Privacy and Security Enhancement of Smart Cities using Hybrid Deep Learning-enabled Blockchain

Pub Date : 2023-09-10 DOI:10.12694/scpe.v24i3.2272
Joseph Bamidele Awotunde, Tarek Gaber, L V Narasimha Prasad, Sakinat Oluwabukonla Folorunso, Vuyyuru Lakshmi Lalitha
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引用次数: 1

Abstract

The emergence of the Internet of Things (IoT) accelerated the implementation of various smart city applications and initiatives. The rapid adoption of IoT-powered smart cities is faced by a number of security and privacy challenges that hindered their application in areas such as critical infrastructure. One of the most crucial elements of any smart city is safety. Without the right safeguards, bad actors can quickly exploit weak systems to access networks or sensitive data. Security issues are a big worry for smart cities in addition to safety issues. Smart cities become easy targets for attackers attempting to steal data or disrupt services if they are not adequately protected against cyberthreats like malware or distributed denial-of-service (DDoS) attacks. Therefore, in order to safeguard their systems from potential threats, businesses must employ strong security protocols including encryption, authentication, and access control measures. In order to ensure that their network traffic remains secure, organizations should implement powerful network firewalls and intrusion detection systems (IDS). This article proposes a blockchain-supported hybrid Convolutional Neural Network (CNN) with Kernel Principal Component Analysis (KPCA) to provide privacy and security for smart city users and systems. Blockchain is used to provide trust, and CNN enabled with KPCA is used for classifying threats. The proposed solution comprises three steps, preprocessing, feature selection, and classification. The standard features of the datasets used are converted to a numeric format during the preprocessing stage, and the result is sent to KPCA for feature extraction. Feature extraction reduces the dimensionality of relevant features before it passes the resulting dataset to the CNN to classify and detect malicious activities. Two prominent datasets namely ToN-IoT and BoT-IoT were used to measure the performance of this anticipated method compared to its best rivals in the literature. Experimental evaluation results show an improved performance in terms of threat prediction accuracy, and hence, increased security, privacy, and maintainability of IoT-enabled smart cities.
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使用混合深度学习支持的区块链增强智能城市的隐私和安全
物联网(IoT)的出现加速了各种智慧城市应用和倡议的实施。物联网驱动的智慧城市的快速采用面临着许多安全和隐私挑战,这些挑战阻碍了它们在关键基础设施等领域的应用。任何智慧城市最重要的因素之一就是安全。如果没有正确的保护措施,不法分子可以迅速利用薄弱的系统访问网络或敏感数据。除了安全问题之外,安全问题也是智慧城市的一大担忧。如果智能城市没有充分防范恶意软件或分布式拒绝服务(DDoS)攻击等网络威胁,就很容易成为攻击者窃取数据或破坏服务的目标。因此,为了保护系统免受潜在威胁,企业必须采用强大的安全协议,包括加密、身份验证和访问控制措施。为了确保他们的网络通信保持安全,组织应该实现强大的网络防火墙和入侵检测系统(IDS)。本文提出了一种区块链支持的混合卷积神经网络(CNN)和核主成分分析(KPCA),为智慧城市用户和系统提供隐私和安全。区块链用于提供信任,CNN启用KPCA用于对威胁进行分类。该方案包括预处理、特征选择和分类三个步骤。在预处理阶段,使用的数据集的标准特征被转换为数字格式,并将结果发送给KPCA进行特征提取。特征提取在将得到的数据集传递给CNN进行分类和检测恶意活动之前,先降低相关特征的维数。两个突出的数据集,即ToN-IoT和BoT-IoT,被用来衡量与文献中最好的竞争对手相比,这种预期方法的性能。实验评估结果表明,在威胁预测精度方面的性能有所提高,从而提高了物联网智能城市的安全性、隐私性和可维护性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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