Comparison of four building archetype characterization methods in urban building energy modeling (UBEM): A residential case study in Kuwait City
暂无分享,去创建一个
Ali Hajiah | Christoph F. Reinhart | Carlos Cerezo | Adil Al-Mumin | Julia Sokol | Saud AlKhaled | C. Reinhart | A. Hajiah | Adil Al-Mumin | J. Sokol | Saud AlKhaled | Carlos Cerezo
[1] Paul Raftery,et al. A review of methods to match building energy simulation models to measured data , 2014 .
[2] S. Corgnati,et al. Use of reference buildings to assess the energy saving potentials of the residential building stock: the experience of TABULA Project , 2014 .
[3] Christoph F. Reinhart,et al. Modeling Boston: A workflow for the efficient generation and maintenance of urban building energy models from existing geospatial datasets , 2016 .
[4] Henk Visscher,et al. Theoretical vs. actual energy consumption of labelled dwellings in the Netherlands: Discrepancies and policy implications , 2013 .
[5] Paul Strachan,et al. Developing archetypes for domestic dwellings: An Irish case study , 2012 .
[6] Aris Tsangrassoulis,et al. Algorithms for optimization of building design: A review , 2014 .
[7] Russell C. Hardie,et al. Automatic Registration of Optical Aerial Imagery to a LiDAR Point Cloud for Generation of City Models , 2015 .
[8] David J. Spiegelhalter,et al. A hierarchical Bayesian framework for calibrating micro-level models with macro-level data , 2013 .
[9] Dejan Mumovic,et al. A review of bottom-up building stock models for energy consumption in the residential sector , 2010 .
[10] Daniel Godoy-Shimizu,et al. What Can We Learn from the Household Electricity Survey , 2014 .
[11] Shem Heiple,et al. Using building energy simulation and geospatial modeling techniques to determine high resolution building sector energy consumption profiles , 2008 .
[12] Christoph van Treeck,et al. BIM Geometry Generation from Low-Resolution Aerial Photographs for Building Energy Modeling , 2015 .
[13] Jones,et al. The gap between simulated and measured energy performance: A case study across six identical new-build flats in the UK , 2015 .
[14] Christoph F. Reinhart,et al. Urban building energy modeling – A review of a nascent field , 2015 .
[15] Franz-Josef Ulm,et al. Data analytics for simplifying thermal efficiency planning in cities , 2016, Journal of The Royal Society Interface.
[16] S. Firth,et al. Coupling A Stochastic Occupancy Model to EnergyPlus to Predict Hourly Thermal Demand of A Neighbourhood , 2015, Building Simulation Conference Proceedings.
[17] David J. Spiegelhalter,et al. Handling uncertainty in housing stock models , 2012 .
[18] Giuliano Dall'O',et al. A methodology for the energy performance classification of residential building stock on an urban scale , 2012 .
[19] Omar Khattab,et al. Occupants’ behavior and activity patterns influencing the energy consumption in the Kuwaiti residences , 2003 .
[20] Godfried Augenbroe,et al. Analysis of uncertainty in building design evaluations and its implications , 2002 .
[21] Boqiang Lin,et al. Incorporating energy rebound effect in technological advancement and green building construction: A case study of China , 2016 .
[22] Giorgia Peri,et al. On the classification of large residential buildings stocks by sample typologies for energy planning purposes , 2014 .
[23] V. Ismet Ugursal,et al. Modeling of end-use energy consumption in the residential sector: A review of modeling techniques , 2009 .
[24] Diane J. Graziano,et al. Scalable methodology for large scale building energy improvement: Relevance of calibration in model-based retrofit analysis , 2015 .
[25] 罗海军,et al. A New Focusing Excitation Method Based on Magnetic Induction Tomography , 2017 .
[26] Tianzhen Hong,et al. Occupant behavior modeling for building performance simulation: Current state and future challenges , 2015 .
[27] M. Assimakopoulos,et al. On the relation between the energy and social characteristics of the residential sector , 2007 .
[28] Y. Shimoda,et al. Residential end-use energy simulation at city scale , 2004 .
[29] F. Stazi,et al. Estimating energy savings for the residential building stock of an entire city: A GIS-based statistical downscaling approach applied to Rotterdam , 2014 .
[30] Yeonsook Heo,et al. Exploring the impact of different parameterisations of occupant-related internal loads in building energy simulation , 2016 .
[31] Maria Kolokotroni,et al. A GIS-based bottom-up space heating demand model of the London domestic stock , 2009 .
[32] Niklaus Kohler,et al. Building age as an indicator for energy consumption , 2015 .
[33] Simone Ferrari,et al. A supporting method for defining energy strategies in the building sector at urban scale , 2013 .
[34] Volker Coors,et al. Combining GIS-based statistical and engineering urban heat consumption models: Towards a new framework for multi-scale policy support , 2015 .
[35] Godfried Augenbroe,et al. Multi-criteria decision making under uncertainty in building performance assessment , 2013 .
[36] Fotouh A. Al-Ragom,et al. The effect of reinforced concrete frames on the thermal performance of residential villas in hot climates , 2009 .
[37] Darren Robinson,et al. A bottom-up stochastic model to predict building occupants' time-dependent activities , 2013 .
[38] Vijay Modi,et al. Spatial distribution of urban building energy consumption by end use , 2012 .
[39] Yeonsook Heo,et al. Calibration of building energy models for retrofit analysis under uncertainty , 2012 .
[40] Ardeshir Mahdavi,et al. Prediction of plug loads in office buildings: Simplified and probabilistic methods , 2016 .
[41] Volker Coors,et al. 3D City modeling for urban scale heating energy demand forecasting , 2011 .
[42] Yoshiyuki Shimoda,et al. Evaluation of Behavior Model of Occupants in Home Based on Japanese National Time Use Survey , 2015, Building Simulation Conference Proceedings.
[43] J. Zico Kolter,et al. A Large-Scale Study on Predicting and Contextualizing Building Energy Usage , 2011, AAAI.
[44] Jonas Allegrini,et al. A review of modelling approaches and tools for the simulation of district-scale energy systems , 2015 .
[45] Karl-Heinz Häfele,et al. OGC City Geography Markup Language (CityGML) Encoding Standard , 2012 .
[46] Farraj F. Al-ajmi,et al. Simulation of energy consumption for Kuwaiti domestic buildings , 2008 .
[47] Christoph F. Reinhart,et al. Shoeboxer: An algorithm for abstracted rapid multi-zone urban building energy model generation and simulation , 2017 .