TY - GEN
T1 - Leveraging fine-grained occupancy estimation patterns for effective HVAC control
AU - Yuan, Yukun
AU - Liu, Kin Sum
AU - Munir, Sirajum
AU - Francis, Jonathan
AU - Shelton, Charles
AU - Lin, Shan
N1 - Publisher Copyright: © 2020 IEEE.
PY - 2020/4
Y1 - 2020/4
N2 - As occupancy sensing technologies become mature, various occupancy sensors are increasingly deployed in commercial buildings for pervasive occupancy monitoring. These sensors provide occupant-count data, which contains rich spatiotemporal information about occupancy patterns. With long-term occupant-count data collected from a commercial building, we design three different predictive models that capture the occupancy dynamics and examine how a model predictive control of the HVAC system benefits from actual occupancy count prediction. Our analysis reveals that mispredictions of occupancy states, especially false positives and false negatives, may introduce inefficient control that leads to energy waste or user discomfort. To address this issue, we take a step further to design an adaptive model predictive controller that minimizes inefficient control actions according to misprediction types and distributions. A comprehensive evaluation is performed in OpenBuild and EnergyPlus simulators to study the effectiveness of the proposed end-to-end control strategy. The evaluation shows that the proposed solution reduces energy consumption by 29.5% while improving the average weighted occupants comfort by 86.7% in Predicted Mean Vote (PMV) over the fixed schedule strategy.
AB - As occupancy sensing technologies become mature, various occupancy sensors are increasingly deployed in commercial buildings for pervasive occupancy monitoring. These sensors provide occupant-count data, which contains rich spatiotemporal information about occupancy patterns. With long-term occupant-count data collected from a commercial building, we design three different predictive models that capture the occupancy dynamics and examine how a model predictive control of the HVAC system benefits from actual occupancy count prediction. Our analysis reveals that mispredictions of occupancy states, especially false positives and false negatives, may introduce inefficient control that leads to energy waste or user discomfort. To address this issue, we take a step further to design an adaptive model predictive controller that minimizes inefficient control actions according to misprediction types and distributions. A comprehensive evaluation is performed in OpenBuild and EnergyPlus simulators to study the effectiveness of the proposed end-to-end control strategy. The evaluation shows that the proposed solution reduces energy consumption by 29.5% while improving the average weighted occupants comfort by 86.7% in Predicted Mean Vote (PMV) over the fixed schedule strategy.
UR - https://www.scopus.com/pages/publications/85085945531
U2 - 10.1109/IoTDI49375.2020.00016
DO - 10.1109/IoTDI49375.2020.00016
M3 - Conference contribution
T3 - Proceedings - 5th ACM/IEEE Conference on Internet of Things Design and Implementation, IoTDI 2020
SP - 92
EP - 103
BT - Proceedings - 5th ACM/IEEE Conference on Internet of Things Design and Implementation, IoTDI 2020
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 5th ACM/IEEE Conference on Internet of Things Design and Implementation, IoTDI 2020
Y2 - 21 April 2020 through 24 April 2020
ER -