An analytics-driven framework for securing industrial IoT-Enabled Supply Chain Management Systems

Naveen Saran , Nishtha Kesswani
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Abstract

In today’s dynamic technological environment, the integration of IoT into Supply Chain Management Systems (SCMS) has significantly enhanced functionality, visibility, and decision-making. However, integrating Industrial-IoT (IIoT) with Supply Chain Networks (SCN) is an equally significant security concern because of interconnected systems amplified exposure and complexity. This study proposes an original Intrusion Detection System (IDS) framework based on the Staked Ensemble Model appropriate for IIoT-Enabled SCMS. A stacked ensemble model-based IDS framework operates as a novel solution to protect IIoT-Enabled SCMS. A multilayered system unites Extreme Gradient Boosting (XGBoost) with Light Gradient Boosting Machine (LightGBM) along with Deep Neural Networks (DNN) as a stacked ensemble design to enable decentralized and secure collaborative learning across the supply chain network and protect user data and maintain system stability as well as network reliability. On the other hand, Synthetic Minority Oversampling Technique (SMOTE) and Principal Component Analysis (PCA) are established techniques, and our contribution is in optimizing the application of those for IIoT traffic. We tackle the class imbalance in intrusion data with SMOTE to better detect rare attacks and to use PCA to reduce the high dimensions of feature space for less computational effort and more efficient pattern recognition. To meet the requirements of the IIoT use cases, these preprocessing techniques are effectively embedded in the framework. Moreover, the proposed modular IDS architecture, the curation and fine tuning of the various learners, and the approach to full validation are all novel. We rigorously evaluate the model under K-Fold Cross Validation using the IoT-23 dataset and prove superior detection performance when compared to state-of-the-art approaches. Specifically, this research contributes a scalable and efficient IDS for an IIoT scenarios such as real-world IIoT enabled SCMS, which improves security analytics and facilitates network defense in key operational functionalities such as low data rates, low computational resources availability and restricted communication over the year.
一个分析驱动的框架,用于保护工业物联网支持的供应链管理系统
在当今动态的技术环境中,将物联网集成到供应链管理系统(SCMS)中大大增强了功能,可见性和决策。然而,将工业物联网(IIoT)与供应链网络(SCN)集成是一个同样重要的安全问题,因为互联系统会增加风险和复杂性。本研究提出了一种原始的入侵检测系统(IDS)框架,该框架基于适用于IIoT-Enabled SCMS的利害关系集成模型。基于堆叠集成模型的IDS框架作为一种新颖的解决方案来保护支持iiot的SCMS。多层系统将极端梯度增强(XGBoost)与光梯度增强机(LightGBM)以及深度神经网络(DNN)结合在一起,作为堆叠集成设计,实现跨供应链网络的分散和安全协作学习,保护用户数据,维护系统稳定性和网络可靠性。另一方面,合成少数派过采样技术(SMOTE)和主成分分析(PCA)是成熟的技术,我们的贡献是优化这些技术在工业物联网流量中的应用。我们利用SMOTE来解决入侵数据中的类不平衡问题,以更好地检测罕见的攻击,并利用PCA来降低特征空间的高维数,从而减少计算量,提高模式识别效率。为了满足工业物联网用例的需求,这些预处理技术被有效地嵌入到框架中。此外,所提出的模块化IDS架构、各种学习器的管理和微调以及完全验证的方法都是新颖的。我们使用IoT-23数据集严格评估K-Fold交叉验证下的模型,并证明与最先进的方法相比,该模型具有优越的检测性能。具体来说,本研究为工业物联网场景(如现实世界的工业物联网支持SCMS)提供了可扩展且高效的IDS,从而改进了安全分析并促进了关键操作功能(如低数据速率,低计算资源可用性和全年通信受限)的网络防御。
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