Occupancy Detection using Gas Sensors
Andrzej Szczurek, Monika Maciejewska, Tomasz Pietrucha
2017
Abstract
Room occupancy is an important variable in high performance building management. Presence of people is usually detected by dedicated sensing systems. The most popular ones exploit physical phenomena. Such sensing solutions include passive infrared motion detectors, magnetic reed switches, ultrasonic, microwave and audible sensors, video cameras and radio-frequency identification. However, in most cases either human movement is needed to succeed in detection or privacy issues are involved. In this work, we studied occupancy detection using chemical sensors. In this case, the basis for detecting human presence indoors is their influence of chemical composition of air. Movement of people is not needed to succeed and privacy of occupants is secured. The approach was reported effective when using carbon dioxide, which is one of major human metabolites. We focused on volatile organic compounds (VOCs). Their consideration is justified because numerous human effluents belong to this group. The analysis showed that VOCs’ sensors, such as semiconductor gas sensors, offer comparable occupancy detection accuracy (97.16 %) as nondispersive infrared sensor (NDIR) (97.36 %), which is considered as the benchmark. In view of our results, semiconductor gas sensors are interesting candidates for nodes of sensor nets dedicated to detection of human presence indoors. They are smaller, cheaper and consume less energy.
References
- Agarwal, Y., Balaji, B., Gupta, R., Lyles, J., Wei, M., Weng, T., 2010. Occupancy-driven energy management for smart building automation. In Proceedings of the 2nd ACM Workshop on Embedded Sensing Systems for Energy-Efficiency in Building. ACM, 1-6.
- Brooks, J., Kumar, S., Goyal, S., Subramany, R., Barooah, P., 2015. Energy-efficient control of under-actuated HVAC zones in commercial buildings, Energy and Buildings, 93, 160-168.
- Brooks, J., Goyal, S., Subramany, R., Lin, Y., Middelkoop, T., Arpan, L., Carloni, L., Barooah, P., 2014. An experimental investigation of occupancy-based energyefficient control of commercial building indoor climate. In: Proceeding of the IEEE 53rd Annual Conference on, IEEE, Decision and Control (CDC), Los Angeles, CA, 5680-5685.
- Candanedo L.M., Feldheim V., 2016. Accurate occupancy detection of an office room from light, temperature, humidity and CO2 measurements using statistical learning models. Energy and Buildings, 112, 28-39.
- Dickerson, R. , Gorlin, E., Stankovic. J., 2011. Empath: A continuous remote emotional health monitoring system for depressive illness. In Proc. Wireless Health'11. ACM.
- Dodier, R., Henze, G., Tiller, D., Guo, X., 2006. Building occupancy detection through sensor belief networks, Energy and Buildings, 38(9), 1033-1043.
- Erickson, V.L., Lin, Y., Kamthe, A., Brahme, R., Surana, A., Cerpa, A. E., Sohn, M. D., Narayanan S., 2009. Energy Efficient Building Environment Control Strategies Using Real-time Occupancy Measurements, In Proceeding of BuildSys 7809 Proceedings of the First ACM Workshop on Embedded Sensing Systems for Energy Efficiency in Buildings, 19-24.
- Erickson, V., Cerpa, A., 2010. Occupancy based demand response HVAC control strategy. In Proceedings of the 2nd ACM Workshop on Embedded Sensing Systems for Energy-Efficiency in Building (BuildSys 2010), 7-10.
- Erickson, V.L., Carreira-Perpinán, M.Á., Cerpa, A.E. 2011. OBSERVE: Occupancy-based system For efficient reduction of HVAC energy. In Proceedings of the 10th International Conference on, IEEE, Information Processing in Sensor Networks (IPSN), Chicago, IL, 258-269.
- Erickson, V.L., Carreira-Perpinán, M.Á., Cerpa, A.E., 2014. Occupancy modeling and prediction for building energy management, ACM Trans. Sensor Netw. (TOSN), 10(3), 42.
- Funiak, S., Guestrin, C., Paskin, M., Sukthankar, R., 2006. Distributed Localization of Networked Cameras, In the Fifth International Conference on Information Processing in Sensor Networks, Proceedings of the Fifth International Conference on Information Processing in Sensor Networks, IPSN 2006, Nashville, Tennessee, USA.
