Multidisciplinary, Electrical and Electronic Engineering, Anthropology
21
Scopus Publications
155
Scholar Citations
7
Scholar h-index
4
Scholar i10-index
Scopus Publications
Efficient Detection of Denial-of-Service Attacks in Wireless Sensor Networks Depending on Binarized Simplicial Convolutional Neural Networks for Enhanced Security R. Vidhya, S. Varunadevi, Murugananth Gopal Raj International Journal of Communication Systems, 2026 DoS attacks pose significant threats to wireless sensor networks (WSNs) by disrupting regular network availability. The existing systems face limitations such as limited power, storage, bandwidth, and processing capabilities, making them particularly vulnerable to security risks. Despite these constraints, an effective intrusion detection system (IDS) is essential for detecting such attacks. As denial‐of‐service (DoS) attacks become more frequent and sophisticated, the traditional intrusion detection systems are losing their effectiveness. To overcome these complications, Efficient Detection of Denial‐of‐Service Attacks in Wireless Sensor Networks using Binarized Simplicial Convolutional Neural Networks for Enhanced Security (ED‐DoS‐WSN‐BSCNN) is proposed. The input data are collected from the WSN‐DS dataset. The gathered data are given to the preprocessing stage with the help of the adaptive two‐stage unscented Kalman filter (ATSUKF) for data cleaning, data transformation, and normalization. Then the preprocessed data are given to the classification stage by using the binarized simplicial convolutional neural network (BSCNN) for classifying DoS attacks, such as normal, blackhole, grayhole, flooded, and TDMA. Finally, the Arctic tern optimizer (ATO) algorithm is employed to enhance the BSCNN that categorizes the types of DoS attacks accurately. The performance metrics like accuracy, precision, recall, specificity, F1‐score, computational time, and RoC are taken into account. The performance of the proposed technique is compared with other existing methods. The ED‐DoS‐WSN‐BSCNN technique is implemented in Python. The proposed technique attains 4.05%, 7.52%, and 2.91% higher accuracy, 4.10%, 7.61%, and 5.14% higher precision, 7.46%, 6.92%, and 2.88% higher recall, and 1.06%, 1.75%, and 2.31% higher specificity compared with existing methods: performance analysis of deep learning for DoS attacks identification in wireless sensor network (CNN‐DoS‐WSN), detection of DoS attack in wireless sensor networks: a lightweight machine learning approach (KNN‐DoS‐WSN), and extended evaluation on machine learning approach for DoS detection in Wireless Sensor Networks (RT‐DoS‐WSN), respectively.
Leveraging Artificial Neural Networks for Fruit Quality Prediction: Advancements in Food Technology and Quality Control Arvind Kumar Srivastava, M Soumya, Torthi Ravichandra, Vidhya R, Murugananth Gopal Raj, S. P. Santhoshkumar 2025 Global Conference in Emerging Technology Ginotech 2025, 2025 For the food and agriculture industries to guarantee consumer happiness and cut waste, accurate fruit quality prediction is essential. Artificial Neural Networks (ANNs) are used to evaluate fruit eminence based on characteristics such as color, consistency, volume, and chemical content is investigated in this paper. Current models do a good job of classifying fresh fruits, but they are not very good at spotting rotten ones, which is crucial for reducing waste and preserving quality control. This study fills this gap by compiling a dataset of both fresh and rotting fruits in order to establish a comprehensive strategy. To distinguish between them, the ANN model is trained on a variety of photos. Additionally, fruit maturity is evaluated using color changes and OpenCV, a popular computer vision toolkit. Fruit quality assessment and classification are improved by this integrated method. The suggested approach helps with fruit sorting and guarantees that buyers receive high-quality product, which benefits sectors like retail and agriculture. The ultimate objective of this project is to increase sustainability and efficiency in the food supply chain by automating quality monitoring throughout the application of state-of-the-art ML algorithms.
