Mustafa Rashid, Sarkar Nurul I, Mohaghegh Mahsa, Pervez Shahbaz, Vohra Ovesh
Department of Computer and Information Sciences, Auckland University of Technology, Auckland 1010, New Zealand.
School of Information Technology, Whitecliffe College of Arts and Science, Auckland 1010, New Zealand.
Sensors (Basel). 2025 Jun 13;25(12):3720. doi: 10.3390/s25123720.
The widespread adoption of the Internet of Things (IoT) raises significant concerns regarding security and energy efficiency, particularly for low-resource devices. To address these IoT issues, we propose a cross-layer IoT architecture employing machine learning (ML) models and lightweight cryptography. Our proposed solution is based on role-based access control (RBAC), ensuring secure authentication in large-scale IoT deployments while preventing unauthorized access attempts. We integrate layer-specific ML models, such as long short-term memory networks for temporal anomaly detection and decision trees for application-layer validation, along with adaptive speck encryption for the dynamic adjustment of cryptographic overheads. We then introduce a granular RBAC system that incorporates energy-aware policies. The novelty of this work is the proposal of a cross-layer IoT architecture that harmonizes ML-driven security with energy-efficient operations. The performance of the proposed cross-layer system is evaluated by extensive simulations. The results obtained show that the proposed system can reduce false positives up to 32% and enhance system security by preventing unauthorized access up to 95%. We also achieve 30% reduction in power consumption using the proposed lightweight Speck encryption method compared to the traditional advanced encryption standard (AES). By leveraging convolutional neural networks and ML, our approach significantly enhances IoT security and energy efficiency in practical scenarios such as smart cities, homes, and schools.
物联网(IoT)的广泛应用引发了对安全性和能源效率的重大担忧,尤其是对于低资源设备。为了解决这些物联网问题,我们提出了一种采用机器学习(ML)模型和轻量级加密技术的跨层物联网架构。我们提出的解决方案基于基于角色的访问控制(RBAC),可确保大规模物联网部署中的安全认证,同时防止未经授权的访问尝试。我们集成了特定层的ML模型,例如用于时间异常检测的长短期记忆网络和用于应用层验证的决策树,以及用于动态调整加密开销的自适应斑点加密。然后,我们引入了一个包含能源感知策略的细粒度RBAC系统。这项工作的新颖之处在于提出了一种跨层物联网架构,该架构将ML驱动的安全性与节能操作相协调。通过广泛的模拟评估了所提出的跨层系统的性能。获得的结果表明,所提出的系统可以将误报率降低多达32%,并通过防止高达95%的未经授权访问来增强系统安全性。与传统的高级加密标准(AES)相比,使用所提出的轻量级斑点加密方法还可实现30%的功耗降低。通过利用卷积神经网络和ML,我们的方法在智能城市、家庭和学校等实际场景中显著提高了物联网的安全性和能源效率。