An Efficient Lightweight Crypto Security Module for Protecting Data Transmission Through IOT Based Electronic Sensors

IF 0.6 4区 工程技术 Q4 ENGINEERING, ELECTRICAL & ELECTRONIC
Fekry Olayah, Mohammed Al Yami, H. Abosaq, Yahya Ali Abdelrahman Ali, Md. Ashraf Siddiqui, Reyazur Rashid Irshad, Samreen Shahwar, Asharul Islam, Rafia Sultana
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Abstract

The Internet of Things (IoT) devices are advanced nanoelectronics devices which has recently witnessed an explosive expansion in the field of communication and electronics, becoming ubiquitous in various applications. However, the rapid growth of IoT applications makes them prone to security threats and data breaches. Hence, cryptographic techniques are developed to ensure data confidentiality and integrity in IoT and many of the applications from optoelectronics. However, the existing cryptographic algorithms face challenges in securing the data from threats during transmission, as they lack effective key management. Therefore, we proposed a novel optimized lightweight cryptography (LWC) to resolve this challenge using the combined benefits of Grey Wolf Optimization and Hyper Elliptic Curve Cryptography (GW-HECC). The proposed LWC algorithm protects the data from attacks during data exchange by optimizing the key management process and aims to deliver greater Quality of Service (QoS) in IoT networks. An IoT network was initially created with multiple sensor devices, IoT gateways, and data aggregators. The proposed framework includes a Quantum Neural Network (QNN)-based attack prediction module to predict the malicious data entry in the IoT network. The QNN learns the attack patterns from the historical IoT data and prevents incoming malicious data entries, ensuring that only normal data is transmitted to the cloud. For secure data transmission, the sensed data from the IoT network are encrypted using the proposed GW-HECC. The presented work was designed and implemented in Python software; the experimental results demonstrate that the proposed method offers greater data confidentiality of 97.9%, improved attack prediction accuracy of 99.8%, and a reduced delay of 0.37 s. Furthermore, a comparative analysis was made with existing cryptographic algorithms, manifesting that the proposed algorithm acquired improved results.
通过基于物联网的电子传感器保护数据传输的高效轻量级密码安全模块
物联网(IoT)设备是一种先进的纳米电子设备,近来在通信和电子领域呈现爆炸式增长,在各种应用中变得无处不在。然而,物联网应用的快速增长使其容易受到安全威胁和数据泄露。因此,人们开发了加密技术来确保物联网和许多光电子应用中的数据保密性和完整性。然而,现有的加密算法由于缺乏有效的密钥管理,在确保数据在传输过程中免受威胁方面面临挑战。因此,我们提出了一种新型优化轻量级加密算法(LWC),利用灰狼优化和超椭圆曲线加密算法(GW-HECC)的综合优势来解决这一难题。所提出的 LWC 算法通过优化密钥管理过程来保护数据在数据交换过程中免受攻击,旨在为物联网网络提供更高的服务质量(QoS)。最初创建的物联网网络包含多个传感器设备、物联网网关和数据聚合器。拟议框架包括一个基于量子神经网络(QNN)的攻击预测模块,用于预测物联网网络中的恶意数据输入。量子神经网络从历史物联网数据中学习攻击模式,防止恶意数据进入,确保只有正常数据被传输到云端。为了确保数据传输的安全性,物联网网络中的传感数据使用所提出的 GW-HECC 进行加密。本研究采用 Python 软件进行设计和实现;实验结果表明,所提方法的数据保密性提高了 97.9%,攻击预测准确率提高了 99.8%,延迟降低了 0.37 秒。
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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来源期刊
Journal of Nanoelectronics and Optoelectronics
Journal of Nanoelectronics and Optoelectronics 工程技术-工程:电子与电气
自引率
16.70%
发文量
48
审稿时长
12.5 months
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