is a Senior IEEE member and Professor in the Directorate of Learning and Development, SRM Institute of Science and Technology (University), India. His research interests are Massive MIMO Communication Systems, Antenna Design, Wireless Sensor Networks, Engineering Education, Instructional Technology, TPACK and CDIO based curricula design and implementations. He is presently serving as editor, guest editor for reputed journals and chaired reputed conferences. Presently he is a Governing Council Member of Nehru Institute of Engineering and Technology, Coimbatore. He is accredited as a Programme Leader for the Cambridge International Certification by Cambridge Assessment International Education. He delivered lectures on Outcome Based Education in various reputed institutes across India organized by Engineering Staff College of India (ESCI). He received IET Promotional Award from Chennai Local Network in the year 2019 and presently acting as Executive Member of IET Chennai Loc
Massive MIMO Communication Systems, Antenna Design, Wireless Sensor Networks, Engineering Education, Instructional Technology, TPACK and CDIO based curricula design and implementations
27
Scopus Publications
187
Scholar Citations
8
Scholar h-index
7
Scholar i10-index
Scopus Publications
A Novel TLBO-Based Antenna Array Imperfection Calibration for Effective DOA Estimation in mmWave mMIMO Systems Aquino S., G. Vairavel International Journal of Antennas and Propagation, 2025 Antenna Array imperfection calibration is an important concern in direction‐of‐arrival (DOA) estimation in 5 G millimeter Wave (mmWave) massive Multiple Input Multiple Output (mMIMO) systems. As the number of elements in mMIMO systems increases, array imperfections tend to increase, degrading the DOA estimation performance. Existing calibration techniques use the local optimum solution as the gain/phase, and the location error is high. The present work proposes an inter‐disciplinary learning teaching‐learning‐based optimization (IDL‐TLBO) to estimate the DOA. This algorithm exploits the joint sparse properties of the DOA vector and array perturbation matrix. Benefitting from inter‐disciplinary learning and sparse properties, the global search capability of the proposed method enhances the accuracy of DOA estimation. The efficacy of the proposed IDL‐TLBO was validated using various simulation scenarios. Simulation results reveal that the proposed method achieves a better performance‐complexity trade‐off than conventional methods for DOA estimation.
CHALLENGE BASED LEARNING: CULTIVATING SOCIAL RESPONSIBILTY IN A COMMUNITY CONNECT COURSE Proceedings of the International Cdio Conference, 2025
A Comprehensive Survey on 5G Network Slicing: Techniques, Challenges, and Reinforcement Learning Approaches Rajavel S, G Vairavel, Pradheep Balaji R 2025 IEEE 1st International Conference on Innovations in Engineering and Next Generation Technologies for Sustainability Icinvents 2025, 2025 The fifth-generation (5G) wireless network brings a significant shift in mobile communication by introducing network slicing, which allows multiple logical networks to operate over a single physical infrastructure. This capability enables service providers to deliver customized network performance for varied application categories such as enhanced Mobile Broadband (eMBB), Ultra-Reliable Low-Latency Communication (URLLC), and massive Machine-Type Communication (mMTC), each requiring specific levels of latency, reliability, and bandwidth. Leveraging technologies like Software-Defined Networking (SDN), Network Function Virtualization (NFV), and edge computing, slicing facilitates isolated, on-demand services across diverse use cases. Despite its advantages, the practical deployment of network slicing faces several hurdles, including slice orchestration, scalability, interference management, and optimal resource allocation. Traditional static solutions fall short in dynamic environments, prompting a shift towards intelligent, automated frameworks. In recent years, Machine Learning (ML), particularly Reinforcement Learning (RL), has been increasingly explored to enable adaptive and real-time slicing strategies. This paper presents a comprehensive survey of current developments in 5G network slicing, emphasizing architectural models, key technical barriers, optimization techniques, and RL-based solutions. It also discusses existing gaps, assesses real-world applicability, and outlines directions for future research.
