilde,et al.  The gap between predicted and measured energy performance of buildings: A framework for investigation , 2014 .

[112]  Enrico Fabrizio,et al.  The impact of indoor thermal conditions, system controls and building types on the building energy demand , 2008 .

[113]  F. W. Yu,et al.  Using cluster and multivariate analyses to appraise the operating performance of a chiller system serving an institutional building , 2012 .

[114]  Sandhya Patidar,et al.  Understanding the energy consumption and occupancy of a multi-purpose academic building , 2015 .

[115]  Zhu Neng,et al.  An improved office building cooling load prediction model based on multivariable linear regression , 2015 .

[116]  D. Kolokotsa,et al.  Virtual Building Dataset for energy and indoor thermal comfort benchmarking of office buildings in Greece , 2009 .

[117]  Charles Culp,et al.  Uncalibrated Building Energy Simulation Modeling Results , 2006 .

[118]  박창용,et al.  제어 시스템과 LEED(Leadership in Energy and Environmental Design) , 2013 .

[119]  Frédéric Magoulès,et al.  Parallel Support Vector Machines Applied to the Prediction of Multiple Buildings Energy Consumption , 2010 .

[120]  John H. Scofield,et al.  Efficacy of LEED-certification in reducing energy consumption and greenhouse gas emission for large New York City office buildings , 2013 .

[121]  Fábio Gonçalves Jota,et al.  Building load management using cluster and statistical analyses , 2011 .

[122]  Wen-Shing Lee,et al.  Using climate classification to evaluate building energy performance , 2011 .

[123]  Rob Liddiard Room-scale profiles of space use and electricity consumption in non-domestic buildings , 2013 .

[124]  Betul Bektas Ekici,et al.  Prediction of building energy consumption by using artificial neural networks , 2009, Adv. Eng. Softw..

[125]  Vincenzo Corrado,et al.  Energy Monitoring and Labelling , 2009 .

[126]  M. D. Mainar-Toledo,et al.  Multiple regression models to predict the annual energy consumption in the Spanish banking sector , 2012 .

[127]  David Velázquez,et al.  Revisiting energy efficiency fundamentals , 2012, Energy Efficiency.

[128]  Richard Karl Strand,et al.  Energy Estimating and Modeling Methods , 2005 .

[129]  Luis Pérez-Lombard,et al.  A review of benchmarking, rating and labelling concepts within the framework of building energy certification schemes , 2009 .

[130]  Koen Steemers,et al.  Using Display Energy Certificates to quantify public sector office energy consumption , 2015 .

[131]  Elie Azar,et al.  A comprehensive analysis of the impact of occupancy parameters in energy simulation of office buildings , 2012 .

[132]  Luis Pérez-Lombard,et al.  A review on buildings energy consumption information , 2008 .

[133]  Wen-Shing Lee,et al.  Benchmarking the performance of building energy management using data envelopment analysis , 2009 .

[134]  Hugo Hens,et al.  Energy consumption for heating and rebound effects , 2010 .

[135]  T. Agami Reddy,et al.  Calibrating Detailed Building Energy Simulation Programs with Measured Data—Part I: General Methodology (RP-1051) , 2007 .

[136]  Terry Williamson Predicting building performance: the ethics of computer simulation , 2010 .

[137]  Wei Tian,et al.  A review of sensitivity analysis methods in building energy analysis , 2013 .

[138]  Søren Østergaard Jensen,et al.  Validation of building energy simulation programs: a methodology , 1995 .

[139]  Dejan Mumovic,et al.  Improved benchmarking comparability for energy consumption in schools , 2014 .

[140]  John H. Scofield,et al.  Do LEED-certified buildings save energy? Not really… , 2009 .

[141]  Jie Liu,et al.  Analysis of operational energy intensity for central air conditioning systems with water-cooled chiller by decomposition method , 2015 .

[142]  Jiejin Cai,et al.  Applying support vector machine to predict hourly cooling load in the building , 2009 .

[143]  Alberto Hernandez Neto,et al.  Comparison between detailed model simulation and artificial neural network for forecasting building energy consumption , 2008 .

