Data fusion in predicting internal heat gains for office buildings through a deep learning approach

被引:86
|
作者
Wang, Zhe [1 ]
Hong, Tianzhen [1 ]
Piette, Mary Ann [1 ]
机构
[1] Lawrence Berkeley Natl Lab, Bldg Technol & Urban Syst Div, Berkeley, CA 94720 USA
基金
美国能源部;
关键词
Internal heat gains; Data fusion; Miscellaneous electric loads; Occupant count; Predictive control; Deep learning; ENERGY-CONSUMPTION PREDICTION; COOLING-LOAD PREDICTION; MODEL; PERFORMANCE; OPTIMIZATION; SYSTEMS;
D O I
10.1016/j.apenergy.2019.02.066
中图分类号
TE [石油、天然气工业]; TK [能源与动力工程];
学科分类号
0807 ; 0820 ;
摘要
Heating, Ventilation, and Air Conditioning (HVAC) is a major energy consumer in buildings. The predictive control has demonstrated a potential to reduce HVAC energy use. To facilitate predictive HVAC control, internal heat gains prediction is required. In this study, we applied Long Short-Term Memory Networks, a special form of deep neural network, to predict miscellaneous electric loads, lighting loads, occupant counts and internal heat gains in two United States office buildings. Compared with the predetermined schedules used in American Society of Heating, Refrigerating and Air-Conditioning Engineers (ASHRAE) standard 90.1, the Long Short-Term Memory Networks method could reduce the prediction errors of internal heat gains from 12% to 8% in Building A, and from 26% to 16% in Building B. It was also found that for internal heat gains prediction, miscellaneous electric loads is a more important feature than occupant counts for two reasons. First, miscellaneous electric loads is the best proxy variable for internal heat gains, as it is the major component of and has the highest correlation coefficient with the internal heat gains. Second, miscellaneous electric loads contain valuable information to predict occupant count, while occupant count could not help improve miscellaneous electric loads prediction. These findings could help researchers and practitioners select the most relevant features to more accurately predict internal heat gains for the implementation of predictive HVAC control in buildings.
引用
收藏
页码:386 / 398
页数:13
相关论文
共 50 条
  • [21] Predicting Energy Consumption Data Using Deep Learning: An LSTM Approach
    Chaves, Julio Macedo
    Ohata, Elene Firmeza
    dos Santos, Matheus Araujo
    Santos, Jose Daniel de Alencar
    Bernardes, Matheus Jardim
    Dora, Daniel Seleme
    Filho, Pedro Pedrosa Reboucas
    INTELLIGENT SYSTEMS, BRACIS 2024, PT II, 2025, 15413 : 296 - 308
  • [22] Predicting 3D printed plastic part properties: A deep learning approach with thermographic and vibration data fusion
    Khusheef, Ahmed Shany
    Shahbazi, Mohammad
    Hashemi, Ramin
    EXPERT SYSTEMS WITH APPLICATIONS, 2024, 255
  • [23] Predicting energy consumption of mosque buildings during the operation stage using deep learning approach
    El-Maraghy, Maryam
    Metawie, Mahmoud
    Safaan, Mahmoud
    Eldin, Ahmed Saad
    Hamdy, Ahmed
    El Sharkawy, Maryam
    Abdelaty, Ahmed
    Azab, Shimaa
    Marzouk, Mohamed
    ENERGY AND BUILDINGS, 2024, 303
  • [24] Predicting the lateral displacement of tall buildings using an LSTM-based deep learning approach
    Kim, Bubryur
    Preethaa, K. R. Sri
    Chen, Zengshun
    Natarajan, Yuvaraj
    Wadhwa, Gitanjali
    Lee, Hong Min
    WIND AND STRUCTURES, 2023, 36 (06) : 379 - 392
  • [25] Deep Learning Approach for Predicting Psychodiagnosis
    Samia, Zouaoui
    Chahinez, Khamari
    ACTA INFORMATICA PRAGENSIA, 2024, 13 (02) : 288 - 307
  • [26] An Energy Performance Benchmarking of office buildings: A Data Mining Approach
    Alvarez, Cynthia E.
    Motta, Lucas L.
    da Silva, Luiz C. P.
    2020 IEEE INTERNATIONAL SMART CITIES CONFERENCE (ISC2), 2020,
  • [27] Learning occupants' indoor comfort temperature through a Bayesian inference approach for office buildings in United States
    Wang, Zhe
    Hong, Tianzhen
    RENEWABLE & SUSTAINABLE ENERGY REVIEWS, 2020, 119
  • [28] Invisible Higgs search through vector boson fusion: a deep learning approach
    Ngairangbam, Vishal S.
    Bhardwaj, Akanksha
    Konar, Partha
    Nayak, Aruna Kumar
    EUROPEAN PHYSICAL JOURNAL C, 2020, 80 (11):
  • [29] Invisible Higgs search through vector boson fusion: a deep learning approach
    Vishal S. Ngairangbam
    Akanksha Bhardwaj
    Partha Konar
    Aruna Kumar Nayak
    The European Physical Journal C, 2020, 80
  • [30] Predicting wind flow around buildings using deep learning
    Kim, Bubryur
    Lee, Dong-Eun
    Preethaa, K. R. Sri
    Hu, Gang
    Natarajan, Yuvaraj
    Kwok, K. C. S.
    JOURNAL OF WIND ENGINEERING AND INDUSTRIAL AERODYNAMICS, 2021, 219