SMART HOME CLIMATE CONTROL SYSTEM BASED ON FUZZY LOGIC CONTROLLER
Abstract
The system of smart home climate control based on fuzzy logic and the Raspberry Pi microcomputer that ensures the operation of the heater, conditioner and humidifier of air has been developed. As a result of presenting input data using linguistic variables and fuzzy production rules for current values of temperature and relative humidity, output signals to control the functional devices of the smart home are obtained. The proposed approach is implemented using the Mamdani algorithm that includes the stages of fuzzification of input variables, aggregation of the truth of each rule sub-conditions, activation of conclusions and defuzzification of output variables. The application of fuzzy logic in the smart home climate control system makes it possible to take into account the individual characteristics and preferences of residents.
Keywords: smart home, climate control system, fuzzy logic controller, production rules, fuzzy inference, Raspberry Pi.
Full Text:
PDFReferences
[1] Harper R. Inside the Smart Home. - London: Springer, 2003.
[2] Ming С., Kadry S., Dasel A. Automating smart Internet of Things devices in modern homes using context-based fuzzy logic // Computational Intelligence. - 2020, https://doi.org/10.1111/coin.12370
[3] Zhou S., Wu Z., Li J., Zhang X. Real-time Energy Control Approach for Smart Home Energy Management System // Electric Power Components and Systems. - 2014. - Vol. 42. - P. 315-326.
[4] Mendes T.D.P., Godina R., Rodrigues E.M.G., Matias J.C.O., Catalao J.P.S. Smart home communication technologies and applications: wireless protocol assessment for home area network resources // Energies. - 2015. - Vol. 8. - P. 7279-7311.
[5] Zhang D., Shah N., Papageorgiou L.G. Efficient energy consumption and operation management in a smart building with microgrid // Energy Conversion and Management. - 2013. - Vol. 74. - P. 209-222.
[6] Robles R.J., Kim T.-H. Applications, systems and methods in smart home technology: A review // International Journal of Advanced Science and Technology. - 2010. - Vol. 15. - P. 37-47.
[7] Hsu Y.L., Chou P.H., Chang H.C., Lin S.L., Yang S.C., Su H.Y., Chang C.C., Cheng Y.S., Kuo Y.C. Design and Implementation of a Smart Home System Using Multisensor Data Fusion Technology // Sensors. - 2017. - Vol. 17. - P. 1631.
[8] Higuera J., Hertog W., Per?lvarez M., Carreras J. Hybrid smart lighting and climate control system for buildings // Proc. Conference: IET Future Intelligent Cities, 2014, London. DOI:10.1049/ic.2014.0047.
[9] Nacer A., Marhic B., Delahoche L. Smart Home, Smart HEMS, Smart heating: An overview of the latest products and trends // 2017 6th International Conference on Systems and Control (ICSC). - 2017. - P. 90-95.
[10] Altayeva A.B., Omarov B.S., Cho Y.I. Intelligent Microclimate Control System Based on IoT // International Journal of Fuzzy Logic and Intelligent Systems. - 2016. - Vol. 16, No. 4 - P. 254-261.
[11] Jimenez-Bravo D.M., Murciego A.L., De la Iglesia D.H., De Paz J.F., Gonzalez G.V. Central Heating Cost Optimization for Smart-Homes with Fuzzy Logic and a Multi-Agent Architecture // Appl. Sci. - 2020. - Vol. 10. - 4057. DOI:10.3390/app10124057
[12] Olenych I.B. Fuzzy logic controller for smart home lighting control // Information and Telecommunication Sciences. - 2017. -Vol. 9, No 2. - P. 50-55.
[13] Kumar V., Kumar S., Kansal H. Fuzzy logic controller based operating room air condition control system // International Journal of Innovative Research in Electrical, Electronics, Instrumentation and Control Engineering. - 2014. - Vol. 2. - P. 510-514.
[14] Sobhy S.M., Khedr W.M. Developing of fuzzy logic controller for air condition system // International Journal of Computer Applications. - 2015. - Vol. 126. - P. 1-8.
[15] Mamdani E.H. Application of fuzzy algorithms for the control of a simple dynamic plant // Proceedings of the Institution of Electrical Engineers. - 1974. - Vol. 121. - P. 1585-1588.
[16] Bai Y., Wang D. Fundamentals of fuzzy logic control - fuzzy sets, fuzzy rules and defuzzifications. Advanced Fuzzy Logic Technologies in Industrial Applications. - Springer, 2006.
[17] Raspberry Pi Documentation [Electronic resource]. - Mode of access: https://www.raspberrypi.com/documentation/computers/os.html
[18] DHT11 Temperature & Humidity Sensor [Electronic resource]. - Mode of access: https://www.mouser.com/datasheet/2/758/DHT11-Technical-Data-Sheet-Translated-Version-1143054.pdf
DOI: http://dx.doi.org/10.30970/eli.17.3
Refbacks
- There are currently no refbacks.