Dynamic-kernel CNN-LSTM for real-time intrusion detection in low-power healthcare IoT systems

Authors

  • Osita Miracle Nwakeze
    Department of Computer Science, Chukwuemeka Odumegwu Ojukwu University, Uli, Anambra State, Nigeria
  • Naveed Uddin Mohammed
    Department of Computer Science, Lindsey Wilson University, Columbia, Kentucky, USA
  • Obaze Caleb Akachukwu
    Department of Computer Science, Dennis Osadebay University, Asaba, Delta State, Nigeria
  • Umerah Anthony Tochukwu
    Department of Computer Engineering, Federal University of Technology, Owerri, Imo State, Nigeria
  • Oji Nkechi Blessing
    Department of Computer Engineering, Federal University of Technology, Owerri, Imo State, Nigeria
  • Ibeh Sylvarine Chinasa
    Department of Computer Science, Chukwuemeka Odumegwu Ojukwu University, Uli, Anambra State, Nigeria
  • Odeh Christopher
    Department of Computer Science, Dennis Osadebay University, Asaba, Delta State, Nigeria

Keywords:

Healthcare IoT, Intrusion detection system, Dynamic-kernel CNN, Bidirectional LSTM, Causal pooling

Abstract

Cybersecurity has become a serious concern in healthcare Internet of Things (IoT) systems, where connected medical devices support patient monitoring, diagnosis, and treatment but remain vulnerable to attacks. This paper presents a Dynamic-kernel Convolutional Neural Network--Long Short-Term Memory (DyK-CNN-LSTM) architecture for energy-efficient intrusion detection in healthcare IoT environments. The model combines SoftMax-gated dynamic convolutional kernels with bidirectional LSTM layers to learn multi-scale spatial dependencies and temporal correlations in network traffic. Causal pooling is incorporated to support low-latency, simulation-based real-time inference on low-power devices. Experiments on the IoT Healthcare Security and CICIoMT-2024 datasets produced an integrated-dataset accuracy of 98.42%, precision of 98.35%, recall of 98.41%, F1-score of 98.38%, and false alarm rate of 1.58%. Attack-specific analysis showed consistently strong detection across DDoS, replay, ransomware, brute-force, data-exfiltration, botnet, scanning, and backdoor attacks. Hardware-aware simulation on a 100 MHz ARM Cortex--M4 target indicated an energy consumption of 92.3 µJ and a latency of 24.5 ms per inference, with real hardware validation planned as future work. The proposed DyK-CNN-LSTM framework therefore offers a balanced design for accurate, scalable, and energy-aware intrusion detection in medical IoT systems.

Dimensions

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Figure 2: Detection accuracy results of the proposed model across attack classes.

Published

2026-06-03

How to Cite

Dynamic-kernel CNN-LSTM for real-time intrusion detection in low-power healthcare IoT systems. (2026). Journal of the Nigerian Society of Physical Sciences, 8(3), 3230. https://doi.org/10.46481/jnsps.2026.3230

Issue

Section

Computer Science

How to Cite

Dynamic-kernel CNN-LSTM for real-time intrusion detection in low-power healthcare IoT systems. (2026). Journal of the Nigerian Society of Physical Sciences, 8(3), 3230. https://doi.org/10.46481/jnsps.2026.3230

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