A R Sathyabama, Katiravan Jeevaa
Department of Information Technology, Velammal Engineering College, Chennai, Tamil Nadu, India.
Sci Rep. 2025 Jul 1;15(1):22369. doi: 10.1038/s41598-025-04164-4.
The rapid adoption of Internet of Things (IoT) devices has significantly increased cybersecurity risks, making them vulnerable to anomalies, attacks, and unauthorized access. Traditional security mechanisms struggle to handle the massive data flow, real-time processing requirements, and evolving cyber threats in IoT networks. This paper presents an integrated approach using Deep Neural Networks and Blockchain technology (DNNs-BCT) to enhance anomaly detection and prevention in IoT environments. Our proposed framework employs DNNs for intelligent anomaly detection, leveraging multi-layer feature extraction and adaptive learning mechanisms. The DNN model is trained on IoT traffic datasets to classify network behavior as normal or anomalous, effectively detecting threats such as Distributed Denial of Service (DDoS) attacks, malware injections, and insider threats. Unlike traditional rule-based intrusion detection systems (IDS), the DNN continuously learns and adapts to new attack patterns, improving detection accuracy and false-positive reduction. This study integrates Blockchain technology into the IoT ecosystem to ensure data integrity, transparency, and decentralized security. Each IoT device logs its activity onto a private blockchain network, preventing data tampering, unauthorized access, and single points of failure. The blockchain employs smart contracts for automated threat response, instantly mitigating malicious activity without human intervention. This distributed ledger approach enhances trust, authentication, and secure communication across IoT devices. The synergy between DNN-based anomaly detection and Blockchain-based security provides a robust, scalable, and adaptive solution for real-time cybersecurity threats in IoT networks. With a low false-positive rate of 15.42% and a strong detection accuracy of 99.18%, the proposed model successfully identifies malicious activity, including malware injections and Distributed Denial of Service (DDoS) assaults. Blockchain technology replaces single points of failure and forbids illegal changes by providing data integrity, openness, and decentralizing powers. Furthermore, smart contracts allow autonomous, real-time attack responses, enhancing reaction time efficiency (95.25%) and general system scalability (94.96%).
物联网(IoT)设备的迅速普及显著增加了网络安全风险,使其容易受到异常、攻击和未经授权的访问。传统的安全机制难以应对物联网网络中庞大的数据流、实时处理需求以及不断演变的网络威胁。本文提出了一种使用深度神经网络和区块链技术(DNNs - BCT)的集成方法,以增强物联网环境中的异常检测和预防能力。我们提出的框架采用深度神经网络进行智能异常检测,利用多层特征提取和自适应学习机制。深度神经网络模型在物联网流量数据集上进行训练,以将网络行为分类为正常或异常,有效检测诸如分布式拒绝服务(DDoS)攻击、恶意软件注入和内部威胁等威胁。与传统的基于规则的入侵检测系统(IDS)不同,深度神经网络不断学习并适应新的攻击模式,提高检测准确性并减少误报。本研究将区块链技术集成到物联网生态系统中,以确保数据完整性、透明度和去中心化安全。每个物联网设备将其活动记录到一个私有区块链网络上,防止数据篡改、未经授权的访问和单点故障。区块链采用智能合约进行自动威胁响应,无需人工干预即可立即减轻恶意活动。这种分布式账本方法增强了物联网设备之间的信任、认证和安全通信。基于深度神经网络的异常检测与基于区块链的安全之间的协同作用为物联网网络中的实时网络安全威胁提供了一个强大、可扩展且自适应的解决方案。所提出的模型误报率低至15.42%,检测准确率高达99.18%,成功识别了恶意活动,包括恶意软件注入和分布式拒绝服务(DDoS)攻击。区块链技术通过提供数据完整性、开放性和去中心化权力,取代了单点故障并禁止非法更改。此外,智能合约允许自主、实时的攻击响应,提高反应时间效率(95.25%)和总体系统可扩展性(94.96%)。