Work place: Department of Information Technology, Kasegaon Education Society’s, Rajarambapu Institute of Technology, Affiliated to Shivaji University, Sakharale, Maharashtra 415415, India
E-mail: dadaso.mane@ritindia.edu
Website: https://orcid.org/0000-0003-0382-8789
Research Interests:
Biography
Dadaso T. Mane has pursued M.E. in Computer Engineering from Savitribai Phule University of Pune. Currently, he is working as an Assistant Professor in the Department of Information Technology at Rajarambapu Institute of Technology, Rajaramnagar, Sakharale, MH state, India. He has 15 years of academic experience. He is having a life membership of ISTE. His area of interest is Data Science, Machine Learning, and Engineering Education. He has published total 6 research papers in the National / International Journal and Conferences. He has received ISTE National level Gold medal as a Guide for a project titled ―Accident Detection & Prevention system using GPS/GSM Technology‖ at Periyaar Maniammai University, Thanjavaur, TamilNadu (2012-13).
By Dadaso T. Mane Vijay H. Kalmani Sayali Aundhakar Pranita Patil Swati Patil Tejal Yadav
DOI: https://doi.org/10.5815/ijwmt.2025.06.05, Pub. Date: 8 Dec. 2025
Industrial Control Systems (ICS) and Modbus-enabled networks are facing escalating threats from sophisticated cyber-attacks, while current Intrusion Detection Systems (IDS) struggle to identify intricate and adaptive attacks. This study envisions an ensemble learning-based IDS for Modbus-enabled industrial networks using a real-like Modbus 2023 dataset for industrial networks. The proposed IDS combines four base classifiers, namely K-Nearest Neighbors (KNN), Support Vector Machine (SVM), Random Forest (RF), and Adaptive Boosting (AdaBoost), using the stack ensemble framework, where Logistic Regression acts as the meta-classifier. Preprocessing involved PCAP capture and attack log synchronization, feature normalization, and one-hot encoding for balanced and accurate model training. Experimental evaluation demonstrated that the ensemble model has a 99.78% detection accuracy while outperforming the base individual models in terms of precision, recall, and F1-score. The results indicate the efficiency of ensemble learning for enhanced accuracy detection and false-positive reduction for Modbus networks. Future research will consider real-time testing, feature elimination, and explainable AI for higher operational deployment and scalability.
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