Enhancing intrusion detection in wireless sensor networks using a Tabu search based optimized random forest.

Journal: Scientific reports
Published Date:

Abstract

Intrusion detection in Wireless Sensor Networks (WSNs) is an emerging area of research, given their extensive use in sensitive fields like military surveillance, healthcare, environmental monitoring, and smart cities. However, WSNs face several security challenges due to their limited computational capabilities and energy constraints. Their deployment in open, unattended environments makes them especially vulnerable to threats like eavesdropping, interference, and jamming. To address this problem, Random Forest (RF) is a popular machine learning model. The RF model can be tweaked because of its multiple hyperparameters. Tuning these parameters manually is tedious, as the combinations will be exponential. This work presents an enhanced intrusion detection approach by integrating Tabu Search (TS) optimization with a RF classifier. As a result, TS will help RF automatically search optimal hyperparameters and improve the generalization ability. This work integrates the pros of TS with RF. The model was tested on three different datasets, i.e., (a) the WSN-DS dataset, (b) CICIDS 2017, and (c) the CIC-IoT 2023 dataset, which shows better results on different metrics like precision, recall, F1-score, Cohen's Kappa, and ROC AUC. Detection of Blackhole and Gray Hole attacks also improved, demonstrating the effectiveness of combining metaheuristic optimization with ensemble learning for stronger WSN security.

Authors

  • Vivek Kumar Pandey
    Centre for Research Impact & Outcome, Chitkara University Institute of Engineering and Technology, Chitkara University, Rajpura, 140401, Punjab, India.
  • Shiv Prakash
    Department of Electronics and Communication, University of Allahabad, Prayagraj, India. shivprakash@allduniv.ac.in.
  • Tarun Kumar Gupta
    Department of Computer Science, Miranda House, University of Delhi, Delhi, India.
  • Priyanshu Sinha
    Department of Clinical Medicine, Aarhus University, Aarhus, Denmark.
  • Tiansheng Yang
    University of South Wales, Llantwit Rd, Pontypridd, CF37 1DL, UK.
  • Rajkumar Singh Rathore
    Department of Computer Science, Cardiff School of Technologies, Cardiff Metropolitan University, Llandaff Campus, Western Avenue, Cardiff, CF5 2QS, UK. rsrathore@cardiffmet.ac.uk.
  • Lu Wang
    Department of Laboratory, Akesu Center of Disease Control and Prevention, Akesu, China.
  • Sabeen Tahir
    Department of Computer Science, Cardiff School of Technologies, Cardiff Metropolitan University, Llandaff Campus, Western Avenue, Cardiff, CF5 2QS, UK.
  • Sheikh Tahir Bakhsh
    Cardiff School of Technologies, Cardiff Metropolitan University, Cardiff, United Kingdom.

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