Non-Intrusive Load Monitoring and Classification of Activities of Daily Living Using Residential Smart Meter Data

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Abstract

This paper develops an approach for household appliance identification and classification of household activities of daily living (ADLs) using residential smart meter data. The process of household appliance identification, i.e., decomposing a mains electricity measurement into each of its constituent individual appliances, is a very challenging classification problem. Recent advances have made deep learning a dominant approach for classification in fields, such as image processing and speech recognition. This paper presents a deep learning approach based on multilayer, feedforward neural networks that can identify common household electrical appliances from a typical household smart meter measurement. The performance of this approach is tested and validated using publicly available smart meter data sets. The identified appliances are then mapped to household activities, or ADLs. The resulting ADL classifier can provide insights into the behavior of the household occupants, which has a number of applications in the energy domain and in other fields.

Original languageEnglish
Article number8721550
Pages (from-to)339-348
Number of pages10
JournalIEEE Transactions on Consumer Electronics
Volume65
Issue number3
DOIs
Publication statusPublished - Aug 2019

Keywords

  • appliance identification
  • energy disaggregation
  • Load identification
  • machine learning
  • non-intrusive load monitoring
  • smart metering

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