Heating energy demand estimation of the EU building stock: Combining building physics and artificial neural networks

被引:11
|
作者
Veljkovic, Ana [1 ,2 ]
Pohoryles, Daniel A. [1 ]
Bournas, Dionysios A. [1 ]
机构
[1] European Commiss, Joint Res Ctr, Ispra, Italy
[2] Via E Fermi 2749, I-21027 Ispra, VA, Italy
关键词
Neural network; Building physics; Space heating; EU building stock; INDOOR ENVIRONMENTAL-QUALITY; RESIDENTIAL BUILDINGS; MULTIFAMILY BUILDINGS; PERFORMANCE; CONSUMPTION; PREDICTION; SECTOR; MODELS; AIRTIGHTNESS; CONSERVATION;
D O I
10.1016/j.enbuild.2023.113474
中图分类号
TU [建筑科学];
学科分类号
0813 ;
摘要
The aim of this study is to present a novel data-driven approach developed for space heating energy demand calculation of the whole EU building stock. To develop a computationally efficient bottom-up model that takes into account building physics parameters and details of the building stock make-up, an artificial neural network (ANN) is trained on a dataset of precise building-physics models. For this purpose, 2025 building energy simulations were performed in this study, ensuring representativeness for the entire EU, in terms of building stock properties (3 building geometries and 27 combinations of building envelope properties) and climatic conditions (25 weather files). The developed model is the first comprehensive hybrid (ANN and building physics) approach based on a condensed selection of input features, yet covering a wide range of climatic and building stock values, hence suitable for consideration of the spatial, temporal and multinational scale of the EU building stock. A unique building stock model was developed for this study at the EU regional level. The performance of the ANNs was validated by assessing the RMSE and R2 against the training (85%), testing (15%) and total dataset (100%, i. e. 2025 data points), to ensure adequate robustness, accuracy and generalisation capacity. As to the application of the ANN model on the building stock of 27 EU countries, a good accordance between ANN model results and measured consumption over the nine years from 2011 to 2019, was obtained, with an average overestimation by 9.3% (standard deviation (SD) = 5%), which confirmed the adequacy of the adopted methodology. Additional consideration of the occupant behaviour resulted in average overestimating the actual measurements by only 2.4% (SD = 4.7%). In addition to the EU and country level, the added value of the implemented bottom-up approach is its ability to assess the heating energy demand at regional level. Overall, the presented approach can be considered accurate and reliable to be used in future research on the long-term impact of building renovation with respect to energy savings and reductions of greenhouse gas emissions.
引用
收藏
页数:25
相关论文
共 50 条
  • [41] Artificial neural networks applications in building energy predictions and a case study for tropical climates
    Yalcintas, M
    Akkurt, S
    INTERNATIONAL JOURNAL OF ENERGY RESEARCH, 2005, 29 (10) : 891 - 901
  • [42] Modeling and predicting building's energy use with artificial neural networks: Methods and results
    Karatasou, S.
    Santamouris, M.
    Geros, V.
    ENERGY AND BUILDINGS, 2006, 38 (08) : 949 - 958
  • [43] An Integrated Artificial Intelligence Approach for Building Energy Demand Forecasting
    Vieri, Andrea
    Gambarotta, Agostino
    Morini, Mirko
    Saletti, Costanza
    ENERGIES, 2024, 17 (19)
  • [44] Energy-Demand Estimation of Embedded Devices Using Deep Artificial Neural Networks
    Hoenig, Timo
    Herzog, Benedict
    Schroeder-Preikschat, Wolfgang
    SAC '19: PROCEEDINGS OF THE 34TH ACM/SIGAPP SYMPOSIUM ON APPLIED COMPUTING, 2019, : 617 - 624
  • [45] ARTIFICIAL NEURAL NETWORK MODELS FOR BUILDING ENERGY PREDICTION
    Ahn, Ki Uhn
    Park, Cheol Soo
    2017 WINTER SIMULATION CONFERENCE (WSC), 2017, : 2708 - 2716
  • [46] Heating Energy and Peak-Power Demand in a Standard and Low Energy Building
    Airaksinen, Miimu
    Vuolle, Mika
    ENERGIES, 2013, 6 (01): : 235 - 250
  • [47] Dynamic Geospatial Modeling of the Building Stock To Project Urban Energy Demand
    Breunig, Hanna M.
    Huntington, Tyler
    Jin, Ling
    Robinson, Alastair
    Scown, Corinne D.
    ENVIRONMENTAL SCIENCE & TECHNOLOGY, 2018, 52 (14) : 7604 - 7613
  • [48] Spatiotemporal upscaling errors of building stock clustering for energy demand simulation
    Eggimann, Sven
    Vulic, Natasa
    Rudisuli, Martin
    Mutschler, Robin
    Orehounig, Kristina
    Sulzer, Matthias
    ENERGY AND BUILDINGS, 2022, 258
  • [49] Building stock dynamics and its impacts on materials and energy demand in China
    Hong, Lixuan
    Zhou, Nan
    Feng, Wei
    Khanna, Nina
    Fridley, David
    Zhao, Yongqiang
    Sandholt, Kaare
    ENERGY POLICY, 2016, 94 : 47 - 55
  • [50] China's building stock estimation and energy intensity analysis
    Huo, Tengfei
    Cai, Weiguang
    Ren, Hong
    Feng, Wei
    Zhu, Minglei
    Lang, Ningning
    Gao, Jingxin
    JOURNAL OF CLEANER PRODUCTION, 2019, 207 : 801 - 813