Durairaj M

@bdu.ac.in

Associate Professor in Computer Science
Bharathidasan University

RESEARCH, TEACHING, or OTHER INTERESTS

Computer Science, Artificial Intelligence, Computer Engineering, Computer Science Applications
36

Scopus Publications

1712

Scholar Citations

20

Scholar h-index

36

Scholar i10-index

Scopus Publications

  • Early Detection of Anomalies in Photovoltaic Module Strings Using Decision Trees for MPPT Solar Charger Systems
    D.Ramesh Reddy, T. S. Saravanan, P . Subhashini, Saravana Selvan, Sonia Maria D'Souza, Thiyagesan M, M . DuraiRaj, Raja-‎sekhara Babu L
    International Journal of Basic and Applied Sciences, 2025
    This study presents a decision tree (DT) based machine learning approach to detect early anomalies and faults in solar maximum power point ‎tracking (MPPT) integrated photovoltaic (PV) module circuits. A four-panel array, built using a single diode model, is simulated to generate ‎a synthetic, balanced dataset for training and evaluation. Among the different models tested, including neural networks (NN) and support ‎vector classifiers (SVC), the DT model showed the best performance in precision and recall across all anomaly labels while maintaining ‎simplicity and low computational cost. Currently, the model is limited to four module configurations, and the use of synthetic data may lead ‎to overfitting when applied to real-world scenarios. Nevertheless, the methodology can be adapted to grid configurations with other known ‎parameters. This work provides a practical basis for integrating early anomaly detection systems into PV installations, increasing operational ‎efficiency and reducing maintenance costs.
  • A review of reinforcement learning approaches for autonomous systems in industry 4.0
    BH Krishna Mohan, Pulicherla Padmaja, M Durairaj, P Nagamalleswrarao, K Srinivasarao, Sagaya Aurelia
    Industry 4 0 Key Technological Advances and Design Principles in Engineering Education Business and Social Applications, 2024
    The integration of reinforcement learning (RL) into autonomous systems is investigated in this study, which also examines major developments, practical issues, practical applications, as well as optimization techniques. As significant trends, deep reinforcement learning (RL), transfer learning, and interaction with other machine learning paradigms increase flexibility. Critical issues, including sample inefficiency along with elevated computational demands call for creative solutions. Real-world uses for RL in robotics, autonomous driving, including health care, demonstrate its revolutionary potential. Domain-specific modification and ethical concerns are suggested to increase RL’s effectiveness. Interdisciplinary frameworks including the investigation of new fields are some future research directions.
  • Language patterns and sentiment expressions of post-covid patients in social media: A machine learning perspective
    S. Roja, M. Durairaj
    Aip Conference Proceedings, 2024
  • Highlighting bugs in software development codes using SDPET for enhancing security
    N.A. Bhaskaran, M. Durairaj
    Measurement Sensors, 2023
    The requirement for high-quality, inexpensive software that can be maintained is being driven by the rise in demand for automated online software systems. Early defect identification in SDLCs (Software Development Life Cycles) results in early adjustments and eventually on-time delivery of maintainable software, satisfying the client and fostering his trust in the development team. Many MLTs (Machine Learning Techniques) have been put out in the last ten years to increase SDP accuracy. Most of the suggested SDPs frameworks and models employ ANNs (Artificial Neural Networks), which are a popular MLTs. Software defect data are hampered by a number of problems, including duplication, correlation, feature relevance, and missing samples. However, because to the under/over fitting issues, most existing SDPs utilising ANNs have low accuracy. SDPET (Software Defect Predictions Ensemble Technique), an ensemble learning technique to produce accurate SDPs based on the AdaBoost algorithm, is proposed. The proposed schema's efficacy against RFs (Random Forests) and GBs(Gradient Boosts) for needed values through experiments. The experiment results verify that the suggested SDPET has good accuracy in training and better accuracy in test datasets when compared with other methods. The original obtained dataset was cleaned of unnecessary features, converted to csv, and is stored as dataset. csv.
