2023
DOI: 10.3390/electronics12153294
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Deep-Learning-Based Natural Ventilation Rate Prediction with Auxiliary Data in Mismeasurement Sensing Environments

Subhin Yang,
Mintai Kim,
Sungju Lee

Abstract: Predicting the amount of natural ventilation by utilizing environmental data such as differential pressure, wind, temperature, and humidity with IoT sensing is an important issue for optimal HVAC control to maintain comfortable air quality. Recently, some research has been conducted using deep learning to provide high accuracy in natural ventilation prediction. Therefore, high reliability of IoT sensing data is required to achieve predictions successfully. However, it is practically difficult to predict the ac… Show more

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Cited by 2 publications
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