Smart Energy Management System Based on Embedded Wireless Communication
DOI:
https://doi.org/10.22153/kej.2026.12.015Keywords:
Embedded wireless communication; Smart meters; Smart energy management systems; IoT; Machine learning for energy optimizationAbstract
A Smart Energy Management System (SEMS), which uses the Internet of Things (IoT), has been created in response to the increasing demand for energy-efficient solutions. A cost-effective and efficient IoT-based SEMS that optimizes energy usage, reduces costs, and improves sustainability is presented in this work. The suggested solution uses smart meters, cloud-based analytics, and inexpensive sensors (total cost is less than US$20) to track and control energy use in real time. Through the use of Machine Learning (ML) algorithms and data-driven decision-making, the system can forecast future consumption trends and provide consumers with relevant data. Energy conservation is achieved through the system’s affordability, which makes it appropriate for residential, commercial, and industrial applications without requiring significant infrastructure investments. The system’s effectiveness in reducing energy waste while maintaining user convenience is demonstrated by experimental results. The considerable potential of IoT-based technologies in creating an economical and sustainable framework for energy management is demonstrated by this study. Furthermore, energy consumption prediction systems based on ML are presented. In addition, a scalable approach for more intelligent and environment-friendly energy management systems in future smart cities is developed using OPNET simulation for about 1000 nodes (smart meters). The findings demonstrated that boosting family classifiers achieved the best accuracy with a 98% prediction rate. When 1000 nodes are simulated, the latency for the proposed system may reach as low as 0.21 ms with approximately 20 bytes/s of network traffic, according to the network simulation results that used OPNET.
Downloads
References
R. M. Hagem, D. V. Thiel, S. G. O Keefe, N. Dahm, A. Stamm, and T. Fickenscher, "Smart optical wireless sensor for real time swimmers feedback," in SENSORS, 2012 IEEE, 2012, pp. 1-4.
[2] R. Hagem, D. Thiel, S. O'Keefe, and T. Fickenscher, "Real-time swimmers' feedback based on smart infrared (SSIR) optical wireless sensor," Electronics Letters, vol. 49, pp. 340-341, 2013.
[3] B. M. H. Alhafidh, R. M. Hagem, and A. I. Daood, "Face detection and recognition techniques analysis," in 2022 International Conference on Computer Science and Software Engineering (CSASE), 2022, pp. 265-270.
[4] B. M. H. Alhafidh, R. M. Hagem, M. Qassab, M. B. Mahmood, "Privileging and Prioritizing Processes of Sustainable Energy Resources for Residential Loads to Energize Green Cities," Al-Rafidain Engineering Journal (AREJ), vol. 30, 2025.
[5] M. B. Mahmood and J. M. Abdul-Jabbar, "Enhancing Industrial Internet of Things Availability and Reliability Using Dual-Communication Links Mechanism Based on the OPC UA Protocol," Architecture, vol. 20, p. 21.
[6] D. K. Ashwini Rathod, Gauravi Shetty, Prof. Shaista Khanam, "Smart Energy Meter," International Journal of Engineering Research & Technology (IJERT), vol. 9, pp. 281 - 285, 2020.
[7] N. Sulthana, N. Rashmi, N. Prakyathi, S. Bhavana, and K. S. Kumar, "Smart energy meter and monitoring system using IoT," International Journal of Engineering Research & Technology, vol. 8, pp. 50-53, 2020.
[8] K. A. Yasa, I. M. Purbhawa, I. M. S. Yasa, I. W. Teresna, A. Nugroho, and S. Winardi, "IoT-based Electrical Power Recording using ESP32 and PZEM-004T Microcontrollers," Journal of Computer Science and Technology Studies, vol. 5, pp. 62-68, 2023.
[9] A. T. Jambhulkar, A. M. Bhoyar, C. M. Shivankar, P. S. Balwad, and P. Nandankar, "IoT-Based Smart Energy Meter for Monitoring Home Appliances," International Journal, vol. 8, pp. 1-5, 2023.
[10] P. R. S. Kalyana Kiran Kumar M Srinivasa Rao, P Murali Kirshna, P Santhoshi, "Smart energy metering and load controlling by using internet of things," International Journal of Recent Technology and Engineering (IJRTE), vol. 8, pp. 571 - 576, 2019.
[11] P. M. Niharika Banerjee, K. Surendhirababu, K. Venkatasubramani, "Enhanced Smart Energy Meter using IoT," International Journal of Novel Research and Development, vol. 7, 2022.
[12] C. D. A. Alan P. Nebrida, Clyed M. Madiam, Glenn John S. Ranche, Niel Carlo P. Nieves, "Arduino Based Smart Energy Meter," International Journal of Progressive Research in Science and Engineering, vol. 4, 2023.
[13] H. Z. Iqbal, M. Waseem, and T. Mahmood, "Automatic energy meter reading using smart energy meter," in Int. Conf. Eng. Emerging Technol, 2014.
