Evaluating energy performance in non-domestic buildings : a review
暂无分享,去创建一个
[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 .