2024
DOI: 10.48084/etasr.7008
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Using Artificial Neural Networks with GridSearchCV for Predicting Indoor Temperature in a Smart Home

Talal Alshammari

Abstract: The acceleration of house technology via the use of mobile phones has made it easier to control houses, where occupants (especially older people) spend most of their time. The climate of Saudi Arabia, especially in the northern area, is too hot during summer and cold during winter. Control of the indoor environment in a smart home is a preferable choice that can reduce power consumption to operate heating, ventilation, and air-conditioning. Machine learning algorithms have been used to predict physical variabl… Show more

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