[14] N. L. Muralidharan P, Aishwarya U, "IoT Based Smart Energy Meter for Power Monitoring System Using ESP8266," International Research Journal of Engineering and Technology (IRJET), vol. 9, 2023.
[15] P. S. Macheso and D. Thotho, "ESP32 Based Electric Energy Consumption Meter," International Journal of Computer Communication and Informatics, vol. 4, pp. 23-35, 2022.
[16] R. Malathi, "Smart Energy Metering System using Android Mobile Application," 2020.
[17] M. R. Islam, S. Sarker, M. S. Mazumder, and M. R. Ranim, "An IoT based real-time low cost smart energy meter monitoring system using android application," arXiv preprint arXiv:2001.10350, 2020.
[18] P. J. Siddhesh Barkale, Sanket Bagul, Shivnath Bhosale, "IoT Based Smart Energy Metering with Blynk Application," International Journal of Trend in Scientific Research and Development (IJTSRD), vol. 7, 2023.
[19] T. S. As Vishal Kumar, Abu Farhan, "IoT Based Smart Energy Meter," International Journal of Engineering Research in Electronics and Communication Engineering (IJERECE), vol. 8, 2021.
[20] S. Gadekar, M. Pimple, S. Thopate, and A. Nikam, "Iot based smart energy meter using esp 32," in Proceedings of the 3rd International Conference on Communication & Information Processing (ICCIP), 2021.
[21] M. H. A. Dhafir A. Alneema, "Energy Management and Cost Reduction: A Predictive Approach to Monthly Electricity Billing in Mosul Residential Settings," Al-Rafidain Engineering Journal (AREJ), vol. 30, pp. 151-162, 2025.
[22] M. K. Hasan, S. R. Kabir, S. Islam, S. Abdullah, M. A. Khan, G. B. Brahim, et al., "Edge Smart Meter Based LSTM Federated Learning with AES Cryptographic Blockchain for Smart Grid AIoT Networks," IEEE Communications Standards Magazine, 2025.
[23] A. D. Kaif, K. S. Alam, S. K. Das, G. Chen, S. Islam, and S. Muyeen, "Blockchain-Integrated Cyber-Physical Smart Meter Design and Implementation for Secured Energy Trading in Virtual Power Plants," IEEE Transactions on Automation Science and Engineering, 2025.
[24] I. Fathi, "An IoT-Based Low-Cost Smart Greenhouse Monitoring System Using ESP8266 and Firebase for Real-Time Environmental Control," International Journal of Advanced Natural Sciences and Engineering Researches, vol. 9, pp. 268–286, 2025.
[25] A. S. Abdulaziz, A. Dawood, and A. Daood, "Speaker Identification and Verification Using Convolutional Neural Network CNN," Tikrit Journal of Engineering Sciences, vol. 32, pp. 1-13, 2025.
[26] S. R. Awad, A. I. Daood, and A. A. Dawood, "Scalable and Efficient Multi-Class Brain Tumor Classification with a Compact Hybrid Deep Learning Model for Real-Time Applications," ARO-The Scientific Journal of Koya University, vol. 13, pp. 162-174, 2025.
[27] R. M. Hagema, T. Haelsig, S. G. O’Keefe, A. Stamm, T. Fickenscher, and D. V. Thiel, "Second generation swimming feedback device using a wearable data processing system based on underwater visible light communication," Procedia Engineering, vol. 60, pp. 34-39, 2013.
[28] A. Daood, E. Ribeiro, and M. Bush, "Pollen Recognition Using Multi-Layer Feature Decomposition," in FLAIRS, 2016, pp. 26-31.
[29] R. M. Hagem, M. Qassab, and B. M. H. Alhafidh, "IoT-Based Low-Cost Wearable Interactive Wireless Embedded Communication System for Health and Sport Applications," Kufa Journal of Engineering, vol. 16, 2025.
[30] M. A. e. al., "Performance evaluation of OPNET simulation for smart grid networks," Int. J. Distrib. Sens. Netw., vol. 16, pp. 1–14, 2020.
[31] S. L. Qaddoori and Q. I. Ali, "An efficient security model for industrial internet of things (IIoT) system based on machine learning principles," Al-Rafidain Engineering Journal (AREJ), vol. 28, pp. 329-340, 2023.
Downloads
Published
Issue
Section
License
Copyright (c) 2026 Al-Khwarizmi Engineering Journal

This work is licensed under a Creative Commons Attribution 4.0 International License.
Copyright: Open Access authors retain the copyrights of their papers, and all open access articles are distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided that the original work is properly cited. The use of general descriptive names, trade names, trademarks, and so forth in this publication, even if not specifically identified, does not imply that these names are not protected by the relevant laws and regulations. While the advice and information in this journal are believed to be true and accurate on the date of its going to press, neither the authors, the editors, nor the publisher can accept any legal responsibility for any errors or omissions that may be made. The publisher makes no warranty, express or implied, with respect to the material contained herein.








