Enhanced Anomaly Detection in IoMT Networks using Ensemble AI Models on the CICIoMT2024 Dataset
Journal:
arXiv
Published Date:
Feb 17, 2025
Abstract
The rapid proliferation of Internet of Medical Things (IoMT) devices in
healthcare has introduced unique cybersecurity challenges, primarily due to the
diverse communication protocols and critical nature of these devices This
research aims to develop an advanced, real-time anomaly detection framework
tailored for IoMT network traffic, leveraging AI/ML models and the CICIoMT2024
dataset By integrating multi-protocol (MQTT, WiFi), attack-specific (DoS,
DDoS), time-series (active/idle states), and device-specific (Bluetooth) data,
our study captures a comprehensive range of IoMT interactions As part of our
data analysis, various machine learning techniques are employed which include
an ensemble model using XGBoost for improved performance against specific
attack types, sequential models comprised of LSTM and CNN-LSTM that leverage
time dependencies, and unsupervised models such as Autoencoders and Isolation
Forest that are good in general anomaly detection The results of the experiment
prove with an ensemble model lowers false positive rates and reduced
detections.