TRANSFORMING TECHNICAL EDUCATION THROUGH INDUSTRY-INSTITUTE COLLABORATION ECOSYSTEM Proceedings of the International Cdio Conference, 2025
PHILOSOPHY OF ENGINEERING: A MOTIVATION COURSE FOR FRESHMEN ENGINEERING STUDENTS Proceedings of the International Cdio Conference, 2024
DL-ADS: Improved Grey Wolf Optimization Enabled AE-LSTM Technique for Efficient Network Anomaly Detection in Internet of Thing Edge Computing J. Manokaran, G. Vairavel IEEE Access, 2024 The Internet of Things (IoT) technology has begun to proliferate in recent years, which simultaneously increases the number of attacks. Owing to the massive volume and multi-dimensional data in IoT, anomaly detection leads to low prediction accuracy and a high false alarm rate. Further, there is a deficit of real-world test datasets for anomaly detection. This work aims to generate a novel real-time anomaly detection dataset and proposes an efficient anomaly detection model using an Improved Grey Wolf Optimization (IGWO)-enabled Long Short-Term Memory (LSTM) network in IoT edge scenarios. Dataset generation is carried out using a testbed setup containing Raspberry Pi 4 and sensors connected by a lightweight Message Queuing Telemetry Transport (MQTT) protocol. An autoencoder is used for feature reduction as it can investigate the input characteristics without sacrificing vital information. The LSTM classifier parameters, such as learning rate, optimizer, and batch size, are tuned precisely using IGWO techniques. The experimental results disclose that the proposed model achieves an accuracy of 99.11% for the testbed dataset, which is better than recent models. To confirm the generalizability of our model, the CICIDS 2017, DS2OS, and MQTTset standard datasets are applied explicitly. The developed model outcomes are statistically verified using the Wilcoxon signed rank test.
Efficient Direction of Arrival Estimation in mMIMO Systems with Antenna Array Imperfections Aquino S, G. Vairavel Proceedings of the 8th International Conference on Communication and Electronics Systems Icces 2023, 2023 Direction of arrival (DOA) estimation in 5G massive MIMO mm Wave systems, is crucial for effective beamforming. A high-resolution DOA estimate is required to avoid interferences and steer the beam to the corresponding user. The accuracy of DOA estimation deteriorates significantly due to the antenna array imperfections, channel fluctuations, and noise. This research investigates the performance of DOA estimation with a uniform linear array of 128 elements at a 5G Frequency Range FR2 of 26GHz and a single antenna user. The antenna array imperfections considered are antenna position perturbations, inconsistent gain, and phases. To cope with these array imperfections, the pre-processing technique is done by evaluating the compensation matrix with the help of the Least Square (LS) approach and Orthogonal Matching Pursuit (OMP). The compensation matrices are estimated with the steering vectors of ideal and practical array manifolds. Then the received signals are compensated for imperfections with the compensation matrix. The compensated signals are then fed into the DOA estimator, and the performance analysis of Multiple Signal Classifier (MUSIC), Estimation of Signal Parameters via Rotational Invariance Technique (ESPRIT), Root-MUSIC (RMUSIC), and Beam Scan algorithms are compared. The quantitative results and analytical formulation of the estimation technique are discussed based on the results of the DOA estimation techniques. Simulation results show that resolution of the DOA estimation of Root-MUSIC and ESPRIT with OMP achieves better performance-complexity trade-off at low SNR region, whereas MUSIC and Beam scan achieves better performance-complexity trade-off at high SNR region than LS compensation technique.
IGWO-SoE: Improved Grey Wolf Optimization Based Stack of Ensemble Learning Algorithm for Anomaly Detection in Internet of Things Edge Computing J. Manokaran, G. Vairavel IEEE Access, 2023 With the tremendous growth and popularization of the Internet of Things (IoT), the number of attacks targeting such devices has also increased. Therefore, enhancing the anomaly detection model to maximize detection accuracy and mitigate cyber-attacks in time-critical IoT edge scenarios is essential. Furthermore, there is a lack of vivid, precise, cross-layered, and diverse datasets in IoT for evaluating these anomaly detection models. This paper aims to develop an improved anomaly detection model based on an optimized stacked ensemble learning algorithm at edge computing. Initially, a novel synthetic dataset with multiple cross-layer attacks is generated using the Cooja simulator to train our proposed model. In addition, by introducing an improved grey wolf optimization (IGWO) approach, the parameters of ensemble learning algorithms, such as number of trees, learning rate, and sample rate, are tuned precisely, and the stacking ensemble concept is applied to the optimized ensemble learning algorithms to enhance their prediction capabilities. The experimental results demonstrate that the developed model produces a detection accuracy of 99.44% for our proposed Cooja simulated dataset, which is higher than the contemporary methods. The generalizability of the proposed model is expressed explicitly using four different datasets: NSL KDD, UNSW NB 15, MQTTset, and CICIDS 2017. Finally, we assess the befitting of the proposed model using a chi-square statistical significance test, thereby providing an enriched contribution to the recent works in anomaly detection.
