Machine learning approach to uncovering residential energy consumption patterns based on socioeconomic and smart meter data

Wenjun Tang, Hao Wang, Xian Long Lee, Hong Tzer Yang

研究成果: Article同行評審

23 引文 斯高帕斯(Scopus)

摘要

The smart meter data analysis contributes to better planning and operations for the power system. This study aims to identify the drivers of residential energy consumption patterns from the socioeconomic perspective based on the consumption and demographic data using machine learning. We model consumption patterns by representative loads and reveal the relationship between load patterns and socioeconomic characteristics. Specifically, we analyze the real-world smart meter data and extract load patterns by clustering in a robust way. We further identify the influencing socioeconomic attributes on load patterns to improve our method's interpretability. The relationship between consumers' load patterns and selected socioeconomic features is characterized via machine learning models. The findings are as follows. (1) Twelve load clusters, consisting of six for weekdays and six for weekends, exhibit a diverse pattern of lifestyle and a difference between weekdays and weekends. (2) Among various socioeconomic features, age and education level are suggested to influence the load patterns. (3) Our proposed analytical model using feature selection and machine learning is proved to be more effective than XGBoost and conventional neural network model in mapping the relationship between load patterns and socioeconomic features.

原文English
文章編號122500
期刊Energy
240
DOIs
出版狀態Published - 2022 2月 1

All Science Journal Classification (ASJC) codes

  • 土木與結構工程
  • 建模與模擬
  • 可再生能源、永續發展與環境
  • 建築與營造
  • 燃料技術
  • 能源工程與電力技術
  • 污染
  • 機械工業
  • 能源(全部)
  • 管理、監督、政策法律
  • 工業與製造工程
  • 電氣與電子工程

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