Transfer learning-based adaptive recursive neural network for short-term non-stationary building heating load prediction

被引:8
作者
Zhou, Yong [1 ,2 ]
Li, Xiang [1 ]
Liu, Yanfeng [2 ,3 ]
Wei, Renshu [4 ]
机构
[1] Xian Univ Architecture & Technol, Sch Management, 13 Yanta Rd, Xian 710055, Peoples R China
[2] Xian Univ Architecture & Technol, State Key Lab Green Bldg Western China, 13 Yanta Rd, Xian 710055, Peoples R China
[3] Xian Univ Architecture & Technol, Sch Bldg Serv Sci & Engn, 13 Yanta Rd, Xian 710055, Peoples R China
[4] CITIC Gen Inst Architectural Design & Res Co Ltd, 8 Siwei Rd, Wuhan 430014, Peoples R China
来源
JOURNAL OF BUILDING ENGINEERING | 2023年 / 76卷
基金
中国国家自然科学基金;
关键词
Recurrent neural network; Transfer learning-based; Building energy prediction; Non-stationary time series; RANDOM FOREST; ENERGY; REGRESSION;
D O I
10.1016/j.jobe.2023.107271
中图分类号
TU [建筑科学];
学科分类号
0813 ;
摘要
Building energy consumption is a non-stationary time series, and its distribution law changes over time. Traditional machine-learning models are prone to model shift, which leads to a reduction of their prediction accuracy when applied to building energy consumption forecasting. Therefore, in this paper, an adaptive neural network framework is proposed for non-stationary building energy consumption prediction based on transfer learning, in which the training datasets are divided into the most dissimilar periods, and based on the transfer learning mechanism, the different periods of data are learned to obtain the minimum overall loss to improve the model generalization. Taking LSTM and GRU models as examples, adaptive long short-term memory (adaLSTM) and adaptive gated recurrent unit (adaGRU) building energy consumption prediction models are established. The models were trained and verified using heating load data from Xi'an, China. The results show that compared with LSTM model, the coefficient of determination, root mean square error, the coefficient of variation of the root mean squared error and mean absolute error of the adaLSTM model were improved by 0.61%, 37.78%, 38.05% and 30.69%, respectively, and the over-fitting degree was reduced by 227.7%. Compared with the traditional GRU model, the corresponding evaluation indexes of adaGRU were improved by 2.50%, 70.58%, 70.64% and 68.83%, respectively, and the over-fitting degree was improved by 505.7% points. The adaptive recurrent neural network framework proposed in this paper is a generalized approach which can be applied to other non-stationary time series prediction models.
引用
收藏
页数:11
相关论文
共 53 条
  • [1] Trees vs Neurons: Comparison between random forest and ANN for high-resolution prediction of building energy consumption
    Ahmad, Muhammad Waseem
    Mourshed, Monjur
    Rezgui, Yacine
    [J]. ENERGY AND BUILDINGS, 2017, 147 : 77 - 89
  • [2] Buildings' energy consumption prediction models based on buildings' characteristics: Research trends, taxonomy, and performance measures
    Al-Shargabi, Amal A.
    Almhafdy, Abdulbasit
    Ibrahim, Dina M.
    Alghieth, Manal
    Chiclana, Francisco
    [J]. JOURNAL OF BUILDING ENGINEERING, 2022, 54
  • [3] A review of data-driven building energy consumption prediction studies
    Amasyali, Kadir
    El-Gohary, Nora M.
    [J]. RENEWABLE & SUSTAINABLE ENERGY REVIEWS, 2018, 81 : 1192 - 1205
  • [4] An ensemble learning-based framework for assessing the energy flexibility of residential buildings with multicomponent energy systems
    Bampoulas, Adamantios
    Pallonetto, Fabiano
    Mangina, Eleni
    Finn, Donal P.
    [J]. APPLIED ENERGY, 2022, 315
  • [5] Bergstra J., 2011, P ADV NEUR INF PROC, V24, DOI DOI 10.5555/2986459.2986743
  • [6] A comparative assessment of SARIMA, LSTM RNN and Fb Prophet models to forecast total and peak monthly energy demand for India
    Chaturvedi, Shobhit
    Rajasekar, Elangovan
    Natarajan, Sukumar
    McCullen, Nick
    [J]. ENERGY POLICY, 2022, 168
  • [7] An online physical-based multiple linear regression model for building's hourly cooling load prediction
    Chen, Sihao
    Zhou, Xiaoqing
    Zhou, Guang
    Fan, Chengliang
    Ding, Puxian
    Chen, Qiliang
    [J]. ENERGY AND BUILDINGS, 2022, 254
  • [8] Day-ahead prediction of hourly electric demand in non-stationary operated commercial buildings: A clustering-based hybrid approach
    Chen, Yibo
    Tan, Hongwei
    Berardi, Umberto
    [J]. ENERGY AND BUILDINGS, 2017, 148 : 228 - 237
  • [9] Evolutionary double attention-based long short-term memory model for building energy prediction: Case study of a green building
    Ding, Zhikun
    Chen, Weilin
    Hu, Ting
    Xu, Xiaoxiao
    [J]. APPLIED ENERGY, 2021, 288
  • [10] AdaRNN: Adaptive Learning and Forecasting for Time Series
    Du, Yuntao
    Wang, Jindong
    Feng, Wenjie
    Pan, Sinno
    Qin, Tao
    Xu, Renjun
    Wang, Chongjun
    [J]. PROCEEDINGS OF THE 30TH ACM INTERNATIONAL CONFERENCE ON INFORMATION & KNOWLEDGE MANAGEMENT, CIKM 2021, 2021, : 402 - 411