TEACHING COMPETENCY DEVELOPMENT FRAMEWORK FOR SRMIST FACULTY MEMBERS Proceedings of the International Cdio Conference, 2023
OPTIMIZED ENERGY USING CENTRALIZED CLUSTERING PROTOCOL IN HETEROGENEOUS WIRELESS SENSOR NETWORKS Arpn Journal of Engineering and Applied Sciences, 2021
Performance analysis of an uplink MISO-CDMA system using multistage multi-user detection scheme with V-BLAST signal detection algorithms Journal of Theoretical and Applied Information Technology, 2014
A Comprehensive Survey on 5G Network Slicing: Techniques, Challenges, and Reinforcement Learning Approaches S Rajavel, G Vairavel 2025 IEEE First International Conference on Innovations in Engineering and … , 2025 2025
A Novel TLBO-Based Antenna Array Imperfection Calibration for Effective DOA Estimation in mmWave mMIMO Systems S Aquino, G Vairavel International Journal of Antennas and Propagation 2025 , 2025 2025 Citations: 1
PPFCM-SMOTE: a novel balancing system for anomaly detection in IoT edge using probabilistic possibilistic fuzzy clustering and SMOTE J Manokaran, G Vairavel, J Vijaya International Journal of Information Technology, 1-20 , 2024 2024 Citations: 16
Dl-ads: Improved grey wolf optimization enabled ae-lstm technique for efficient network anomaly detection in internet of thing edge computing J Manokaran, G Vairavel IEEE Access 12, 75983-76002 , 2024 2024 Citations: 18
Igwo-soe: Improved grey wolf optimization based stack of ensemble learning algorithm for anomaly detection in internet of things edge computing J Manokaran, G Vairavel IEEE Access 11, 106934-106953 , 2023 2023 Citations: 20
A novel set theory rule based hybrid feature selection techniques for efficient anomaly detection system in IoT edge J Manokaran, G Vairavel, J Vijaya 2023 International Conference on Quantum Technologies, Communications … , 2023 2023 Citations: 5
Systematic Literature Review on the Machine Learning Techniques for UAV-Assisted mm-Wave Communications MS Sugesh, G Vairavel International Conference on Electrical and Electronics Engineering, 517-534 , 2023 2023 Citations: 1
Efficient Direction of Arrival Estimation in mMIMO Systems with Antenna Array Imperfections S Aquino, G Vairavel 2023 8th International Conference on Communication and Electronics Systems … , 2023 2023 Citations: 2
GIWRF-SMOTE: Gini impurity-based weighted random forest with SMOTE for effective malware attack and anomaly detection in IoT-Edge J Manokaran, G Vairavel Smart Science 11 (2), 276-292 , 2023 2023 Citations: 30
A Review of Direction of Arrival Estimation Techniques in Massive MIMO 5G Wireless Communication Systems S Aquino, G Vairavel Proceedings of Fourth International Conference on Communication, Computing … , 2023 2023 Citations: 8
A compact planar monopole UWB MIMO antenna design with increased isolation for diversity applications S Kolangiammal, L Balaji, G Vairavel Applied Computational Electromagnetics Society Journal (ACES), 458-465 , 2022 2022 Citations: 3
An empirical comparison of machine learning algorithms for attack detection in internet of things edge J Manokaran, G Vairavel ECS Transactions 107 (1), 2403 , 2022 2022 Citations: 13
Smart anomaly detection using data-driven techniques in iot edge: a survey J Manokaran, G Vairavel Proceedings of Third International Conference on Communication, Computing … , 2022 2022 Citations: 16
e-PRACTICE ENVIRONMENT TO LEARN PROGRAMMING FOR PROBLEM SOLVING COURSE S Rajeev, G Vairavel Proceedings of the 17th International CDIO Conference, hosted online by … , 2021 2021
OPTIMIZED ENERGY USING CENTRALIZED CLUSTERING PROTOCOL IN HETEROGENEOUS WIRELESS SENSOR NETWORKS G Bhuvaneswari, C.A., Vairavel ARPN Journal of Engineering and Applied Sciences 16 (2), 215 - 223 , 2021 2021 Citations: 6
Compact planar monopole UWB MIMO antenna for diversity applications S Kolangiammal, G Vairavel Advances in Smart System Technologies: Select Proceedings of ICFSST 2019 … , 2020 2020 Citations: 5
Understanding textile antenna by reviewing and simulating it for high data rates applications A Kittur, G Vairavel Advances in Smart System Technologies: Select Proceedings of ICFSST 2019 … , 2020 2020 Citations: 5
A Comparative Study on the Performance of Wearable Antennas Using Flexible and Non-Flexible Substrates GV R Sreelakshmi Journal of Computational and Theoretical Nanoscience 15 (11/12), 3481 - 3485 , 2018 2018
