September 16, 2021
Conference Paper

Towards Learning-Based Architectures for Sensor Impact Evaluation in Building Controls

Abstract

Advanced control algorithms for building systems are known to have significant potential in reducing energy consumption while optimizing thermal comfort. The success of such algorithms is critically contingent on several different types of sensor systems, which are in turn, used for continuous monitoring, identification and estimation of several important building states, such as temperatures, humidity, air quality, power consumption and occupancy status. Nonidealities in any of these sensors can lead to significant performance degradation of the control functionalities, and may lead to unwanted sub-optimal building operation. In this paper, we provide a simulation example with a high-fidelity building model, for a particular use-case of advanced optimization-based control in buildings, i.e., occupancy-based controls. We show how imperfections in occupancy sensing can offset performance. Subsequently, we discuss a novel learning-based architecture to efficiently evaluate the impact of sensor nonidealities for building systems, in context of advanced control algorithms.

Published: September 16, 2021

Citation

Bhattacharya S., H. Sharma, and V.A. Adetola. 2021. Towards Learning-Based Architectures for Sensor Impact Evaluation in Building Controls. In Proceedings of the Twelfth ACM International Conference on Future Energy Systems (e-Energy '21), June 28-July 2, 2021, Virtual, Online, 493-498. New York, New York:Association for Computing Machinery. PNNL-SA-161319. doi:10.1145/3447555.3466591