Artificial Neural Networks to Optimize Zero Energy Building (ZEB) Projects from the Early Design Stages

被引:20
作者
Pittarello, Marco [1 ]
Scarpa, Massimiliano [1 ]
Ruggeri, Aurora Greta [1 ]
Gabrielli, Laura [1 ]
Schibuola, Luigi [1 ]
机构
[1] Univ Iuav Venezia, Dipartimento Culture Progetto, Dorsoduro 2206, I-30123 Venice, Italy
来源
APPLIED SCIENCES-BASEL | 2021年 / 11卷 / 12期
关键词
building energy modeling; artificial neural network; building energy consumption; CONDITIONAL DEMAND ANALYSIS; REGRESSION-ANALYSIS; RESIDENTIAL SECTOR; CONSUMPTION; MODEL; PERFORMANCE; PREDICTION; APPLIANCE; TRANSFORMATIONS;
D O I
10.3390/app11125377
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
Featured Application The Artificial Neural Networks developed could be very useful for a fast and reliable assessment of buildings energy consumption without the use of specific energy simulation software. Building energy modeling (BEM) is used to support (nearly) zero-energy building (ZEB) projects, since this kind of software represents the only available option to forecast building energy consumption with high accuracy. BEM may also be used during preliminary analyses or feasibility studies, but simulation results are usually too detailed for this stage of the project. Aside from that, when optimization algorithms are used, the implied high number of energy simulations causes very long calculation times. Therefore, designers could be discouraged from the extensive use of BEM to conduct optimization analyses. Thus, they prefer to study and compare a very limited amount of acknowledged alternative designs. In relation to this problem, the scope of the present study is to obtain an easy-to-use tool to quickly forecast the energy consumption of a building with no direct use of BEM to support fast comparative analyses at the early stages of energy projects. In response, a set of automatic energy assessment tools was developed based on machine learning techniques. The forecasting tools are artificial neural networks (ANNs) that are able to estimate the energy consumption automatically for any building, based on a limited amount of descriptive data of the property. The ANNs are developed for the Po Valley area in Italy as a pilot case study. The ANNs may be very useful to assess the energy demand for even a considerable number of buildings by comparing different design options, and they may help optimization analyses.
引用
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页数:19
相关论文
共 43 条
[1]   Using multiple regression analysis to develop energy consumption indicators for commercial buildings in the US [J].
Amiri, Shideh Shams ;
Mottahedi, Mohammad ;
Asadi, Somayeh .
ENERGY AND BUILDINGS, 2015, 109 :209-216
[2]  
[Anonymous], 2015, Quadrennial Energy Review First Installment: Transforming U.S. Energy Infrastructures in a Time of Rapid Change
[3]  
Athienitis Andreas., 2015, Modeling, Design, and Optimization of Net-Zero Energy Buildings
[4]  
Attia S., 2011, LEED AP, P1, DOI [10.13140/RG.2.2.35424.23049, DOI 10.13140/RG.2.2.35424.23049]
[5]   Overview and future challenges of nearly zero energy buildings (nZEB) design in Southern Europe [J].
Attia, Shady ;
Eleftheriou, Polyvios ;
Xeni, Flouris ;
Morlot, Rodolphe ;
Menezo, Christophe ;
Kostopoulos, Vasilis ;
Betsi, Maria ;
Kalaitzoglou, Iakovos ;
Pagliano, Lorenzo ;
Cellura, Maurizio ;
Almeida, Manuela ;
Ferreira, Marco ;
Baracu, Tudor ;
Badescu, Viorel ;
Crutescu, Ruxandra ;
Maria Hidalgo-Betanzos, Juan .
ENERGY AND BUILDINGS, 2017, 155 :439-458
[6]   Trends in building simulation [J].
Augenbroe, G .
BUILDING AND ENVIRONMENT, 2002, 37 (8-9) :891-902
[7]   Modeling of the appliance, lighting, and space-cooling energy consumptions in the residential sector using neural networks [J].
Aydinalp, M ;
Ugursal, VI ;
Fung, AS .
APPLIED ENERGY, 2002, 71 (02) :87-110
[8]   Comparison of neural network, conditional demand analysis, and engineering approaches for modeling end-use energy consumption in the residential sector [J].
Aydinalp-Koksal, Merih ;
Ugursal, V. Ismet .
APPLIED ENERGY, 2008, 85 (04) :271-296
[9]   A revival of the autoregressive distributed lag model in estimating energy demand relationships [J].
Bentzen, J ;
Engsted, T .
ENERGY, 2001, 26 (01) :45-55
[10]   Prediction of residential building energy consumption: A neural network approach [J].
Biswas, M. A. Rafe ;
Robinson, Melvin D. ;
Fumo, Nelson .
ENERGY, 2016, 117 :84-92