RF Energy Harvesting Using a Single Band Cuff Button Rectenna R Sreelakshmy, G Vairavel International Conference on Communications and Cyber Physical Engineering … , 2018 2018 Citations: 1
Novel cuff button antenna for dual band applications GV R Sreelakshmi ICT Express - Elsevier , 2018 2018 Citations: 37
MOST CITED SCHOLAR PUBLICATIONS
Novel cuff button antenna for dual band applications GV R Sreelakshmi ICT Express - Elsevier , 2018 2018 Citations: 37
GIWRF-SMOTE: Gini impurity-based weighted random forest with SMOTE for effective malware attack and anomaly detection in IoT-Edge J Manokaran, G Vairavel Smart Science 11 (2), 276-292 , 2023 2023 Citations: 30
Igwo-soe: Improved grey wolf optimization based stack of ensemble learning algorithm for anomaly detection in internet of things edge computing J Manokaran, G Vairavel IEEE Access 11, 106934-106953 , 2023 2023 Citations: 20
Dl-ads: Improved grey wolf optimization enabled ae-lstm technique for efficient network anomaly detection in internet of thing edge computing J Manokaran, G Vairavel IEEE Access 12, 75983-76002 , 2024 2024 Citations: 18
PPFCM-SMOTE: a novel balancing system for anomaly detection in IoT edge using probabilistic possibilistic fuzzy clustering and SMOTE J Manokaran, G Vairavel, J Vijaya International Journal of Information Technology, 1-20 , 2024 2024 Citations: 16
Smart anomaly detection using data-driven techniques in iot edge: a survey J Manokaran, G Vairavel Proceedings of Third International Conference on Communication, Computing … , 2022 2022 Citations: 16
An empirical comparison of machine learning algorithms for attack detection in internet of things edge J Manokaran, G Vairavel ECS Transactions 107 (1), 2403 , 2022 2022 Citations: 13
A Review of Direction of Arrival Estimation Techniques in Massive MIMO 5G Wireless Communication Systems S Aquino, G Vairavel Proceedings of Fourth International Conference on Communication, Computing … , 2023 2023 Citations: 8
OPTIMIZED ENERGY USING CENTRALIZED CLUSTERING PROTOCOL IN HETEROGENEOUS WIRELESS SENSOR NETWORKS G Bhuvaneswari, C.A., Vairavel ARPN Journal of Engineering and Applied Sciences 16 (2), 215 - 223 , 2021 2021 Citations: 6
A novel set theory rule based hybrid feature selection techniques for efficient anomaly detection system in IoT edge J Manokaran, G Vairavel, J Vijaya 2023 International Conference on Quantum Technologies, Communications … , 2023 2023 Citations: 5
Compact planar monopole UWB MIMO antenna for diversity applications S Kolangiammal, G Vairavel Advances in Smart System Technologies: Select Proceedings of ICFSST 2019 … , 2020 2020 Citations: 5
Understanding textile antenna by reviewing and simulating it for high data rates applications A Kittur, G Vairavel Advances in Smart System Technologies: Select Proceedings of ICFSST 2019 … , 2020 2020 Citations: 5
A compact planar monopole UWB MIMO antenna design with increased isolation for diversity applications S Kolangiammal, L Balaji, G Vairavel Applied Computational Electromagnetics Society Journal (ACES), 458-465 , 2022 2022 Citations: 3
Efficient Direction of Arrival Estimation in mMIMO Systems with Antenna Array Imperfections S Aquino, G Vairavel 2023 8th International Conference on Communication and Electronics Systems … , 2023 2023 Citations: 2
A Novel TLBO-Based Antenna Array Imperfection Calibration for Effective DOA Estimation in mmWave mMIMO Systems S Aquino, G Vairavel International Journal of Antennas and Propagation 2025 , 2025 2025 Citations: 1
Systematic Literature Review on the Machine Learning Techniques for UAV-Assisted mm-Wave Communications MS Sugesh, G Vairavel International Conference on Electrical and Electronics Engineering, 517-534 , 2023 2023 Citations: 1
RF Energy Harvesting Using a Single Band Cuff Button Rectenna R Sreelakshmy, G Vairavel International Conference on Communications and Cyber Physical Engineering … , 2018 2018 Citations: 1
A Comprehensive Survey on 5G Network Slicing: Techniques, Challenges, and Reinforcement Learning Approaches S Rajavel, G Vairavel 2025 IEEE First International Conference on Innovations in Engineering and … , 2025 2025
e-PRACTICE ENVIRONMENT TO LEARN PROGRAMMING FOR PROBLEM SOLVING COURSE S Rajeev, G Vairavel Proceedings of the 17th International CDIO Conference, hosted online by … , 2021 2021
A Comparative Study on the Performance of Wearable Antennas Using Flexible and Non-Flexible Substrates GV R Sreelakshmi Journal of Computational and Theoretical Nanoscience 15 (11/12), 3481 - 3485 , 2018 2018