Forecasting building operation dynamics using a Physics-Informed Spatio-Temporal Graph Neural Network (PISTGNN) ensemble

被引:0
|
作者
Lee, Jongseo [1 ,2 ]
Cho, Sungzoon [1 ]
机构
[1] Seoul Natl Univ, Dept Ind Engn, Seoul 08826, South Korea
[2] Samsung E&A Co Ltd, Smart Automat Dev Grp, Seoul 05288, South Korea
关键词
Sustainable building management; Deep learning in building operation forecasting; Spatio temporal graph neural network; Diffusion convolution recurrent neural; network; Physics Informed neural network; Ensemble learning; CONVOLUTIONAL NETWORK; SIMULATION;
D O I
10.1016/j.enbuild.2024.115085
中图分类号
TU [建筑科学];
学科分类号
0813 ;
摘要
Forecasting future building operation states provides operators with comprehensive insights, allowing them to understand and optimize the factors influencing various aspects of building performance, including energy consumption. While conventional modeling tools such as EnergyPlus are widely employed to predict the behavior of buildings, they often struggle to capture the full complexity of real-world operational dynamics, as their outputs are greatly affected by the assumptions made during the modeling process and due to the stochasticity associated with real-world building operations. In this regard, this paper investigates the Physics-Informed Deep Spatio-Temporal Graph Neural Network (PISTGNN) Ensemble, which integrates residual learning and physics constraints into an encoder-decoder structured Diffusion Convolutional Recurrent Neural Network (DCRNN), to precisely estimate building operational dynamics 5 minutes in advance. The experimental results demonstrate that the Ensemble model achieved an average improvement of 44.7% in RMSE over the pure data-driven model across seasonal test sets, underscoring its robustness. Moreover, the model's predictions deviate by only 0.78% from the true values in real-world scenarios, highlighting its exceptional accuracy and reliability for practical applications. PINN integration enhances the model's capability to manage compounding errors in data-sparse regions, reducing model uncertainty.
引用
收藏
页数:16
相关论文
共 50 条
  • [1] Physics-informed graph neural network for spatial-temporal production forecasting
    Liu, Wendi
    Pyrcz, Michael J.
    GEOENERGY SCIENCE AND ENGINEERING, 2023, 223
  • [2] Spatio-Temporal Graph Neural Networks for Aggregate Load Forecasting
    Eandi, Simone
    Cini, Andrea
    Lukovic, Slobodan
    Alippi, Cesare
    2022 INTERNATIONAL JOINT CONFERENCE ON NEURAL NETWORKS (IJCNN), 2022,
  • [3] Hydrogen jet and diffusion modeling by physics-informed graph neural network
    Zhang, Xinqi
    Shi, Jihao
    Li, Junjie
    Huang, Xinyan
    Xiao, Fu
    Wang, Qiliang
    Usmani, Asif Sohail
    Chen, Guoming
    RENEWABLE & SUSTAINABLE ENERGY REVIEWS, 2025, 207
  • [4] Reconstruction of downburst wind fields using physics-informed neural network
    Yao, Binbin
    Wang, Zhisong
    Fang, Zhiyuan
    Li, Zhengliang
    JOURNAL OF WIND ENGINEERING AND INDUSTRIAL AERODYNAMICS, 2024, 254
  • [5] Indoor airflow field reconstruction using physics-informed neural network
    Wei, Chenghao
    Ooka, Ryozo
    BUILDING AND ENVIRONMENT, 2023, 242
  • [6] A Physics-Informed Neural Network for the Prediction of Unmanned Surface Vehicle Dynamics
    Xu, Peng-Fei
    Han, Chen-Bo
    Cheng, Hong-Xia
    Cheng, Chen
    Ge, Tong
    JOURNAL OF MARINE SCIENCE AND ENGINEERING, 2022, 10 (02)
  • [7] Solving spatiotemporal partial differential equations with Physics-informed Graph Neural Network
    Xiang, Zixue
    Peng, Wei
    Yao, Wen
    Liu, Xu
    Zhang, Xiaoya
    APPLIED SOFT COMPUTING, 2024, 155
  • [8] Long-term wind power forecasting with series decomposition and spatio-temporal graph neural network
    Yang, Yujie
    Chen, Junhong
    Zheng, Wenbin
    Zhang, Fan
    INTERNATIONAL JOURNAL OF GREEN ENERGY, 2024, 21 (15) : 3470 - 3484
  • [9] A novel frequency-domain physics-informed neural network for accurate prediction of 3D Spatio-temporal wind fields in wind turbine applications
    Li, Shaopeng
    Li, Xin
    Jiang, Yan
    Yang, Qingshan
    Lin, Min
    Peng, Liuliu
    Yu, Jianhan
    APPLIED ENERGY, 2025, 386
  • [10] Efficient Physics-Informed Neural Network for Ultrashort Pulse Dynamics in Optical Fibers
    Wu, Jinhong
    Wang, Zimiao
    Chen, Ruifeng
    Li, Qian
    JOURNAL OF LIGHTWAVE TECHNOLOGY, 2025, 43 (03) : 1372 - 1380