A Layer Image Auditing System Secured by Blockchain

Jinwoo Song, Young Moon
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引用次数: 0

Abstract

In Additive Manufacturing (AM), auditing layer-by-layer images can detect infill defective attacks effectively. However, the auditing process itself can become a target of inside or outside attackers in Cyber-Physical Manufacturing System (CPMS) environments because pervasive connection through various types of computer networks in CPMS opens new doors for adversaries to compromise various components in an attack detection system. To maintain an effective attack detection system and prevent data from malicious data injection, this paper presents a Layer Image Auditing System (LIAS) secured by the Blockchain technology in CPMS. LIAS consists of a pre-processing system and a Multilayer Perceptron Neural Network (MLP). To evaluate the prediction accuracy of LIAS, a set of simulated infill images and physical images were used for training and testing. The effectiveness of the Blockchain implementation is demonstrated by presenting the comparative performance analysis of the proposed attack detection system with and without the Blockchain.

基于区块链的图层图像审计系统
在增材制造(AM)中,逐层审计图像可以有效检测填充缺陷攻击。然而,审计过程本身可能成为网络物理制造系统(CPMS)环境中内部或外部攻击者的目标,因为通过CPMS中各种类型的计算机网络的普遍连接为攻击者破坏攻击检测系统中的各种组件打开了新的大门。为了维护有效的攻击检测系统,防止恶意数据注入,本文提出了一种基于区块链技术的CPMS层图像审计系统(LIAS)。LIAS由预处理系统和多层感知器神经网络(MLP)组成。为了评估LIAS的预测精度,使用一组模拟填充图像和物理图像进行训练和测试。通过对提议的攻击检测系统在使用和不使用区块链的情况下进行性能比较分析,证明了区块链实现的有效性。
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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