Hybridization of deep learning models with crested porcupine optimizer algorithm-based cybersecurity detection on industrial IoT for smart city environments

IF 6.2 2区 工程技术 Q1 ENGINEERING, MULTIDISCIPLINARY
Sarah A. Alzakari , Mohammed Aljebreen , Mashael M. Asiri , Wahida MANSOURI , Sultan Alahmari , Mohammed Alqahtani , Shaymaa Sorour , Wafi Bedewi
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引用次数: 0

Abstract

Smart cities have attracted extensive coverage from multidisciplinary studies, and many artificial intelligence (AI) solutions have been designed. Conversely, cybersecurity has constantly been a crucial issue and is becoming gradually dangerous in smart cities. The attack defence models are inappropriate for perceiving multistep assaults as the recognition rules are restricted, and efficacy is partial due to many false security alarms. Therefore, an innovative solution is immediately required to progress cybersecurity defence ability. Machine learning (ML) methods are commonly employed to recognize numerous attacks because they could help network administrators grab analogous initials to avert intrusion. This study presents Cybersecurity using a Crested Porcupine Optimizer Algorithm with Hybrid Deep Learning Models (CCPOA-HDLM). The foremost intention of this study is to improve cybersecurity detection and classification in smart city environments. To accomplish that, the CCPOA-HDLM method comprises distinct processes such as min-max normalization, improved Salp swarm algorithm (ISSA)-based feature selection, Multi-Channel Convolutional Neural Network - Recurrent Neural Network (MCNN-RNN)-based cybersecurity detection, and crested porcupine optimizer (CPO)-based parameter selection process. Primarily, data normalization utilizing min-max normalization is implemented. Next, the CCPOA-HDLM method utilizes ISSA based feature selection method to select optimum features. The CCPOA-HDLM technique employs a hybrid of the MCNN-RNN model for the cybersecurity detection and classification process. Moreover, the hyperparameter range of the hybrid of DL techniques occurs using the CPO technique. The experimental validation of the CCPOA-HDLM approach is performed on the UNSW-NB15 dataset, and the outcome portrayed a superior accuracy value of 99.04 % over other recent approaches under various measures.
深度学习模型与基于冠状豪猪优化算法的智能城市环境下工业物联网网络安全检测的融合
智慧城市吸引了多学科研究的广泛报道,并设计了许多人工智能(AI)解决方案。相反,网络安全一直是一个至关重要的问题,并且在智慧城市中变得越来越危险。由于识别规则的限制,攻击防御模型不适用于多步骤攻击的感知,并且由于存在大量虚假安全警报,攻击防御模型的有效性不高。因此,迫切需要创新的解决方案来提高网络安全防御能力。机器学习(ML)方法通常用于识别各种攻击,因为它们可以帮助网络管理员获取类似的首字母以避免入侵。本研究提出了一种使用混合深度学习模型(CCPOA-HDLM)的冠状豪猪优化算法的网络安全。本研究的首要目的是改善智慧城市环境下的网络安全检测和分类。为了实现这一目标,CCPOA-HDLM方法包括不同的过程,如最小-最大归一化、基于改进Salp群算法(ISSA)的特征选择、基于多通道卷积神经网络-循环神经网络(MCNN-RNN)的网络安全检测,以及基于顶毛猪优化器(CPO)的参数选择过程。首先,利用最小-最大归一化实现数据归一化。其次,CCPOA-HDLM方法利用基于ISSA的特征选择方法来选择最优特征。CCPOA-HDLM技术采用MCNN-RNN模型的混合模型进行网络安全检测和分类过程。此外,使用CPO技术时,DL技术的混合出现超参数范围。在unws - nb15数据集上对CCPOA-HDLM方法进行了实验验证,结果表明,在各种度量下,CCPOA-HDLM方法的准确率达到99.04 %,优于其他方法。
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来源期刊
alexandria engineering journal
alexandria engineering journal Engineering-General Engineering
CiteScore
11.20
自引率
4.40%
发文量
1015
审稿时长
43 days
期刊介绍: Alexandria Engineering Journal is an international journal devoted to publishing high quality papers in the field of engineering and applied science. Alexandria Engineering Journal is cited in the Engineering Information Services (EIS) and the Chemical Abstracts (CA). The papers published in Alexandria Engineering Journal are grouped into five sections, according to the following classification: • Mechanical, Production, Marine and Textile Engineering • Electrical Engineering, Computer Science and Nuclear Engineering • Civil and Architecture Engineering • Chemical Engineering and Applied Sciences • Environmental Engineering
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