  • Epilson Swarm Optimized Cluster Gradient and deep belief classifier for multi-attack intrusion detection in MANET
    S. Dilipkumar, M. Durairaj
    Journal of Ambient Intelligence and Humanized Computing, 2023
  • Financial time series prediction using deep computing approaches
    M. Durairaj, Ch. Suneetha, BH. Krishna Mohan
    Journal of Autonomous Intelligence, 2023
    <p class="Abstracttitle">A financial time series is chaotic and non-stationary in nature, and predicting it outcomes is a very complex and challenging task. In this research, the theory of chaos, Long Short-Term Memory (LSTM), and Polynomial Regression (PR) are used in tandem to create a novel financial time series prediction hybrid, Chaos+LSTM+PR. The first step in this hybrid will determine whether or not a financial time series contains chaos. Following that, the chaos in the time series is modeled using Chaos Theory. The modeled time series is fed into the LSTM to obtain initial predictions. The error series obtained from LSTM predictions is fitted by PR to obtain error predictions. The error predictions and initial predictions from LSTM are combined to obtain final predictions. The effectiveness of this hybrid is examined by three types of financial time series (Chaos+LSTM+PR), including stock market indices (S&P 500, Nifty 50, Shanghai Composite), commodity prices (gold, crude oil, soya beans), and foreign exchange rates (INR/USD, JPY/USD, SGD/USD). The results show that the proposed hybrid outperforms ARIMA (autoregressive integrated moving average), Prophet, CART (Classification and Regression Tree), RF (Random Forest), LSTM, Chaos+CART, Chaos+CART, and Chaos+LSTM. The results are also checked for statistical significance.</p>
  • Detection of Attacks Using Multilayer Perceptron Algorithm
    S. Dilipkumar, M. Durairaj
    Lecture Notes in Networks and Systems, 2022
  • Statistical Evaluation and Prediction of Financial Time Series Using Hybrid Regression Prediction Models
    M. Durairaj, B. H. Krishna Mohan
    International Journal of Intelligent Systems and Applications in Engineering, 2021
    : Financial time series are chaotic by nature, which makes prediction difficult and complicated. This research employs the new hybrid model for the prediction of FTS which comprises Long Short-Term Memory (LSTM), Polynomial Regression (PR), and Chaos Theory. First of all, FTS is tested for the presence of chaos, in this hybrid model. Later, using Chaos Theory, the time series is modelled with the chaos existence. The model time series will be entered in LSTM for initial forecasts. The sequence of errors derived from LSTM forecasts is PR appropriate for error predictions. Error forecasts and original model forecasts are applied to produce the final hybrid model forecasts. Performance testing of the hybrid model (Chaos+LSTM+PR) is conducted using three categories namely foreign exchange, commodity price and stock-market indices. The hybrid model proposed in this study, in compliance with MSE, Dstat and Theil’s U, is proved superior to the individual models like ARIMA, Prophet, LSTM and Chaos+LSTM. The execution of these various hybrid proposed methods is done mainly using Python, additionally, the authors used Gretl® and R for some methods respectively. Ultimately, the final result of this hybrid model describes with a better result than the existing prediction models and it is proved using various types of FTS like Foreign exchange rates, commodity prices, and stock market indices respectively. Hence, the result shows that the proposed hybrid models of Chaos+LSTM+PR achieved with better prediction rate than the existing models on the nine datasets executed.
  • Exclusiveor-discrete cosine transform- a chaotic algorithm for image encryption and decryption
    M. Durairaj, J. Hirudhaya Mary Asha
    Advances in Intelligent Systems and Computing, 2021
  • Optimization-Based Boosting Feature Selection Method for Water Quality Classification
    M. Durairaj, T. Suresh
    Lecture Notes in Networks and Systems, 2021
  • Fuzzy probability based person recognition in smart environments
    M. Durairaj, J. Hirudhaya Mary Asha
    Journal of Intelligent and Fuzzy Systems, 2021
  • The appraised structure for improving quality in the compressed image using eqi-ac algorithm
    M. Durairaj, J. Hirudhaya Mary Asha
    Advances in Intelligent Systems and Computing, 2021
  • The Internet of Things (IoT) Routing Security—A Study
    M. Durairaj, J. Hirudhaya Mary Asha
    Lecture Notes in Electrical Engineering, 2020
  • Interoperability in Smart Living Network—A Survey
    M. Durairaj, J. Hirudhaya Mary Asha
    Lecture Notes in Electrical Engineering, 2020
  • Dynamic Shifting Genetic Non-adjacent Form Elliptic Curve Diffie–Hellman Key Exchange Procedure for IoT Heterogeneous Network
    M. Durairaj, K. Muthuramalingam
    Advances in Intelligent Systems and Computing, 2019
  • A lightweight multi-level encryption model for IoT applications
    M. Durairaj, K. Muthuramalingam
    Advanced Sciences and Technologies for Security Applications, 2019
  • High relevancy low redundancy vague set based feature selection method for telecom dataset
    T.S. Poornappriya, M. Durairaj
    Journal of Intelligent and Fuzzy Systems, 2019
  • A review of two decades of deep learning hybrids for financial time series prediction
    International Journal on Emerging Technologies, 2019
  • User authentication and key agreement scheme for internet of thing - A study
    M. Durairaj, K. Muthuramalingam
    International Journal of Computer Aided Engineering and Technology, 2018
  • A modernistic and contemporary mobile augmented reality erudition system
    M. Durairaj, P. Sagaya Aurelia
    Proceedings of the International Conference on Computing Methodologies and Communication Iccmc 2017, 2017
  • MBC-ODCA algorithm to select an optimal datacenter for resource allocation in mobile cloud computing
    Journal of Advanced Research in Dynamical and Control Systems, 2017
  • A comparison of the perceptive approaches for preprocessing the data set for predicting fertility success rate
    International Journal of Control Theory and Applications, 2016
  • A review on big data analytics tools for telecommunication industry
    International Journal of Control Theory and Applications, 2016
  • A review on affective computing
    International Journal of Control Theory and Applications, 2016
  • Theoretical framework of the algorithm to thwart MAC spoofing DoS attack in wireless local area infrastructure network
    M. Durairaj, A. Persia
    Advances in Intelligent Systems and Computing, 2015
  • A study on security issues in cloud based E-Learning
    M. Durairaj, A. Manimaran
    Indian Journal of Science and Technology, 2015
  • An integrated methodology of artificial neural network and rough set theory for analyzing IVF Data
    M. Durairaj, R. Nandhakumar
    Proceedings 2014 International Conference on Intelligent Computing Applications Icica 2014, 2014
  • ThreV - An efficacious algorithm to thwart MAC spoof DoS attack in wireless local area infrastructure network
    Indian Journal of Science and Technology, 2014
  • Theoretical framework of ANM and hybridization of ANM with ThreV in detecting and preventing DoS attacks in wireless infrastructure network
    International Journal of Applied Engineering Research, 2014
  • Comparison of ICM with TPF-LEP to prevent MAC spoof DoS attack in wireless local area infrastructure network
    M. Durairaj, A. Persia
    Research Journal of Applied Sciences Engineering and Technology, 2014
  • An empirical study on applying data mining techniques for the analysis and prediction of heart disease
    S. Sivagowry, M. Durairaj, A. Persia
    2013 International Conference on Information Communication and Embedded Systems Icices 2013, 2013
  • Analysing offender's attributes in the event of robbery by using microsimulation model
    K. Zakir Hussain, M. Durairaj, G. Rabia Jahani Farzana
    Proceedings of 2012 IEEE International Conference on Advanced Communication Control and Computing Technologies Icaccct 2012, 2012
  • Study of thwarting DoS attacks by detecting MAC spoof in WLAN infrastructure networks
    A. Persia, M. Durairaj, S. Sivagowry
    Proceedings of 2012 IEEE International Conference on Advanced Communication Control and Computing Technologies Icaccct 2012, 2012
  • Criminal behavior analysis by using data mining techniques
    IEEE International Conference on Advances in Engineering Science and Management Icaesm 2012, 2012
  • E-behavior general screening for personality disorders
    K. Zakir Hussain, M. Durairaj, G. Rabia Jahani Farzana
    2012 International Conference on Computing Electronics and Electrical Technologies Icceet 2012, 2012
  • Intelligent mind mapper - An advanced computational model for identifying criminal behavior
    K. Zakir Hussain, M. Durairaj, G. Rabia Jahani Farzana
    2012 International Conference on Computing Communication and Applications Iccca 2012, 2012

