Corpus ID: 34720414

Non-intrusive Load Monitoring Using Imaging Time Series and Convolutional Neural Networks

@inproceedings{Mottahedi2016NonintrusiveLM,
  title={Non-intrusive Load Monitoring Using Imaging Time Series and Convolutional Neural Networks},
  author={Mohammad Mottahedi and S. Asadi},
  year={2016}
}
In recent years, more than 50 million advanced (smart) metering infrastructure units have been installed by the U.S electric utilities. Although, smart metering can provide hourly or sub-hourly customer load, it has failed to directly benefit and provide actionable information to consumers and engage them in energy savings. Using nonintrusive load monitoring techniques, the smart metering data can be disaggregated to individual components for each appliance which consequently can be used to… Expand
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