Application of Deep Convolutional Neural Networks (DCNNs) for Automated Classification of E-Waste Components: Focusing on Circuit Boards, Batteries, and Cables Frederick Ruby Helen, Sivaram Rajeyyagari, Murugananth Gopal Raj, Shamim Ahmad khan, Varunadevi S, I Infant raj 2nd IEEE International Conference on Innovations in High Speed Communication and Signal Processing Ihcsp 2024, 2024 The proliferation of electronic waste (e-waste) has become a pressing environmental concern, necessitating efficient methods for its classification and management. Though there are traditional methods which are used when sorting and recyling e-waste, they are time-consuming, costly and most of the time, are not accurate and hence, a lot of resources are wasted in the process. This research aims at extending the use of Deep Convolutional Neural Networks (DCNNs) in the classification of critical e-waste components namely circuit boards, batteries, and cables. The proposed method fully utilizes the capacity of extracting features of DCNNs in order to accurately detect and sort these components by means of the receiving visual information. For training and testing the DCNN model a dataset was created and preprocessed and the target images included circuit boards of different orientations and sizes, batteries and cables. The architecture of a network was created considering aspect of depth and computational complexity guarantying high accuracy and feasible time for great data set processing. In the evaluation process of the model, a comparison was made with various standard performance measures, with checklists such as accuracy, precision and recall and F1-score to rate the prowess of the proposed model in taking part in the classifying process of e-waste components. From the analysis, the proposed DCNN model reached classification accuracy over 95.9% on all the categories suggesting the model can be used as a tool to sort e-waste automatically. The paper also considers the issues of implementing such technology in the current recycling systems and the overall advantages, which will be the increase of the sorting efficiency, decreased labor expenses, as well as elevated recovery rates of materials demanded in the market.
Digital Investigation Forensic Model with P2P Timestamp Blockchain for Monitoring and Analysis Et al. Layth Almahadeen Journal of Electrical Systems, 2024 Forensic analysis of Blockchain data is a new field in police work. It's now one of the largest problems facing law enforcement. The paper discussed the worldwide need for digital forensics in law enforcement and Blockchain forensics to counteract crimes committed using Blockchain technology. It's been said that we've entered a new age of technology that's heavily dependent on the principles of Blockchain. The research produced a set of guidelines for Digital Investigators. on addition, a theoretical framework grounded on the concept of regular activity has been developed, and a legislative framework has been proposed to ensure that its illegal purpose will always be punished severely.
AI-based domestic load scheduling and power management for renewable energy exporters C. Pradip, Murugananth Gopal Raj, S. John Alexis, A. Manickavasagam Marvels of Artificial and Computational Intelligence in Life Sciences, 2023 Residential Photovoltaic systems (RPV) are flattering and widespread among customers due to government policies. The power sources available in RPV include a grid, a PV system and a battery. The principal cost of residential photovoltaic systems is a bit high. When more power is exported, the customer who has installed it will export more power for their benefit. It can be achieved by efficiently scheduling the three sources and managing the power export. Artificial Intelligence-based systems can effectively take care of it because they provide effective decision-making solutions.
AI-based energy management for domestic appliances Murugananth Gopal Raj, S. John Alexis, A. Manickavasagam, R. Reji Marvels of Artificial and Computational Intelligence in Life Sciences, 2023 Energy conservation is the need of the hour for various reasons, including the depletion of fossil fuels. The domestic sector is the major consumer of generated electricity across the globe. Artificial Intelligence is a powerful decision-making tool. Building AI-based techniques will be effective in conserving energy for domestic appliances. The general framework of AI-based lighting, room comfort, refrigerator and other load systems have been addressed in this chapter. The AI-based systems can effectively manage the operation of these loads, thereby reducing energy consumption
HARNESSING PSO AND GA FOR CONGESTION CONTROL IN HIGH-SPEED WIRELESS SENSOR NETWORKS Vidhya Rathinasamy, Poonguzhali Krishnan, Geetha Ponnusamy, Murugananth Raj Comptes Rendus De L Academie Bulgare Des Sciences, 2023 Sensor and sink nodes create wireless sensor networks. Traffic congestion caused by WSN data transfer causes bigger packet losses, low throughput and excessive energy consumption. This work proposes a hybrid congestion management approach using genetic algorithm and particle swarm optimization. The new approach is simulated and compared to established methods. The suggested system dramatically improved performance metrics. The suggested system of interest increased to 94% detection efficiency, 91% network lifespan, 106 J energy usage, and 22 packet loss rate. The hybrid approach avoided wireless sensor network congestion and managed traffic.
