ABSTRACT
Residential buildings contribute significantly to the overall energy usage across the world. Real deployments, and collected data thereof, play a critical role in providing insights into home energy consumption and occupant behavior. Existing datasets from real residential deployments are all from the developed countries. Developing countries, such as India, present unique opportunities to evaluate the scalability of existing research in diverse settings. Building upon more than a year of experience in sensor network deployments, we undertake an extensive deployment in a three storey home in Delhi, spanning 73 days from May-August 2013, measuring electrical, water and ambient parameters. We used 33 sensors across the home, measuring these parameters, collecting a total of approx. 400 MB of data daily. We discuss the architectural implications on the deployment systems that can be used for monitoring and control in the context of developing countries. Addressing the unreliability of electrical grid and internet in such settings, we present Sense Local-store Upload architecture for robust data collection. While providing several unique aspects, our deployment further validates the common considerations from similar residential deployments, discussed previously in the literature. We also release our collected data- Indian data for Ambient Water and Electricity Sensing (iAWE), for public use.
- Y. Agarwal, B. Balaji, S. Dutta, R. K. Gupta, and T. Weng. Duty-cycling buildings aggressively: The next frontier in hvac control. In Information Processing in Sensor Networks (IPSN), 2011 10th International Conference on, pages 246--257. IEEE, 2011.Google Scholar
- Y. Agarwal, R. Gupta, D. Komaki, and T. Weng. Buildingdepot: an extensible and distributed architecture for building data storage, access and sharing. In Proceedings of the Fourth ACM Workshop on Embedded Sensing Systems for Energy-Efficiency in Buildings, pages 64--71. ACM, 2012. Google ScholarDigital Library
- K. Anderson, A. Ocneanu, D. Benitez, D. Carlson, A. Rowe, and M. Bergés. Blued: a fully labeled public dataset for event-based non-intrusive load monitoring research. In Proceedings of the 2nd KDD Workshop on Data Mining Applications in Sustainability, Beijing, China, pages 12--16, 2012.Google Scholar
- P. Arjunan, N. Batra, H. Choi, A. Singh, P. Singh, and M. B. Srivastava. SensorAct: A Privacy and Security Aware Federated Middleware for Building Management. In Fourth ACM Workshop On Embedded Sensing Systems For Energy-Efficiency In Buildings, BuildSys, 2012. Google ScholarDigital Library
- S. Barker, A. Mishra, D. Irwin, E. Cecchet, P. Shenoy, and J. Albrecht. Smart*: An open data set and tools for enabling research in sustainable homes. In The 1st KDD Workshop on Data Mining Applications in Sustainability (SustKDD), 2011.Google Scholar
- S. Barker, A. Mishra, D. Irwin, P. Shenoy, and J. Albrecht. Smartcap: Flattening peak electricity demand in smart homes. In Pervasive Computing and Communications (PerCom), 2012 IEEE International Conference on, pages 67--75. IEEE, 2012.Google ScholarCross Ref
- N. Batra, P. Arjunan, A. Singh, and P. Singh. Experiences with occupancy based building management systems. In Intelligent Sensors, Sensor Networks and Information Processing, 2013 IEEE Eighth International Conference on, pages 153--158, 2013.Google Scholar
- N. Batra, H. Dutta, and A. Singh. Indic: Improved non-intrusive load monitoring using load division and calibration. In Machine Learning and Applications (ICMLA), 2013 Twelfth International Conference on. IEEE, 2013.Google ScholarDigital Library
- S. Dawson-Haggerty, X. Jiang, G. Tolle, J. Ortiz, and D. Culler. smap: a simple measurement and actuation profile for physical information. In Proceedings of the 8th ACM Conference on Embedded Networked Sensor Systems, pages 197--210. ACM, 2010. Google ScholarDigital Library
- M. Evans, B. Shui, and S. Somasundaram. Country Report on Building Energy Codes in India. Pacific Northwest National Laboratory.Google Scholar
- T. Ganu, D. P. Seetharam, V. Arya, R. Kunnath, J. Hazra, S. A. Husain, L. C. De Silva, and S. Kalyanaraman. nplug: a smart plug for alleviating peak loads. In Proceedings of the 3rd International Conference on Future Energy Systems: Where Energy, Computing and Communication Meet, page 30. ACM, 2012. Google ScholarDigital Library
- G. W. Hart. Nonintrusive appliance load monitoring. Proceedings of the IEEE, 80(12):1870--1891, 1992.Google ScholarCross Ref
- T. W. Hnat, V. Srinivasan, J. Lu, T. I. Sookoor, R. Dawson, J. Stankovic, and K. Whitehouse. The hitchhiker's guide to successful residential sensing deployments. In Proceedings of the 9th ACM Conference on Embedded Networked Sensor Systems, pages 232--245. ACM, 2011. Google ScholarDigital Library
- J. Z. Kolter and M. J. Johnson. Redd: A public data set for energy disaggregation research. In proceedings of the SustKDD workshop on Data Mining Applications in Sustainability, pages 1--6, 2011.Google Scholar
- S. Makonin, F. Popowich, L. Bartram, B. Gill, and I. V. Bajic. AMPds: A Public Dataset for Load Disaggregation and Eco-Feedback Research. In Electrical Power and Energy Conference (EPEC), 2013 IEEE, pages 1--6, 2013.Google Scholar
- M. Meeker. Internet trends at stanford bases. KPCB, 2012.Google Scholar
- A. Mishra, D. Irwin, P. Shenoy, J. Kurose, and T. Zhu. Smartcharge: cutting the electricity bill in smart homes with energy storage. In Proceedings of the 3rd International Conference on Future Energy Systems: Where Energy, Computing and Communication Meet, page 29. ACM, 2012. Google ScholarDigital Library
- O. Parson, S. Ghosh, M. Weal, and A. Rogers. Non-intrusive load monitoring using prior models of general appliance types. In 26th AAAI Conference on Artificial Intelligence, 2012.Google Scholar
- L. V. Thanayankizil, S. K. Ghai, D. Chakraborty, and D. P. Seetharam. Softgreen: Towards energy management of green office buildings with soft sensors. In Communication Systems and Networks (COMSNETS), 2012 Fourth International Conference on, pages 1--6. IEEE, 2012.Google ScholarCross Ref
Index Terms
- It's Different: Insights into home energy consumption in India
Recommendations
The hitchhiker's guide to successful residential sensing deployments
SenSys '11: Proceedings of the 9th ACM Conference on Embedded Networked Sensor SystemsHomes are rich with information about people's energy consumption, medical health, and personal or family functions. In this paper, we present our experiences deploying large-scale residential sensing systems in over 20 homes. Deploying small-scale ...
Annotating smart environment sensor data for activity learning
Smart Environments: Technology to Support HealthcareThe pervasive sensing technologies found in smart homes offer unprecedented opportunities for providing health monitoring and assistance to individuals experiencing difficulties living independently at home. In order to monitor the functional health of ...
Fusion of Multiple Sensors Sources in a Smart Home to Detect Scenarios of Activities in Ambient Assisted Living
This work takes place within the framework of Smart Homes, with the goal to monitor the activities of elderly people, living independently at home, in order to continuously assess their level of activity and therefore their autonomy. A method is ...
Comments