Data-driven building load prediction and large language models: Comprehensive overview

被引:0
作者
Zhang, Yake [1 ]
Wang, Dijun [2 ]
Wang, Guansong [3 ]
Xu, Peng [1 ]
Zhu, Yihao [2 ]
机构
[1] Tongji Univ, Sch Mech Engn, Shanghai 200092, Peoples R China
[2] Guangzhou Metro Design & Res Inst Co Ltd, Guangzhou 510030, Peoples R China
[3] Tongji Univ, Sch Software Engn, Shanghai 200092, Peoples R China
基金
中国国家自然科学基金;
关键词
Data-driven approach; Building load prediction; Machine learning; Large language models; Feature engineering; Data preparation; Room-scale load prediction; Retrieval augmented generation; ARTIFICIAL NEURAL-NETWORKS; ENERGY-CONSUMPTION; DATA FUSION; RANDOM FOREST; ELECTRICITY CONSUMPTION; FORECASTING TECHNIQUES; KNOWLEDGE DISCOVERY; DEMAND; TIME; REGRESSION;
D O I
10.1016/j.enbuild.2024.115001
中图分类号
TU [建筑科学];
学科分类号
0813 ;
摘要
Building load forecasting is essential for optimizing the architectural design and managing energy efficiently, enhancing the performance of Heating, Ventilation, and Air Conditioning systems, and enhancing occupant comfort. With advancements in data science and machine learning, the focus on predicting building loads through data analysis has significantly intensified as a research domain. However, previous studies have typically faced challenges such as data scarcity, improper feature extraction methods, and weak model generalization capabilities. To gain a deeper understanding of these issues, a comprehensive review of data processing, feature selection, and model selection methods in previous research is conducted from the perspective of the entire load forecasting process. The aim is to identify the most suitable methods for each step of load forecasting to enhance prediction accuracy. This review surveys the research progress of statistical learning methods, traditional machine learning methods, deep learning methods, and hybrid methods in different application scenarios of building load prediction. Then, it emphasized the critical role of data preprocessing and focused on techniques like data fusion and transfer learning to overcome data shortages and bolster the models' ability to generalize. Moreover, the obtainment of significant features from building characteristics, weather data, and operational statistics to boost prediction accuracy is explored. A notable contribution of this review is the proposed technical framework for EnergyPlus model generation using LLM-based Retrieval Augmented Generation (RAG) technology and room- level load prediction with Spatio-Temporal Graph Neural Networks. This framework utilize architectural design drawings to achieve an "end-to-end" prediction process, aiming to reduce the professional threshold of load prediction and provide technical support for fine-grained regulation of building operation. Exploratory experiment is conducted using a single-zone building model to verify the feasibility of LLMgenerated EnergyPlus models, with IDF simulation file generation taking only 196 s. Room-level load forecasting with LLMs remains to be explored further. It is reasonable to believe that the methods proposed in this review hold promise for advancing data-driven building load forecasting technologies.
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页数:28
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共 154 条
  • [81] Could an artificial-intelligence agent pass an introductory physics course?
    Kortemeyer, Gerd
    [J]. PHYSICAL REVIEW PHYSICS EDUCATION RESEARCH, 2023, 19 (01):
  • [82] An overview of artificial intelligence-based methods for building energy systems
    Krarti, M
    [J]. JOURNAL OF SOLAR ENERGY ENGINEERING-TRANSACTIONS OF THE ASME, 2003, 125 (03): : 331 - 342
  • [83] Choosing the appropriate sensitivity analysis method for building energy model-based investigations
    Kristensen, Martin Heine
    Petersen, Steffen
    [J]. ENERGY AND BUILDINGS, 2016, 130 : 166 - 176
  • [84] Kumar M., 2008, Am. Soc. Mech. Eng. Digital Collection, P1759, DOI [10.1115/IMECE2005-80972, DOI 10.1115/IMECE2005-80972]
  • [85] Electrical load forecasting models: A critical systematic review
    Kuster, Corentin
    Rezgui, Yacine
    Mourshed, Monjur
    [J]. SUSTAINABLE CITIES AND SOCIETY, 2017, 35 : 257 - 270
  • [86] Day-ahead load forecast using random forest and expert input selection
    Lahouar, A.
    Slama, J. Ben Hadj
    [J]. ENERGY CONVERSION AND MANAGEMENT, 2015, 103 : 1040 - 1051
  • [87] The use of occupancy space electrical power demand in building cooling load prediction
    Leung, M. C.
    Tse, Norman C. F.
    Lai, L. L.
    Chow, T. T.
    [J]. ENERGY AND BUILDINGS, 2012, 55 : 151 - 163
  • [88] Short-term electricity consumption prediction for buildings using data-driven swarm intelligence based ensemble model
    Li, Kangji
    Tian, Jing
    Xue, Wenping
    Tan, Gang
    [J]. ENERGY AND BUILDINGS, 2021, 231 (231)
  • [89] Building's electricity consumption prediction using optimized artificial neural networks and principal component analysis
    Li, Kangji
    Hu, Chenglei
    Liu, Guohai
    Xue, Wenping
    [J]. ENERGY AND BUILDINGS, 2015, 108 : 106 - 113
  • [90] Li TH, 2023, Arxiv, DOI [arXiv:2304.10946, DOI 10.48550/ARXIV.2304.10946]