QUDOS: quorum-based cloud-edge distributed DNNs for security enhanced industry 4.0

Kevin Wallis, C. Reich, B. Varghese, C. Schindelhauer
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Abstract

Distributed machine learning algorithms that employ Deep Neural Networks (DNNs) are widely used in Industry 4.0 applications, such as smart manufacturing. The layers of a DNN can be mapped onto different nodes located in the cloud, edge and shop floor for preserving privacy. The quality of the data that is fed into and processed through the DNN is of utmost importance for critical tasks, such as inspection and quality control. Distributed Data Validation Networks (DDVNs) are used to validate the quality of the data. However, they are prone to single points of failure when an attack occurs. This paper proposes QUDOS, an approach that enhances the security of a distributed DNN that is supported by DDVNs using quorums. The proposed approach allows individual nodes that are corrupted due to an attack to be detected or excluded when the DNN produces an output. Metrics such as corruption factor and success probability of an attack are considered for evaluating the security aspects of DNNs. A simulation study demonstrates that if the number of corrupted nodes is less than a given threshold for decision-making in a quorum, the QUDOS approach always prevents attacks. Furthermore, the study shows that increasing the size of the quorum has a better impact on security than increasing the number of layers. One merit of QUDOS is that it enhances the security of DNNs without requiring any modifications to the algorithm and can therefore be applied to other classes of problems.
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QUDOS:基于仲裁的云边缘分布式dnn,用于增强安全的工业4.0
采用深度神经网络(dnn)的分布式机器学习算法广泛应用于工业4.0应用,如智能制造。深度神经网络的各层可以映射到位于云、边缘和车间的不同节点上,以保护隐私。输入并通过深度神经网络处理的数据质量对于检验和质量控制等关键任务至关重要。分布式数据验证网络(DDVNs)用于验证数据的质量。然而,当攻击发生时,它们容易出现单点故障。本文提出了一种基于quorum的分布式DNN的安全性增强方法——QUDOS。所提出的方法允许在DNN产生输出时检测或排除由于攻击而损坏的单个节点。在评估dnn的安全性方面,考虑了诸如损坏因子和攻击成功概率等指标。仿真研究表明,如果损坏节点的数量小于quorum中给定的决策阈值,QUDOS方法总是可以防止攻击。此外,研究表明,增加quorum的大小比增加层数对安全性有更好的影响。QUDOS的一个优点是它增强了dnn的安全性,而不需要对算法进行任何修改,因此可以应用于其他类型的问题。
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