2018-07-242018-07-24May 20182018-05May 2018Portions of this document appear in: Khalil, Nacer, Driss Benhaddou, Omprakash Gnawali, and Jaspal Subhlok. "Nonintrusive occupant identification by sensing body shape and movement." In Proceedings of the 3rd ACM International Conference on Systems for Energy-Efficient Built Environments, pp. 1-10. ACM, 2016. doi:10.1145/2993422.2993429; and in: Khalil, Nacer, Driss Benhaddou, Omprakash Gnawali, and Jaspal Subhlok. "Sonicdoor: scaling person identification with ultrasonic sensors by novel modeling of shape, behavior and walking patterns." In Proceedings of the 4th ACM International Conference on Systems for Energy-Efficient Built Environments, p. 3. ACM, 2017. doi: 10.1145/3137133.3137154; and in: Khalil, Nacer, Driss Benhaddou, Omprakash Gnawali, and Jaspal Subhlok. "Nonintrusive ultrasonic-based occupant identification for energy efficient smart building applications." Applied Energy 220 (2018): 814-828. doi.org/10.1016/j.apenergy.2018.03.018.http://hdl.handle.net/10657/3299Non-intrusive occupant identification enables numerous applications in smart buildings such device-free climate control and adjustment in buildings which would not only enhance occupants' comfort but also save energy. To achieve that, we propose a set of methods to identify occupants by sensing their body shape, movement, behaviors, and the path taken as they walk through the door or a network of doors. We mount three ultrasonic ping sensors, one on top to sense height and two on the sides of the door to sense width. We extract a feature set from the occupant's walk to non-intrusively identify him. We cluster the occupants using their waist girth and the time spent in the doorway. We are able to identify 20 occupants with an accuracy of 95%. Although this technology is four times better than the state of the art, it is not applicable to realistic building settings where the number of occupants is larger than 20. To achieve building-level occupant identification, we propose a set of improvements to the sensing platform which led to increasing the sampling rate from 30 Hz to over 132 Hz by performing sensor-sampling optimizations and sampling parallelization. We propose a novel methodology to filter down possible candidates and model the paths users take in the building using a Markov Model rather than relying on our clustering algorithm to point to the identity of the user. We also develop algorithms that detect a set of "behaviors" that users perform as they walk through the door. Such behaviors skew the data making the user appear as a different person and leads to misidentification. We accurately identified 100 people in a building using a network of five doors. This system is useful because it makes buildings aware of their users and their preferences which can lead to increased comfort and energy savings of the around 10% beyond regular occupancy-based energy saving systems.application/pdfengThe author of this work is the copyright owner. UH Libraries and the Texas Digital Library have their permission to store and provide access to this work. UH Libraries has secured permission to reproduce any and all previously published materials contained in the work. Further transmission, reproduction, or presentation of this work is prohibited except with permission of the author(s).SensingWireless sensor networksOccupant identificationClusteringUltrasonicOccupant Detection and Tracking in Smart Buildings using Unobtrusive Sensing2018-07-24Thesisborn digital