Securing Radiation Detection Systems with an Efficient TinyML-Based IDS for Edge Devices
By: Einstein Rivas Pizarro , Wajiha Zaheer , Li Yang and more
Potential Business Impact:
Protects radiation detectors from hackers.
Radiation Detection Systems (RDSs) play a vital role in ensuring public safety across various settings, from nuclear facilities to medical environments. However, these systems are increasingly vulnerable to cyber-attacks such as data injection, man-in-the-middle (MITM) attacks, ICMP floods, botnet attacks, privilege escalation, and distributed denial-of-service (DDoS) attacks. Such threats could compromise the integrity and reliability of radiation measurements, posing significant public health and safety risks. This paper presents a new synthetic radiation dataset and an Intrusion Detection System (IDS) tailored for resource-constrained environments, bringing Machine Learning (ML) predictive capabilities closer to the sensing edge layer of critical infrastructure. Leveraging TinyML techniques, the proposed IDS employs an optimized XGBoost model enhanced with pruning, quantization, feature selection, and sampling. These TinyML techniques significantly reduce the size of the model and computational demands, enabling real-time intrusion detection on low-resource devices while maintaining a reasonable balance between efficiency and accuracy.
Similar Papers
An Efficient Intrusion Detection System for Safeguarding Radiation Detection Systems
Cryptography and Security
Protects radiation detectors from being tricked.
Think Fast: Real-Time IoT Intrusion Reasoning Using IDS and LLMs at the Edge Gateway
Cryptography and Security
Finds computer attacks on small devices.
Intrusion Detection on Resource-Constrained IoT Devices with Hardware-Aware ML and DL
Networking and Internet Architecture
Finds computer spies on small devices.