Department of Mathematics, Faculty of Science, New Valley University, El-Kharga, 72511, Egypt.
Sci Rep. 2022 Jul 28;12(1):12937. doi: 10.1038/s41598-022-17043-z.
Cyber physical system (CPS) is a network of cyber and physical elements, which interact with one another in a feedback form. CPS approves critical infrastructure and is treated as essential in day to day since it forms the basis of futuristic smart devices. An increased usage of CPSs poses security as a challenging issue and intrusion detection systems (IDS) can be applied for the identification of network intrusions. The latest advancements in the field of artificial intelligence (AI) and deep learning (DL) enables to design effective IDS models for the CPS environment. At the same time, metaheuristic algorithms can be employed as a feature selection approach in order to reduce the curse of dimensionality. With this motivation, this study develops a novel Poor and Rich Optimization with Deep Learning Model for Blockchain Enabled Intrusion Detection in CPS Environment, called PRO-DLBIDCPS technique. The proposed PRO-DLBIDCPS technique initially introduces an Adaptive Harmony Search Algorithm (AHSA) based feature selection technique for proper selection of feature subsets. For intrusion detection and classification, and attention based bi-directional gated recurrent neural network (ABi-GRNN) model is applied. In addition, the detection efficiency of the ABi-GRNN technique has been enhanced by the use of Poor and rich optimization (PRO) algorithm based hyperparameter optimizer, which resulted in enhanced intrusion detection results. Furthermore, blockchain technology is applied for enhancing security in the CPS environment. In order to demonstrate the enhanced outcomes of the PRO-DLBIDCPS technique, a wide range of simulations was carried out on benchmark dataset and the results reported the better outcomes of the PRO-DLBIDCPS technique in terms of several measures.
网络物理系统(CPS)是一种网络和物理元素的网络,它们以反馈的形式相互作用。CPS 批准关键基础设施,并因其构成未来智能设备的基础而在日常生活中被视为必不可少。CPS 的使用增加带来了安全方面的挑战,入侵检测系统(IDS)可用于识别网络入侵。人工智能(AI)和深度学习(DL)领域的最新进展使我们能够为 CPS 环境设计有效的 IDS 模型。同时,可以采用元启发式算法作为特征选择方法,以减少维度的诅咒。基于此动机,本研究提出了一种用于 CPS 环境中基于区块链的入侵检测的新型 Poor 和 Rich Optimization 与深度学习模型,称为 PRO-DLBIDCPS 技术。所提出的 PRO-DLBIDCPS 技术最初引入了基于自适应和声搜索算法(AHSA)的特征选择技术,用于适当选择特征子集。用于入侵检测和分类的是基于注意力的双向门控循环神经网络(ABi-GRNN)模型。此外,使用 Poor 和 Rich Optimization(PRO)算法的超参数优化器增强了 ABi-GRNN 技术的检测效率,从而提高了入侵检测结果。此外,还应用区块链技术来增强 CPS 环境中的安全性。为了展示 PRO-DLBIDCPS 技术的增强效果,在基准数据集上进行了广泛的模拟,结果表明,PRO-DLBIDCPS 技术在多个方面的表现都优于其他技术。