RECENT SCHOLAR PUBLICATIONS

  • Real-Time ECG Image Classification Using GA–PSO Optimized CNN-LSTM Model Trained on PTB-XL Dataset
    S Selvakumari, M Durairaj
    Indian Journal of Science and Technology 19 (13), 868-875 , 2026
    2026
  • A Hybrid CNN-LSTM Framework for ECG Classification with Genetic Algorithm-Based Feature Optimization
    M Durairaj, S Selvakumari
    Indian J. Sci. Technol. 18 (31), 2509-2519 , 2025
    2025
    Citations: 2
  • A comparative study of optimization techniques in deep learning using the MNIST dataset
    S Selvakumari, M Durairaj
    Indian J. Sci. Technol 18 (10), 803-810 , 2025
    2025
    Citations: 10
  • A Review of Reinforcement Learning Approaches for Autonomous Systems in Industry 4.0
    BHK Mohan, P Padmaja, M Durairaj, P Nagamalleswrarao, ...
    Industry 4.0 Key Technological Advances and Design Principles in Engineering … , 2024
    2024
  • Highlighting bugs in software development codes using SDPET for enhancing security
    NA Bhaskaran, M Durairaj
    Measurement: Sensors 30, 100930 , 2023
    2023
    Citations: 5
  • Epilson Swarm Optimized Cluster Gradient and deep belief classifier for multi-attack intrusion detection in MANET
    S Dilipkumar, M Durairaj
    Journal of Ambient Intelligence and Humanized Computing 14 (3), 1445-1460 , 2023
    2023
    Citations: 38
  • Financial time series prediction using deep computing approaches
    M Durairaj, C Suneetha, M Krishna
    Journal of Autonomous Intelligence 6 (1), 558 , 2023
    2023
    Citations: 6
  • A convolutional neural network based approach to financial time series prediction
    DM Durairaj, BHK Mohan
    Neural Computing and Applications 34 (16), 13319-13337 , 2022
    2022
    Citations: 175
  • Detection of attacks using multilayer perceptron algorithm
    S Dilipkumar, M Durairaj
    Inventive Communication and Computational Technologies: Proceedings of … , 2022
    2022
    Citations: 4
  • Statistical evaluation and prediction of financial time series using hybrid regression prediction models
    M Durairaj, KBH Mohan
    International Journal of Intelligent Systems and Applications in Engineering … , 2021
    2021
    Citations: 13
  • Protein Secondary Structure Prediction Using FFA Optimized ANN
    M Durairaj, S Sivakumar, B Sangeetha, K Saravannan, K Saravanakumar
    Annals of the Romanian Society for Cell Biology 25 (5), 5257-5266 , 2021
    2021
  • Enhanced Gradient Boosting Tree Classifier Using Optimization Technique for Water Quality Prediction
    M Durairaj, T Suresh
    Annals of the Romanian Society for Cell Biology 25 (2), 3860-3873 , 2021
    2021
    Citations: 1
  • Fuzzy probability based person recognition in smart environments
    M Durairaj, J Hirudhaya Mary Asha
    Journal of Intelligent & Fuzzy Systems 40 (5), 9437-9452 , 2021
    2021
    Citations: 3
  • Enhanced Gradient Boosting Tree Classifier using Optimization Technique for Water Quality Prediction
    M Durairaj, T Suresh
    Annals of the Romanian Society for Cell Biology 25 (2), 3860-3876 , 2021
    2021
    Citations: 1
  • A CLASSIFICATION MODEL WITH OPTIMIZATION BASED FEATURE SELECTION METHOD FOR INTRUSION DETECTION SYSTEM
    M Durairaj, D Radhika
    PalArch's Journal of Archaelogy of Egypt / Egyptology 17 (6), 9318-9334 , 2020
    2020
  • A Chaotic Algorithm for Image Encryption
    M Durairaj, JHM Asha
    Image Processing and Capsule Networks: ICIPCN 2020, 218 , 2020
    2020
  • The Appraised Structure for Improving Quality in the Compressed Image Using EQI-AC Algorithm
    M Durairaj, J Hirudhaya Mary Asha
    International Conference on Image Processing and Capsule Networks, 201-217 , 2020
    2020
  • ExclusiveOR-Discrete Cosine Transform-A Chaotic Algorithm for Image Encryption and Decryption
    M Durairaj, J Hirudhaya Mary Asha
    International Conference on Image Processing and Capsule Networks, 218-232 , 2020
    2020
    Citations: 1
  • Interoperability in smart living network—a survey
    M Durairaj, J Hirudhaya Mary Asha
    International Conference on Communication, Computing and Electronics Systems … , 2020
    2020
    Citations: 7
  • Volatility Nature of Financial Time Series Applications during Covid-19 Era
    M Durairaj, BHK Mohan, M Manjusha
    DYNAMIC BUSINESS TRENDS AND INNOVATIONS IN CONTEMPORARY TIMES, 128-137 , 2020
    2020