Development of Energy Management System for Micro Grid Operation S. Jayaprakash, B. Gopi, Murugananth Gopal Raj, S. Sujith, S. Deepa, S. Swapna Computer Systems Science and Engineering, 2023 The introduction of several small and large-scale industries, malls, shopping complexes, and domestic applications has significantly increased energy consumption. The aim of the work is to simulate a technically viable and economically optimum hybrid power system for residential buildings. The proposed micro-grid model includes four power generators: solar power, wind power, Electricity Board (EB) source, and a Diesel Generator (DG) set, with solar and wind power performing as major sources and the EB supply and DG set serving as backup sources. The core issue in direct current to alternate current conversion is harmonics distortion, a five-stage multilevel inverter is employed with the assistance of an intelligent control system is simulated and the optimum system configuration is estimated to reduce harmonics and improve the power quality. The monthly demand for residential buildings is 13–15 Megawatts. So, almost 433 Kilo-Watts (KW) of electricity is required every day, and if it is used for 8 h per day, 50–60 KW of electricity is needed per hour. The overall micro-grid model’s operation and performance are established using MATLAB/SIMULINK software, and simulation results are provided. The simulation results show that the developed system is both cost-effective and environment friendly resulting in yearly cost reductions.
Improvement of power quality in grid system based on zeta converter integrated with PV supply B. Meenakshi, Murugananth Gopal Raj, C. Pradip, N. Saju Aip Conference Proceedings, 2022 Renewable power grid integration is an option for the supply of constant electricity. The semiconductor technology-based advancement is improving loads of the power electronics penetration. This paper presents a new definition of optimum use of a unified conditioner for power efficiency. The show UPQC inverter is tested for simultaneous sag and swell compensation using three-leg inverters associated with the power transmission lines. The ZETA converter is proposed to enhance the dc-link capacitor voltage generated from the PV module’s renewable energy system. The converter is maintaining constant power through the MPPT based PI controller. The control of the shunt and series compensators is accomplished. The results are improved compared to the conventional control systems. The PV energy is fed to the converter, which powering the inverter. The power inverter injects power in the power system lines in the form of shunt and series compensators. The results are obtained using the Simulink environment.
A novel accelerated fuzzy PI controller based chopper driven pmdc motor International Journal of Applied Engineering Research, 2015
Analysis of various anti-windup schemes used to control PMDC motors employed in orthopedic surgical simulators Life Science Journal, 2013
RECENT SCHOLAR PUBLICATIONS
Leveraging ClinicalBERT and EHR Data for Early Detection of Pregnancy Related Complications MGR Varunadevi S, Sivaganesan D International Conference on Edge AI, Intelligent Alanytics ans Smart … , 2026 2026
Closed Loop Control for a Switched-Capacitor Configured Non-Isolated High Step-Up DC Converter P Endla, MN Kantha, M Ravindra, MG Rai, R Thumma, S Sivakami IEEE 2nd International Conference on Information Technology, Electronics and … , 2026 2026
A Predictive LSTM Framework for Proactive Adaptive Traffic Signal Control PR Murugananth Gopal Raj, Sangeetha P S, Prreja V, Sunitha K G International Journal of Computer Applications 187 (74), 22-31 , 2026 2026
