Integrity protection method for trusted data of IoT nodes based on transfer learning

Web Intell. Pub Date : 2021-11-17 DOI:10.3233/web-210467
Lin Tang
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Abstract

In order to overcome the problems of high data storage occupancy and long encryption time in traditional integrity protection methods for trusted data of IOT node, this paper proposes an integrity protection method for trusted data of IOT node based on transfer learning. Through the transfer learning algorithm, the data characteristics of the IOT node is obtained, the feature mapping function in the common characteristics of the node data is set to complete the classification of the complete data and incomplete data in the IOT nodes. The data of the IOT nodes is input into the data processing database to verify its security, eliminate the node data with low security, and integrate the security data and the complete data. On this basis, homomorphic encryption algorithm is used to encrypt the trusted data of IOT nodes, and embedded processor is added to the IOT to realize data integrity protection. The experimental results show that: after using the proposed method to protect the integrity of trusted data of IOT nodes, the data storage occupancy rate is only about 3.5%, the shortest time-consuming of trusted data encryption of IOT nodes is about 3 s, and the work efficiency is high.
基于迁移学习的物联网节点可信数据完整性保护方法
针对传统物联网节点可信数据完整性保护方法存在的数据占用率高、加密时间长等问题,本文提出了一种基于迁移学习的物联网节点可信数据完整性保护方法。通过迁移学习算法获取IOT节点的数据特征,设置节点数据共有特征中的特征映射函数,完成IOT节点中完整数据和不完整数据的分类。将物联网节点的数据输入数据处理数据库,验证其安全性,剔除安全性较低的节点数据,实现安全数据与完整数据的融合。在此基础上,采用同态加密算法对物联网节点的可信数据进行加密,并在物联网中加入嵌入式处理器,实现数据完整性保护。实验结果表明:采用本文提出的方法保护物联网节点可信数据的完整性后,数据存储占用率仅为3.5%左右,物联网节点可信数据加密时间最短为3 s左右,工作效率高。
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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