2024
DOI: 10.3390/designs8040078
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LSTM Networks for Home Energy Efficiency

Zurisaddai Severiche-Maury,
Wilson Arrubla-Hoyos,
Raul Ramirez-Velarde
et al.

Abstract: This study aims to develop and evaluate an LSTM neural network for predicting household energy consumption. To conduct the experiment, a testbed was created consisting of five common appliances, namely, a TV, air conditioner, fan, computer, and lamp, each connected to individual smart meters within a Home Energy Management System (HEMS). Additionally, a meter was installed on the distribution board to measure total consumption. Real-time data were collected at 15-min intervals for 30 days in a residence that r… Show more

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