Efficient Detection of Denial-of-Service Attacks in Wireless Sensor Networks Depending on Binarized Simplicial Convolutional Neural Networks for Enhanced Security MGR Vidhya Rathinasamy, Varunadevi S International Journal of Communication Systems 39 (1) , 2025 2025
Bio-Inspired Approach for Estimation of Parkinson’s Disease Using Augmented Feature Selection Model V G, S., Selvakumarasamy , K. ., Sekar , P. ., Bharathi , G., Elamaran , V ... International Journal of Basic and Applied Sciences 14 (5), 535-548 , 2025 2025
AI-Driven Predictive Maintenance in Smart Manufacturing Using Cyber-Physical Systems and Industrial IoT RS S. Meenakshi , Aaquib Hussain Ganai ,T P Saravanan ,A Shaji George ... IEEE International Conference on Communication and Smart Devices (ICCoSD … , 2025 2025 Citations: 2
Leveraging Artificial Neural Networks for Fruit Quality Prediction: Advancements in Advancements in Food Technology and Quality Control AK Srivastava, S M, T Ravichandra, V R, MG Raj, S S P 2025 Global Conference in Emerging Technology (GINOTECH) 1 (1), 66 , 2025 2025 Citations: 1
Engineering Entrepreneurship and Intellectual Property Rights Varunadevi Murugananth, Murugananth Gopal Raj, Pradip C ISBN 978-93-6048-691-4 1, 345 , 2025 2025
Application of Deep Convolution Networks (DCCNs) for Automated Classification of E-Waste Components: Focusing on Circuit Boards, Batteries and Cables Fredrick Ruby Helen, Sivaram Rajeyyagari, Muruganth Gopal Raj, Shanhim Ahmad ... 2nd IEEE International Conference on Innovations in High Speed Communication … , 2024 2024
Algorithmic Thinking With Python Reji R, Murugananth Gopal Raj, Remya R 2024
The Effectiveness of Change Management Strategies in Enhancing Organizational Resilienc BTK Vani Sarada, Saurabh Verma, Ganesh Mergu, Renu Girotra, Kumari Shilpi ... Library Progress International 44 (3), 22690-22697 , 2024 2024
Digital Investigation Forensic Model with P2P Timestamp Blockchain for Monitoring and Analysis SKY Layth Almahadeen, Renzon Daniel Cosme Pecho, Murugananth Gopal Raj ... Journal of Electrical Systems 20 (1), 09-17 , 2024 2024 Citations: 5
Harnessing PSO and GA for Congestion Control in High-speed Wireless Sensor Networks V Rathinasamy, P Krishnan, G Ponnusamy, M Raj Proceedings of the Bulgarian Academy of Sciences 76 (12), 1885–1892 , 2023 2023 Citations: 2
AI-Based Domestic Load Scheduling and Power Management for Renewable Energy Exporters C Pradip*, Murugananth Gopal Raj, S John Alexis, A Manickavasagam Marvels of Artificial and Computational Intelligence in Life Sciences, 104-120 , 2023 2023
AI-Based Energy Management for Domestic Appliances Murugananth Gopal Raj*, S. John Alexis, A Manickavasagam, R Reji Marvels of Artificial and Computational Intelligence in Life Sciences, 88-103 , 2023 2023
MATHEMATICS Through PYTHON MG Raj 2023
Wind Energy Fed SEPIC Converter with PID Controller for High Performance N Saju, T Porselvi, MG Raj, C Pradip, S Kavitha 2022 Sixth International Conference on I-SMAC (IoT in Social, Mobile … , 2022 2022 Citations: 3
Development of Energy Management System for Micro Grid Operation SS S. Jayaprakash, B. Gopi, Murugananth Gopal Raj, S. Sujith, S. Deepa Computer Systems Science and Engineering 45 (3), 2537-2551 , 2022 2022 Citations: 12
Writing an Effective Research Paper – Means and Methods MG Raj 2022
Improvement of power quality in grid system based on zeta converter integrated with PV supply B Meenakshi, MG Raj, C Pradip, N Saju AIP Conference Proceedings 2519 (1), 050009 , 2022 2022
MOST CITED SCHOLAR PUBLICATIONS
A manual on environmental management audits to educational institutions and industrial sectors BM Gnanamangai, G Murugananth, S Rajalakshmi Laser Park Publishing House, Coimbatore, Tamil Nadu, India , 2021 2021 Citations: 26
QUALITY ANALYSIS OF RICE GRAINS USING ANN AND SVM DIVYA MOHAN, MURUGANANTH GOPAL RAJ Journal of Critical Reviews 7 (1), 2020 , 2019 2019 Citations: 22