[144]  T. Agami Reddy,et al.  Calibrating Detailed Building Energy Simulation Programs with Measured Data—Part II: Application to Three Case Study Office Buildings (RP-1051) , 2007 .

[145]  Caroline Martin,et al.  Generating low-cost national energy benchmarks: A case study in commercial buildings in Cape Town, South Africa , 2013 .

[146]  Fu Xiao,et al.  A multi-level energy performance diagnosis method for energy information poor buildings , 2015 .

[147]  José L. Ruiz,et al.  Benchmarking and target setting with expert preferences: An application to the evaluation of educational performance of Spanish universities , 2015, Eur. J. Oper. Res..

[148]  Adrian Leaman,et al.  Assessing building performance in use 1: the Probe process , 2001 .

[149]  S. Salat Energy loads, CO2 emissions and building stocks: morphologies, typologies, energy systems and behaviour , 2009 .

[150]  Jlm Jan Hensen,et al.  Uncertainty analysis in building performance simulation for design support , 2011 .

[151]  Michael Wetter,et al.  A framework for simulation-based real-time whole building performance assessment , 2012 .

[152]  Theofilos A. Papadopoulos,et al.  Pattern recognition algorithms for electricity load curve analysis of buildings , 2014 .

[153]  Mary Ann Piette,et al.  Development of a California commercial building benchmarking database , 2002 .

[154]  Qiang Zhang,et al.  Model-based benchmarking with application to laboratory buildings , 2002 .

[155]  Ruchi Choudhary,et al.  Influence of district features on energy consumption in non-domestic buildings , 2014 .

[156]  Dejan Mumovic,et al.  A comparative study of benchmarking approaches for non-domestic buildings : Part 1 – Top-down approach , 2014 .

[157]  Dino Bouchlaghem,et al.  Predicted vs. actual energy performance of non-domestic buildings: Using post-occupancy evaluation data to reduce the performance gap , 2012 .

[158]  Paul Raftery,et al.  Calibrating whole building energy models: An evidence-based methodology , 2011 .

[159]  Thomas Olofsson,et al.  Building energy parameter investigations based on multivariate analysis , 2009 .

[160]  Ali M. Malkawi,et al.  A new methodology for building energy performance benchmarking: An approach based on intelligent clustering algorithm , 2014 .

[161]  George Stavrakakis,et al.  Review on methodologies for energy benchmarking, rating and classification of buildings , 2011 .

[162]  Alan Meier,et al.  Rating the energy performance of buildings , 2004 .

[163]  Dejan Mumovic,et al.  Original Article/ResearchA comparative study of benchmarking approaches for non-domestic buildings: Part 1 – Top-down approach , 2013 .

[164]  D. K. Serghides,et al.  Analysis of structural elements and energy consumption of school building stock in Cyprus: Energy simulations and upgrade scenarios of a typical school , 2014 .

[165]  Ying Hua,et al.  Completing the missing link in building design process: Enhancing post-occupancy evaluation method for effective feedback for building performance , 2015 .

[166]  David Hsu,et al.  How much information disclosure of building energy performance is necessary , 2014 .

[167]  Ian Paul Knight,et al.  Predicting Operational Energy Consumption Profiles - Findings from Detailed Surveys and Modelling in a UK Educational Building Compared to Measured Consumption , 2008 .

[168]  Andrew Kusiak,et al.  Modeling and optimization of HVAC systems using a dynamic neural network , 2012 .

[169]  Russell Richman,et al.  A high level method to disaggregate electricity for cluster-metered buildings , 2016 .

[170]  Zhiwei Lian,et al.  Cooling-load prediction by the combination of rough set theory and an artificial neural-network based on data-fusion technique , 2006 .

[171]  Adrian Leaman,et al.  Building evaluation: practice and principles , 2010 .

[172]  Zhengwei Li,et al.  Methods for benchmarking building energy consumption against its past or intended performance: An overview , 2014 .

[173]  Dino Bouchlaghem,et al.  Review of benchmarks for small power consumption in office buildings , 2012 .