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
  • [21] Prediction and Analysis of Household Energy Consumption Integrated with Renewable Energy Sources using Machine Learning Algorithms in Energy Management
    Jain, Nirbhi
    Sharma, Shreya
    Thakur, Vijyant
    Nutakki, Mounica
    Mandava, Srihari
    INTERNATIONAL JOURNAL OF RENEWABLE ENERGY RESEARCH, 2024, 14 (02): : 354 - 362
  • [22] Clustering superconductors using unsupervised machine learning
    Roter, B.
    Ninkovic, N.
    Dordevic, S. V.
    PHYSICA C-SUPERCONDUCTIVITY AND ITS APPLICATIONS, 2022, 598
  • [23] Flow clustering using machine learning techniques
    McGregor, A
    Hall, M
    Lorier, P
    Brunskill, J
    PASSIVE AND ACTIVE NETWORK MEASUREMENT, 2004, 3015 : 205 - 214
  • [24] Heart Murmurs Clustering Using Machine Learning
    Chen, Kun
    Mudvari, Akrit
    Barrera, Fabiana G. G.
    Cheng, Lin
    Ning, Taikang
    PROCEEDINGS OF 2018 14TH IEEE INTERNATIONAL CONFERENCE ON SIGNAL PROCESSING (ICSP), 2018, : 94 - 98
  • [25] Forecasting energy poverty using different machine learning techniques for Missouri
    Balkissoon, Sarah
    Fox, Neil
    Lupo, Anthony
    Haupt, Sue Ellen
    Penny, Stephen G.
    Miller, Steve J.
    Beetstra, Margaret
    Sykuta, Michael
    Ohler, Adrienne
    ENERGY, 2024, 313
  • [26] Solar Chatbot and Energy Prediction using different Machine Learning Algorithms
    Patni, Aditya
    Prabhu, Anuj
    Singh, Shubham
    Sankhe, Smita
    PROCEEDINGS OF THE 2021 FIFTH INTERNATIONAL CONFERENCE ON I-SMAC (IOT IN SOCIAL, MOBILE, ANALYTICS AND CLOUD) (I-SMAC 2021), 2021, : 1265 - 1273
  • [27] Machine learning-based energy consumption clustering and forecasting for mixed-use buildings
    Culaba, Alvin B.
    Del Rosario, Aaron Jules R.
    Ubando, Aristotle T.
    Chang, Jo-Shu
    INTERNATIONAL JOURNAL OF ENERGY RESEARCH, 2020, 44 (12) : 9659 - 9673
  • [28] PREDICTION OF FORMATION ENERGY USING TWO-STAGE MACHINE LEARNING BASED ON CLUSTERING
    Fan, Xingyue
    MATERIALI IN TEHNOLOGIJE, 2021, 55 (02): : 263 - 268
  • [29] Household archetypes and behavioural patterns in UK domestic energy use
    Ben, Hui
    Steemers, Koen
    ENERGY EFFICIENCY, 2018, 11 (03) : 761 - 771
  • [30] Household archetypes and behavioural patterns in UK domestic energy use
    Hui Ben
    Koen Steemers
    Energy Efficiency, 2018, 11 : 761 - 771