DBN-protected material Enhanced intrusion prevention sensor system defends against cyber attacks in the IoT devices

Q4 Engineering Measurement Sensors Pub Date : 2024-06-22 DOI:10.1016/j.measen.2024.101263
P. Ajay , B. Nagaraj , R. Arun Kumar , V. Suthana , M. Ruth Keziah
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Abstract

By linking objects globally, the Internet of Things (IoT) has transformed technology with the goal of achieving an unparalleled degree of intelligence that will benefit mankind in many areas. Resilient applications in safety, healthcare, and industrial processes rely heavily on continuous connectivity and interaction with surrounding objects. But the IoT ecosystem's enormous number of businesses and apps significantly raises the possibility of unwanted access, raising worries about cyberattacks. It is important to protect symmetrical networks used in modern communication from these dangers. With an emphasis on a sophisticated intrusion detection and prevention system based on Deep Belief Symmetrical Networks (DBNs), this study investigates cutting edge techniques and tactics for preventing security breaches. Our research specifically investigates possibly dangerous behaviour within IoT symmetrical networks and attempts to determine its source. We present a DBN-protected material improved symmetrical intrusion prevention sensor system that improves IoT device security. We improve the system's capacity to identify and prevent cyber-attacks by exploiting DBNs. We compare the suggested method's performance to industry-standard Intrusion Detection Systems (IDS) algorithms and Domain Generation Algorithms (DGAs) to assess its effectiveness. We create results that demonstrate the usefulness of our method in fighting against cyber-attacks in the IoT environment through rigorous research and testing. This study advances the development of safe IoT Symmetrical devices and encourages the full realization of their promise in allowing a connected and intelligent world.

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DBN 保护材料 增强型入侵防御传感器系统可抵御物联网设备中的网络攻击
物联网(IoT)通过将全球范围内的物体连接起来,改变了技术,其目标是实现无与伦比的智能化,在许多领域造福人类。安全、医疗保健和工业流程中的弹性应用在很大程度上依赖于与周围物体的持续连接和互动。但是,物联网生态系统中大量的业务和应用程序大大增加了意外访问的可能性,引发了对网络攻击的担忧。必须保护现代通信中使用的对称网络免受这些危险。本研究以基于深度信念对称网络(DBN)的复杂入侵检测和防御系统为重点,研究了防止安全漏洞的前沿技术和策略。我们的研究特别调查了物联网对称网络中可能存在的危险行为,并试图确定其来源。我们提出了一种 DBN 保护材料改进型对称入侵防御传感器系统,可提高物联网设备的安全性。我们利用 DBN 提高了系统识别和预防网络攻击的能力。我们将建议方法的性能与行业标准入侵检测系统(IDS)算法和域生成算法(DGA)进行了比较,以评估其有效性。通过严格的研究和测试,我们得出的结果证明了我们的方法在物联网环境中对抗网络攻击的实用性。这项研究推动了安全物联网对称设备的发展,并鼓励全面实现其在互联和智能世界中的承诺。
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来源期刊
Measurement Sensors
Measurement Sensors Engineering-Industrial and Manufacturing Engineering
CiteScore
3.10
自引率
0.00%
发文量
184
审稿时长
56 days
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