- Jiang Ch., Masood M.K., Soh Y. Ch., Li H., 2016. Indoor occupancy estimation from carbon dioxide concentration, Energy and Buildings, 131, 132-141.
- Kleiminger, W., Beckel, Ch., Santini, S., 2011. Opportunistic Sensing for Efficient Energy Usage in Private Households, In Proceedings of the Smart Energy Strategies Conference, 1-6.
- Kleiminger, W., Beckel, C., Dey, A., Santini, S., 2013a. Poster Abstract: Using unlabeled Wi-Fi scan data to discover occupancy patterns of private households, In Proceedings of the 11th ACM Conference on Embedded Networked Sensor Systems, 47.
- Kleminger, W., Beckel, Ch., Staake, T., Santini, S. 2013b. Occupancy Detection from Electricity Consumption Data. In Proceedings of the 5th ACM Workshop on Embedded Systems For Energy-Efficient Buildings, BuildSys'13, 1-8.
- Labeodan T., Zeiler W., Boxern G., Zhao Y., 2015. Occupancy measuremnt in commercial office buildings for dmend-driven control applicaions - A survey and detection system evaluation, Energy and Buildings, 93, 303-314.
- Melfi, R., Rosenblum, B., Nordman, B., Christensen, K., 2011. Measuring Building Occupancy Using Existing Network Infrastructure, In Proceeding IGCC 7811 Proceedings of the 2011 International Green Computing Conference and Workshops, 1-8.
- Neida, B., Maniccia, D., Tweed, A., 2001. An analysis of the energy and cost savings potential of occupancy sensors for commercial lighting systems, Journal of the Illuminating Engineering Society of North America, 111-125.
- Nguyen, T.A., Aiello, M., 2013. Energy intelligent buildings based on user activity: A survey. Energy and Buildings, 56, 244-257.
- Park Ch. H., Kim S. B., 2015. Sequential random k-nearest neighbor feature selection for high-dimensional data. Expert Systems with Applications, 42, 2336-2342.
- Ramoser H., Schlogl, T., Beleznail, C., Winter, M., Bischof H. 2003. Shape-based detection of humans for video surveillance applications. In Proc. of IEEE Int. Conf. on Image Processing, 1013-1016.
- Scott, J. , Brush, A.B., Krumm, J., Meyers, B., Hazas, M., Hodges, S., Villar, N., 2011. Preheat: controlling home heating using occupancy prediction, In Proceedings of the 13th international conference on Ubiquitous computing. ACM, 281-290.
- Wang S., Burnett J., Chong H., 1999. Experimental validation of CO2-based occupancy detection for demand controlled ventilation. Indoor and built environment, 8, 377-391.
- Webb A., Statistical Pattern Recognition, Arnold, 1999.
Paper Citation
in Harvard Style
Szczurek A., Maciejewska M. and Pietrucha T. (2017). Occupancy Detection using Gas Sensors . In Proceedings of the 6th International Conference on Sensor Networks - Volume 1: SENSORNETS, ISBN 978-989-758-211-0, pages 99-107. DOI: 10.5220/0006207100990107
in Bibtex Style
@conference{sensornets17,
author={Andrzej Szczurek and Monika Maciejewska and Tomasz Pietrucha},
title={Occupancy Detection using Gas Sensors},
booktitle={Proceedings of the 6th International Conference on Sensor Networks - Volume 1: SENSORNETS,},
year={2017},
pages={99-107},
publisher={SciTePress},
organization={INSTICC},
doi={10.5220/0006207100990107},
isbn={978-989-758-211-0},
}
in EndNote Style
TY - CONF
JO - Proceedings of the 6th International Conference on Sensor Networks - Volume 1: SENSORNETS,
TI - Occupancy Detection using Gas Sensors
SN - 978-989-758-211-0
AU - Szczurek A.
AU - Maciejewska M.
AU - Pietrucha T.
PY - 2017
SP - 99
EP - 107
DO - 10.5220/0006207100990107