The Art of Intrusion Detection in IoT Networks

Abstract

In today's interconnected world, Securing Internet of Things (IoT) environments from intrusions is essential. This paper presents an innovative machine learning framework designed for intrusion detection in IoT networks. Using precisely selected datasets, the framework employs data preparation and feature engineering techniques to improve data quality and significance. It combines several machine learning methods to provide reliable intrusion detection. Experimental evaluations show that it performs better than traditional methods, with excellent accuracy, precision, and recall. This work helps to improve IoT security by proposing an effective strategy for protecting IoT ecosystems.

Country : India

1 Mourya Adimulam2 Omkar Gaddam3 Sandeep Reddy S4 Sravani Merugu5 Veera Bhadra Reddy Boreddy6 Gowtham A

  1. Student, CSE (Cyber Security), Madanapalle Institute of Technology & Science, Madanapalle, Andhra Pradesh, India
  2. Student, CSE (Cyber Security), Madanapalle Institute of Technology & Science, Madanapalle, Andhra Pradesh, India
  3. Student, CSE (Cyber Security), Madanapalle Institute of Technology & Science, Madanapalle, Andhra Pradesh, India
  4. Student, CSE (Cyber Security), Madanapalle Institute of Technology & Science, Madanapalle, Andhra Pradesh, India
  5. Student, CSE (Cyber Security), Madanapalle Institute of Technology & Science, Madanapalle, Andhra Pradesh, India
  6. Assistant Professor, CSE (Cyber Security), Madanapalle Institute of Technology & Science, Madanapalle, Andhra Pradesh, India

IRJIET, Volume 9, Special Issue of INSPIRE’25 April 2025 pp. 1-5

doi.org/10.47001/IRJIET/2025.INSPIRE01

References

  1. Smith, A. "A Machine Learning, Anderson J. "An Adaptive Machine Learning Approach for IoT Intrusion Detection." Journal of Cybersecurity Research, 15(2), 101-118, 2022.
  2. Li, M. "Securing IoT with Optimized Lightweight Cryptographic Techniques." Proceedings of the Global IoT Security Conference, 87-102, 2021.
  3. Park, S. "Intrusion Detection in IoT: Leveraging Machine Learning Models." Cybersecurity and Data Protection Journal, 9(3), 52-70, 2020.
  4. Chen, X. "Emerging IoT Security Trends and Future Research Directions." IEEE Transactions on IoT Security, 8(1), 198-215, 2019.
  5. Reddy, V. "Comparative Study of Security Frameworks for IoT Applications." International Symposium on Cyber Threats and IoT, 121-135, 2018.
  6. Williams, K. "Techniques for Intrusion Detection in IoT Networks: A Survey." ACM IoT Security Transactions, 6(4), 32-50, 2017.
  7. Sharma, R. "Challenges and Innovations in IoT Intrusion Detection Systems." Proceedings of the IoT Security & Privacy Workshop, 145-158, 2016.
  8. Mitchell, B. "Applying Machine Learning for Anomaly-Based IoT Security." IEEE Transactions on Smart Devices, 4(2), 210-225, 2015.
  9. Wang, P. "Lightweight Cryptographic Approaches for Secure IoT Data Transmission." International Conference on IoT and Cloud Security, 375-390, 2014.
  10. Nguyen, T. "A Scalable Intrusion Detection System for Large-Scale IoT Deployments." Journal of Network & Information Security, 22(1), 450-468, 2013.