Analyzing different household energy use patterns using clustering and machine learning

被引:0
|
作者
Cui, Xue [1 ]
Lee, Minhyun [2 ]
Uddin, Mohammad Nyme [1 ]
Zhang, Xuange [1 ]
Zakka, Vincent Gbouna [3 ]
机构
[1] Hong Kong Polytech Univ, Dept Bldg & Real Estate, Hung Hom, Kowloon, Hong Kong, Peoples R China
[2] Hong Kong Polytech Univ, Res Inst Smart Energy, Dept Bldg & Real Estate, Hung Hom,Kowloon, Hong Kong, Peoples R China
[3] Aston Univ, Coll Engn & Phys Sci, Birmingham, England
来源
关键词
Energy use pattern; EUI level; Clustering; SHapley Additive exPlanations; Classification model; Machine learning; Residential buildings; BENCHMARKING; PREDICTION; BUILDINGS;
D O I
10.1016/j.rser.2025.115335
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
As the residential sector in the United States holds significant energy-saving potential, identifying and analyzing different energy use patterns is essential for households to assess their energy use intensity levels and understand their energy consumption practices. Most studies fail to differentiate between household energy use intensity levels when analyzing energy consumption practices and require actual long-term energy use data. To address these gaps, this study clustered households in the United States from the 2020 Residential Energy Consumption Survey into groups with different energy use intensity levels, then developed a classification model based on this energy use intensity level-labeled dataset for predicting household energy use intensity levels. K-means performed best among the five clustering approaches, which categorized households into low, medium, and high energy use patterns. Statistical analysis revealed significant differences in energy use intensity across the three energy use patterns, showing that high patterns had a median energy use intensity 1.88 times higher than medium patterns and 3.58 times higher than low patterns. Three machine learning algorithms were used to develop classification models, where the eXtreme Gradient Boosting-based model performed best, with an average accuracy of 0.85. This classification model can reliably assess household energy use intensity levels within seconds using only a few household features, enhancing household energy-saving motivation and addressing challenges in long-term data collection. Finally, SHapley Additive exPlanations was applied to the classification model to analyze different energy use patterns, providing targeted energy-saving priorities for three energy use patterns, and enabling more effective energy management strategies.
引用
收藏
页数:13
相关论文
共 50 条
  • [41] Improve hot region prediction by analyzing different machine learning algorithms
    Jing Hu
    Longwei Zhou
    Bo Li
    Xiaolong Zhang
    Nansheng Chen
    BMC Bioinformatics, 22
  • [42] Promoting new patterns in household energy consumption with pervasive learning games
    Bang, Magnus
    Gustafsson, Anton
    Katzeff, Cecilia
    PERSUASIVE TECHNOLOGY, 2007, 4744 : 55 - 63
  • [43] Improve hot region prediction by analyzing different machine learning algorithms
    Hu, Jing
    Zhou, Longwei
    Li, Bo
    Zhang, Xiaolong
    Chen, Nansheng
    BMC BIOINFORMATICS, 2021, 22 (SUPPL 3)
  • [44] Clustering Seismocardiographic Events using Unsupervised Machine Learning
    Gamage, Peshala T.
    Azad, Md Khurshidul.
    Taebi, Amirtaha
    Sandler, Richard H.
    Mansy, Hansen A.
    2018 IEEE SIGNAL PROCESSING IN MEDICINE AND BIOLOGY SYMPOSIUM (SPMB), 2018,
  • [45] User Clustering for Rate Splitting using Machine Learning
    Pereira, Roberto
    Deshpande, Anay Ajit
    Vaca-Rubio, Cristian J.
    Mestre, Xavier
    Zanella, Andrea
    Gregoratti, David
    de Carvalho, Elisabeth
    Popovski, Petar
    2022 30TH EUROPEAN SIGNAL PROCESSING CONFERENCE (EUSIPCO 2022), 2022, : 722 - 726
  • [46] Machine Learning for Subtyping Concussion Using a Clustering Approach
    Rosenblatt, Cirelle K.
    Harriss, Alexandra
    Babul, Aliya-Nur
    Rosenblatt, Samuel A.
    FRONTIERS IN HUMAN NEUROSCIENCE, 2021, 15
  • [47] Clustering of facies in tight carbonates using machine learning
    Glover, Paul W. J.
    Mohammed-Sajed, Omar K.
    Akyuz, Cenk
    Lorinczi, Piroska
    Collier, Richard
    MARINE AND PETROLEUM GEOLOGY, 2022, 144
  • [48] Household Waste Management System Using IoT and Machine Learning
    Dubey, Sonali
    Singh, Pushpa
    Yadav, Piyush
    Singh, Krishna Kant
    INTERNATIONAL CONFERENCE ON COMPUTATIONAL INTELLIGENCE AND DATA SCIENCE, 2020, 167 : 1950 - 1959
  • [49] Use machine learning to find energy materials
    De Luna, Phil
    Wei, Jennifer
    Bengio, Yoshua
    Aspuru-Guzik, Alan
    Sargent, Edward
    NATURE, 2017, 552 (7683) : 23 - 25
  • [50] Modeling energy partition patterns of growing pigs fed diets with different net energy levels based on machine learning
    Yang, Yuansen
    Hu, Qile
    Wang, Li
    Wang, Lu
    Xiao, Nuo
    Dong, Xinwei
    Liu, Shijie
    Lai, Changhua
    Zhang, Shuai
    JOURNAL OF ANIMAL SCIENCE, 2024, 102