A Light-weight Trust Mechanism for Cloud-Edge Collaboration Framework

Zhipeng Gao, Chenxi Xia, Zhuojun Jin, Qian Wang, Junmeng Huang, Yang Yang, Lanlan Rui
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引用次数: 10

Abstract

With the development of the edge computing and cloud computing technology, the cloud-edge collaboration framework is proposed as a new effective computing architecture and applied in many fields. However, due to the openness of the edge networks, the security of cloud-edge framework is an unavoidable problem and most recent trust mechanism could not resist mixed malicious attacks at the same time. In this work, a light-weight and reliable trust mechanism based on the improved LightGBM algorithm is originally proposed to evaluate the credibility of edge devices. First, we design a light-weight trust mechanism for edge devices to process raw interaction data and extract trust features, which reduces the amount of data transmission and the pressure on the communication networks. In addition, an evaluation algorithm based on the entropy weight method (EWM) and punishment factors is designed for edge brokers to distinguish the malicious devices from the normal ones, which performs great against mixed malicious attacks. At last, we propose an improved LightGBM algorithm developed in the centralized cloud to learn other researchers’ evaluation methods and check the evaluation uploaded from edge brokers, which could make the punishment factors of edge networks weighted adaptively with the change of edge networks. The experimental results show the proposed trust mechanism outperforms existing methods in the accuracy and discriminating speed under mixed malicious attacks.
基于云边缘协作框架的轻量级信任机制
随着边缘计算和云计算技术的发展,云边缘协作框架作为一种新的有效的计算架构被提出,并在许多领域得到了应用。然而,由于边缘网络的开放性,云边缘框架的安全性是一个无法回避的问题,而最新的信任机制也无法同时抵御混合恶意攻击。本文首先提出了一种基于改进的LightGBM算法的轻量级可靠信任机制来评估边缘设备的可信度。首先,我们设计了一种轻量级的边缘设备信任机制来处理原始交互数据并提取信任特征,减少了数据传输量和通信网络的压力。此外,设计了一种基于熵权法(EWM)和惩罚因子的边缘代理评估算法,用于区分恶意设备和正常设备,对混合恶意攻击有很好的防御效果。最后,我们提出了一种改进的LightGBM算法,该算法在集中式云中学习其他研究者的评价方法,并对边缘代理上传的评价进行检查,使边缘网络的惩罚因子随边缘网络的变化而自适应加权。实验结果表明,在混合恶意攻击下,所提出的信任机制在准确率和识别速度上都优于现有的信任机制。
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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