Nikat Rajak Mulla,
Kazi Kutubuddin Sayyad Liyakat,
- Student, Department of Electronics and Telecommunication Engineering, Brahmdevdada Mane Institute of Technology, Solapur, Maharashtra, India
- Professor and Head, Department of Electronics and Telecommunication Engineering, Brahmdevdada Mane Institute of Technology, Solapur, Maharashtra, India
Abstract
The advantages of an intelligent home system are numerous, ranging from the management of household duties and energy economy to the management of convenience and security. As a result of the continuing development of technology, it is becoming increasingly essential for modern households. Besides contributing to rendering living simpler, it leads to an improvement in the quality of our lives. Consequently, if you are interested in modernizing your home, you should consider purchasing Intelligent home so that you may take advantage of the comfort and convenience that it provides. Our lives have been dramatically revolutionized as a result of the GSM-based Intelligent home that has enhanced the level of comfort, security, and efficiency in our houses. As a result of the numerous benefits that they offer to homeowners, home automation systems that are based on GSM technology are an option that is highly attractive for modern homes. One of the most important advantages of this system is its adaptability. On account of the fact that it is based on a wireless network, it can be accessed and controlled from any point in the world by anyone who possesses a broadband connection. In light of this, homeowners are able to monitor and control their home appliances and other electronic devices even while they are not physically present in their residence. Through the use of this technology, homeowners are able to remotely control a wide range of products, including security cameras, lights, and thermostats. It follows that homeowners are able to exercise control over the lighting, temperature, and security system even when they are not physically present in their homes. A choice like this is beneficial to the environment since it not only reduces the amount of time and effort required, but it also consumes less energy.
Keywords: GDM, Intelligent Home, Arduino, Bulb, LED
[This article belongs to International Journal of Electrical and Communication Engineering Technology ]
Nikat Rajak Mulla, Kazi Kutubuddin Sayyad Liyakat. GSM Based Intelligent Homes. International Journal of Electrical and Communication Engineering Technology. 2025; 03(02):-.
Nikat Rajak Mulla, Kazi Kutubuddin Sayyad Liyakat. GSM Based Intelligent Homes. International Journal of Electrical and Communication Engineering Technology. 2025; 03(02):-. Available from: https://journals.stmjournals.com/ijecet/article=2025/view=229260
References
- Gund VD, et al. PIR sensor-based Arduino home security system. J Instrum Innov Sci.2023;8(3):33–7.
- Liyakat KKS. Home automation system based on GSM. J VLSI Des Tools Technol. 2023;13(3):7–12. doi:10.37591/jovdtt.v13i3.7877.
- Kazi KS. IoT-based healthcare monitoring for COVID-19 home quarantined patients. RecentTrends Sens Res Technol. 2022;9(3):26–32.
- Mulani AO, Bang AV, Birajadar GB, Deshmukh AB, Jadhav HM. IoT-based air, water, and soil monitoring system for pomegranate farming. Ann Agri-Bio Res. 2024;29(2):71–86.
- Parihar B, Kiran A, Valaboju S, Rashid SZ, Liz ADRS. Enhancing data security in distributed systems using homomorphic encryption and secure computation techniques. ITM Web Conf. 2025;76:02010. doi:10.1051/itmconf/20257602010.
- Veena C, Sridevi M, Liyakat KKS, Saha B, Reddy SR, Shirisha N. HEECCNB: An efficient IoT-cloud architecture for secure patient data transmission and accurate disease prediction in healthcare systems. In: Proc. 2023 Seventh Int Conf Image Inf Process (ICIIP); 2023. p. 407–10. doi:10.1109/ICIIP61524.2023.10537627.
- Tamboli DA, Sawant VA, MH M, Sathe S. AI-driven-IoT (AIIoT) based decision-making: KSK approach in drones for climate change study. In: Proc. 2024 4th Int Conf Ubiquitous Comput Intell Inf Syst (ICUIS); 2024. p. 1735–44. doi:10.1109/ICUIS64676.2024.10866450.
- Prasad KR, Karanam SR, et al. AI in public-private partnership for IT infrastructure development. J High Technol Manag Res. 2024;35(1):100496. doi:10.1016/j.hitech.2024.100496.
- Liyakat KKS. Detecting malicious nodes in IoT networks using machine learning and artificial neural networks. In: Proc. 2023 Int Conf Emerg Smart Comput Inform (ESCI); 2023. p. 1–5.doi:10.1109/ESCI56872.2023.10099544.