MOST CITED SCHOLAR PUBLICATIONS

  • Data Mining Applications In Healthcare Sector: A Study
    M Durairaj, V Ranjani
    International Journal of Scientific & Technology Research 2 (10), 29-35 , 2013
    2013
    Citations: 248
  • A convolutional neural network based approach to financial time series prediction
    DM Durairaj, BHK Mohan
    Neural Computing and Applications 34 (16), 13319-13337 , 2022
    2022
    Citations: 175
  • Educational Data mining for Prediction of Student Performance Using Clustering Algorithms
    M Durairaj, C Vijitha
    International Journal of Computer Science and Information Technologies 5 (4 … , 2014
    2014
    Citations: 125
  • Prediction Of Heart Disease Using Back Propagation MLP Algorithm
    M Durairaj, V Revathi
    International Journal of Scientific & Technology Research 4 (08), 235-239 , 2015
    2015
    Citations: 124
  • A Comparison of the Perceptive Approaches for Preprocessing the Data Set for Predicting Fertility Success Rate
    M Durairaj, R Nandhakumar
    International Journal of Control Theory and Applications (IJCTA) 9 (27 … , 2016
    2016
    Citations: 77
  • Applications of Artificial Neural Network for IVF Data Analysis and Prediction
    M Durairaj, P Thamilselvan
    Journal of Engineering, Computer & Applied Sciences (JEC & AS) 2 (9), 11-15 , 2013
    2013
    Citations: 68
  • A study on security issues in cloud based e-learning
    M Durairaj, A Manimaran
    Indian Journal of Science and Technology 8 (8), 757-765 , 2015
    2015
    Citations: 64
  • A Study on Virtualization Techniques and Challenges in Cloud Computing
    M Durairaj, P Kannan
    International Journal of Scientific and Technology Research 1 (1), 2277-8616 , 2012
    2012
    Citations: 56
  • Prediction of Diabetes Using Soft Computing Techniques - A Survey
    M Durairaj, G Kalaiselvi
    International Journal of Scientific & Technology Research 4 (3), 190-192 , 2015
    2015
    Citations: 39
  • Epilson Swarm Optimized Cluster Gradient and deep belief classifier for multi-attack intrusion detection in MANET
    S Dilipkumar, M Durairaj
    Journal of Ambient Intelligence and Humanized Computing 14 (3), 1445-1460 , 2023
    2023
    Citations: 38
  • A Hybrid Prediction System Using Rough Sets and Artificial Neural Networks
    M Durairaj, K Meena
    Journal of Innovative Technology & Creative Engineering 1 (7) , 2011
    2011
    Citations: 33
  • An empirical study on applying data mining techniques for the analysis and prediction of heart disease
    S Sivagowry, M Durairaj, A Persia
    Information Communication and Embedded Systems (ICICES), 265-270 , 2013
    2013
    Citations: 32
  • Mobile Augmented Reality and Location Based Service
    A Sagaya Aurelia, M Durairaj, O Saleh
    Advances in Information Sciences and Applications 2, 551-558 , 2014
    2014
    Citations: 31
  • Criminal behavior analysis by using data mining techniques
    K Zakir Hussain, M Durairaj, GRJ Farzana
    Advances in Engineering, Science and Management (ICAESM), 2012 International … , 2012
    2012
    Citations: 31
  • High relevancy low redundancy vague set based feature selection method for telecom dataset
    TS Poornappriya, M Durairaj
    Journal of Intelligent & Fuzzy Systems, 1-18 , 2019
    2019
    Citations: 30
  • PREDICTION OF DIABETES USING BACK PROPAGATION ALGORITHM
    M Durairaj, G Kalaiselvi
    International Journal of Emerging Technology and Innovative Engineering 1 (8 … , 2015
    2015
    Citations: 30
  • A New Authentication Scheme with Elliptical Curve Cryptography for Internet of Things (IoT) Environments
    M Durairaj, K Muthuramalingam
    International Journal of Engineering & Technology 7 (2), 119-124 , 2018
    2018
    Citations: 28
  • Data Mining Application on IVF Data For The Selection of Influential Parameters on Fertility
    M Durairaj, R Nandha Kumar
    International Journal of Engineering and Advanced Technology (IJEAT) 2 (6 … , 2013
    2013
    Citations: 27
  • A review of two decades of deep learning hybrids for financial time series prediction
    M Durairaj, BK Mohan
    International Journal on Emerging Technologies 10 (3), 324-331 , 2019
    2019
    Citations: 26
  • Choosing a spectacular Feature Selection technique for telecommunication industry using fuzzy TOPSIS MCDM
    M Durairaj, TS Poornappriya
    International Journal of Engineering & Technology 7 (4), 5856-5861 , 2018
    2018
    Citations: 24