ISSN No:2250-3676 ----- Crossref DOI Prefix: 10.64771 ----- Impact Factor: 9.625
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(Peer Reviewed, Referred & Indexed Journal)


    Detection Of Cyber Attack In Network Using Machine Learning Algorithm

    K. Ramesh, Talapanuri Brahmaiah

    Author

    ID: 3082

    DOI:

    Abstract :

    Wireless Sensor Networks (WSNs) Are Increasingly Deployed In Critical Applications Such As Environmental Monitoring, Healthcare, And Smart Infrastructure. However, Their Open Communication Medium And Limited Computational Resources Make Them Highly Vulnerable To Various Cyberattacks. To Address These Challenges, This Work Presents An Intrusion Detection System (IDS) Based On Machine Learning Algorithms For Accurate And Efficient Attack Detection In WSN Environments. The Proposed Model Performs Systematic Data Preprocessing, Feature Selection, And Classification Using Multiple Learning Algorithms, Including Decision Tree, Random Forest, Support Vector Machine, And Deep Neural Network Models. These Algorithms Are Trained And Evaluated On Benchmark Network Intrusion Datasets To Detect Both Normal And Malicious Traffic. Experimental Results Demonstrate That The Proposed IDS Achieves High Detection Accuracy, Low False-alarm Rates, And Improved Computational Efficiency Compared To Traditional Signature-based Approaches. The Study Confirms That Machine Learning Techniques Can Effectively Enhance The Resilience And Adaptability Of Intrusion Detection In Wireless Sensor Networks.

    Published:

    20-5-2026

    Issue:

    Vol. 26 No. 5 (2026)


    Page Nos:

    1280-1285


    Section:

    Articles

    License:

    This work is licensed under a Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License.

    How to Cite

    K. Ramesh, Talapanuri Brahmaiah, Detection of Cyber Attack in network using machine learning algorithm , 2026, International Journal of Engineering Sciences and Advanced Technology, 26(5), Page 1280-1285, ISSN No: 2250-3676.

    DOI: