APPLICATION OF ARTIFICIAL INTELLIGENT TECHNIQUES TO TEMPERATURE CONTROL IN AUTOMATED HOME HEATING

C.K. Okoro, O.A. Nwaorgu, K.O. Odo, S. Daniel, N.D. Kanu, P.C. Chikelu

Abstract


Temperature control in system such as home heating system is major thing to be considered in day to day life. Artificial intelligence (AI) has now become a day to day trend in the world at large and its application has improved technology as a whole. This paper presents different approaches to the application of AI techniques to household appliances, heater system to be precise. In this study, consideration was given to the heating system or temperature regulator system for household uses. The system was design to regulate the indoor temperature by comparing the differences between the outdoor and indoor temperature. Matlab/Simulink has been used for the design of this system. Three different AI techniques were considered in this study, these include the artificial neural network (ANN), Neuro-Fuzzy Logic (NFL) and the Fuzzy Logic (FL) techniques for controller structures. Performance analysis carried out showed that all the three AI techniques produced similar performances, however the regulated values for temperature and heat cost varied slightly for them, the ANN technique was seen to regulate the indoor temperature better but at a slightly higher cost than the other techniques.

 

KEYWORDS: AI, Smart Home, Heating System, Fuzzy Logic, Neuro-Fuzzy Logic, Artificial Neural Network.  


Full Text:

PDF

References


Adamu M .Z, Mmoloki M., Joseph C., Baboloki G., and Bokamoso B. (2018). Design and simulation of an automatic room heater control system. https://doi.org/10.1016/j.heliyon.2018.e00655

Bature, A. A., Muhammad, M., and Abdullahi, A. M. (2013). Design and Real Time Implementation of Fuzzy Controller for DC Motor Position Control. International Journal of Scientific and Technology Research Volume 2, Issue 11, pp. 254 - 256

Coelho, J., de Moura Oliveira, P., and Cunha, J., (2005). Greenhouse air temperature predictive control using the particle swarm optimisation algorithm. Comput. Electron. Agric. 49, 330–344.

Doaa M. A. and Hanaa T. E. (2016). Temperature control based on ANFIS. Journal of Electrical Systems and Information Technology xxx (2016) xxx–xxx, http://dx.doi.org/10.1016/j.jesit.2016.10.014

Evans, J. A., Foster, A. M., and Brown, T. (2014). Temperature control in domestic refrigerators and freezers.

Gunasekaran, R. (2016). Remote Control System for Home Automation and Reduce Energy Consumption. 1(12), 30–33.

Johare, K. P., Wagh, V. G., and Shaligram, A. D. (2022). Smart Home Automation System Using Advanced Embedded System Platforms with AI and IoT. 7(7), 328–333.

Kharat, S., Yadav, V., and Nippanikar, K. (2020). Home Automation using AI. June, 2170–2174.

Lafont, F.,and Balmat, J.F., (2002). Optimized fuzzy control of a greenhouse. Fuzzy Sets Syst. 128, 47–59.

Nair, R., and Mohan, K. R. (2016). Control of Temperature Using PID Controller. 5(5), 2013–2016.

Schöning, J., Riechmann, A., and Pfisterer, H. (2022). AI for Closed-Loop Control Systems. ICMLC ’22, February 18â•?21, 2022, Guangzhou, China, 1(1), 1–11. https://doi.org/10.1145/123123123.121212

Verma, S. K. (2014). Automated water head controller for domestic application. 154–159.


Refbacks

  • There are currently no refbacks.


Copyright (c) 2023 JOURNAL OF INVENTIVE ENGINEERING AND TECHNOLOGY (JIET)



Copyright  2020-2024. Journal of Inventive Engineering (JIET). All rights reserved. Nigerian Society of Engineers (NSE), Awka Branch.ISSN: 2705-3865

Powered by Myrasoft Systems Ltd.