Development of Energy Management System for Micro Grid Operation SS S. Jayaprakash, B. Gopi, Murugananth Gopal Raj, S. Sujith, S. Deepa Computer Systems Science and Engineering 45 (3), 2537-2551 , 2022 2022 Citations: 12
ANALYSIS OF ARTIFICIAL INTELLIGENCE OF THINGS JKP R Revathy, Murugananth Gopal Raj, M Selvi International Journal of Electrical Engineering and Technology 11 (4), 275 - 280 , 2020 2020 Citations: 11
Modeling and Simulation Five Level Inverter based UPFC System S Muthukrishnan, A Nirmalkumar, G Murugananth International Journal of Computer Applications 12 (11), 11-15 , 2011 2011 Citations: 9
Random Forest-Based Method for Micro Grid System in Energy Consumption Prediction Murugananth Gopal Raj, C Pradip, N Saju, S V Tresa Sangeetha Journal of Physics: Conference Series 1964 (052002), 1-5 , 2021 2021 Citations: 8
Energy Audit Procedures and Energy Savings Opportunities in Educational Institutions and Industrial Sectors TP Mythili Gnanamangai B, Rajalakshmi S, Ashutosh Kumar Srivastava ... International Journal of Advanced Research 10 (5), 592-601 , 2022 2022 Citations: 7
Analysis of closed loop chopper controlled drive for PMDC motors using PID controller G Murugananth, S Vijayan, S Muthukrishnan IOSR J. Electric. Electron. Eng. 2 (3), 32-34 , 2012 2012 Citations: 7
Digital Investigation Forensic Model with P2P Timestamp Blockchain for Monitoring and Analysis SKY Layth Almahadeen, Renzon Daniel Cosme Pecho, Murugananth Gopal Raj ... Journal of Electrical Systems 20 (1), 09-17 , 2024 2024 Citations: 5
Genetic Algorithm Based Speed Control of PMDC Motor Using Low Cost PIC 16F877A Microcontroller Murugananth Gopal Raj, Vijayakumar T, Muthukrishnan S Circuits & Systems 7, 1334 - 1340 , 2016 2016 Citations: 5
Experimental Validation of Fuzzy-Tuned AWPI Controller-Based Chopper Driven PMDC Motor G Murugananth Journal of Testing and Evaluation 43 (6), 1-12 , 2014 2014 Citations: 5
Analysis of various anti-windup schemes used to control PMDC motors employed in orthopedic surgical simulators G Murugananth, S Vijayan, S Muthukrishnan Life Science Journal 10 (1), 226-230 , 2013 2013 Citations: 5
Development of Closed Loop Chopper Controlled Drive for PMDC Motors used in Orthopaedic Surgical Simulators G Murugananth International Journal of Computer Science and Technology , 2012 2012 Citations: 5
BELBIC Tuned PI Controller Based Chopper Driven PMDC Motor SK Muthukrishnan Subramaniam, Murugananth Gopalraj, Saravana Sundaram Sakthivelu Circuits and Systems 7 (10.4236/cs.2016.79198.), 2273-2285 , 2016 2016 Citations: 4
Development of fuzzy controlled chopper drive for permanent magnetic DC motor G Murugananth Journal of Vibration and Control, 1077546313490184 , 2013 2013 Citations: 4
Wind Energy Fed SEPIC Converter with PID Controller for High Performance N Saju, T Porselvi, MG Raj, C Pradip, S Kavitha 2022 Sixth International Conference on I-SMAC (IoT in Social, Mobile … , 2022 2022 Citations: 3
Wind Energy Fed SEPIC Converter with PID Controller for High Performance N Saju, T Porselvi, MG Raj, C Pradip, S Kavitha 2022 Sixth International Conference on I-SMAC (IoT in Social, Mobile … , 2022 2022 Citations: 3
Performance Evaluation of PMDC Motor Using Anti-Windup PI Controller G Murugananth, S Vijayan Eur. J. Sci. Res. 85 (2), 218-224 , 2012 2012 Citations: 3
AI-Driven Predictive Maintenance in Smart Manufacturing Using Cyber-Physical Systems and Industrial IoT RS S. Meenakshi , Aaquib Hussain Ganai ,T P Saravanan ,A Shaji George ... IEEE International Conference on Communication and Smart Devices (ICCoSD … , 2025 2025 Citations: 2
Harnessing PSO and GA for Congestion Control in High-speed Wireless Sensor Networks V Rathinasamy, P Krishnan, G Ponnusamy, M Raj Proceedings of the Bulgarian Academy of Sciences 76 (12), 1885–1892 , 2023 2023 Citations: 2