The present research leverages prior works to automatically estimate wall and ceiling R-values using a combination of a smart WiFi thermostat, building geometry, and historical energy consumption data to improve the calculation of the mean radiant temperature (MRT), which is integral to the determination of thermal comfort in buildings. To assess the potential of this approach for realizing energy savings in any residence, machine learning predictive models of indoor temperature and humidity, based upon a nonlinear autoregressive exogenous model (NARX), were developed. The developed models were used to calculate the temperature and humidity set-points needed to achieve minimum thermal comfort at all times. The initial results showed cooling energy savings in excess of 83% and 95%, respectively, for high- and low-efficiency residences. The significance of this research is that thermal comfort control can be employed to realize significant heating, ventilation, and air conditioning (HVAC) savings using readily available data and systems.
Sustainable Futures, Journal
Premium Vector Environmental eco green environment day leaf
Top Selling Products Sustainability, Free Full-Text, double wall
Sustainability, Free Full-Text, solar environmental protection motor
Sustainability, Free Full-Text, vojvodina
Sustainability, Free Full-Text, aware tradução google
Crisis and Sustainability: The Delusion of Free Markets
Sustainability, Free Full-Text, keyser söze significado
G Tec Ddv 3810 Drivers - Colaboratory
Sustainability, Free Full-Text, icq invite 18