- Kasat K, Shaikh N, Rayabharapu VK, Nayak M. Implementation and recognition of waste management system with mobility solution in smart cities using internet of things. In: Proc. 2023 2nd Int Conf Augmented Intell Sustain Syst (ICAISS); 2023. p. 1661-5.doi:10.1109/ICAISS58487.2023.10250690.
- Kazi K. AI-driven IoT (AIIoT) in healthcare monitoring. In: Nguyen T, Vo N, editors. Using traditional design methods to enhance AI-driven decision making. IGI Global; 2024. p. 77–101.doi:10.4018/979-8-3693-0639-0.ch003.
- Kazi K. Machine learning-powered IoT (MLIoT) for retail apparel industry. In: Tarnanidis T, Papachristou E, Karypidis M, Manda V, editors. Sustainable practices in the fashion and retail industry. IGI Global; 2025. p. 345–72. doi:10.4018/979-8-3693-9959-0.ch015.
- Kazi KS. Braille-Lippi numbers and characters detection and announcement system for blind children using KSK approach: AI-driven decision-making approach. In: Murugan T, Abirami A, editors. Driving quality education through AI and data science. IGI Global; 2025. p. 531–56. doi:10.4018/979-8-3693-8292-9.ch023.
- Kazi KS. AI-driven-IoT (AIIoT) decision-making system for hepatitis disease patient healthcare monitoring: KSK1 approach for hepatitis patient monitoring. In: Agarwal S, Lakshmi D, Singh L, editors. Navigating innovations and challenges in travel medicine and digital health. IGI Global; 2025. p. 431–50. doi:10.4018/979-8-3693-8774-0.ch022.
- Kazi KS. AI-powered-IoT (AIIoT)-based decision-making system for BP-patient healthcare monitoring: BP-patient health monitoring using KSK approach. In: Lytras M, Alajlan S, editors. Transforming pharmaceutical research with artificial intelligence. IGI Global; 2025. p. 189–218. doi:10.4018/979-8-3693-6270-9.ch007.
- Kazi S. IoT driven by machine learning (MLIoT) for the retail apparel sector. In: Tarnanidis T, Papachristou E, Karypidis M, Ismyrlis V, editors. Driving green marketing in fashion and retail. IGI Global; 2024. p. 63-81. doi:10.4018/979-8-3693-3049-4.ch004.
- Kazi S. AI-driven-IoT (AIIoT)-based decision making in drones for climate change: KSK approach. In: Aouadni S, Aouadni I, editors. Recent theories and applications for multi-criteria decision- making. IGI Global; 2025. p. 311-40. doi:10.4018/979-8-3693-6502-1.ch011.
- Kazi S. Transformation of agriculture effectuated by artificial intelligence-driven internet of things (AIIoT). In: Garwi J, Dzingirai M, Masengu R, editors. Integrating agriculture, green marketing strategies, and artificial intelligence. IGI Global; 2025. p. 449–84. doi:10.4018/979-8-3693-6468-
0.ch015. - KSK. Vehicle health monitoring system (VHMS) by employing IoT and sensors. Grenze Int J Eng Technol. 2024;10(2):5367–74. Available from:
https://thegrenze.com/index.php?display=page&view=journalabstract&absid=3371&id=8. - KSK. A novel approach on ML based palmistry. Grenze Int J Eng Technol. 2024;10(2):5186–93. Available from: https://thegrenze.com/index.php?display=page&view=journalabstract&absid=3344&id=8.
- Keerthana R, V K, Bhagyalakshmi K, Papinaidu M, V V, Liyakat KKS. Machine learning based risk assessment for financial management in big data IoT credit. SSRN Electron J. 2025. doi:10.2139/ssrn.5086671.
- Liyakat KKS. Explainable AI in healthcare. In: Kamaraj AA, Acharjya DP, editors. Explainable artificial intelligence in healthcare system. 2024. ISBN: 979-8-89113-598-7. doi:10.52305/GOMR8163.
- Liyakat KKS. Machine learning (ML)-based Braille Lippi characters and numbers detection an announcement system for blind children in learning. In: Sart G, editor. Social reflections of human-computer interaction in education, management, and economics. IGI Global; 2024. doi:10.4018/979-8-3693-3033-3.ch002.
- Liyakat KKS. Machine learning approach using artificial neural networks to detect malicious nodes in IoT networks. In: Shukla PK, Mittal H, Engelbrecht A, editors. Computer vision and robotics. CVR 2023. Algorithms Intell Syst. Springer, Singapore; 2023. doi:10.1007/978-981-99-4577-1_3.
| Volume | 03 |
| Issue | 02 |
| Received | 26/05/2025 |
| Accepted | 03/09/2025 |
| Published | 14/10/2025 |
| Publication Time | 141 Days |
PlumX Metrics

