Acoustic Side-Channel Attacks on Additive Manufacturing Systems

M. A. Faruque, Sujit Rokka Chhetri, A. Canedo, Jiang Wan
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引用次数: 150

Abstract

Additive manufacturing systems, such as 3D printers, emit sounds while creating objects. Our work demonstrates that these sounds carry process information that can be used to indirectly reconstruct the objects being printed, without requiring access to the original design. This is an example of a physical-to-cyber domain attack, where information gathered from the physical domain, such as acoustic side-channel, can be used to reveal information about the cyber domain. Our novel attack model consists of a pipeline of audio signal processing, machine learning algorithms, and context-based post-processing to improve the accuracy of the object reconstruction. In our experiments, we have successfully reconstructed the test objects (designed to test the attack model under various benchmark parameters) and their corresponding G-codes with an average accuracy for axis prediction of 78.35% and an average length prediction error of 17.82% on a Fused Deposition Modeling (FDM) based additive manufacturing system. Our work exposes a serious vulnerability in FDM based additive manufacturing systems exploitable by physical-to-cyber attacks that may lead to theft of Intellectual Property (IP) and trade secrets. To the best of our knowledge this kind of attack has not yet been explored in additive manufacturing systems.
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增材制造系统的声学侧信道攻击
增材制造系统,如3D打印机,在制造物体时发出声音。我们的工作表明,这些声音携带的过程信息可以用来间接地重建被打印的物体,而不需要访问原始设计。这是一个物理到网络域攻击的例子,其中从物理域收集的信息,如声学侧信道,可以用来揭示有关网络域的信息。我们的新攻击模型由音频信号处理、机器学习算法和基于上下文的后处理组成,以提高目标重建的准确性。在我们的实验中,我们成功地在基于熔融沉积建模(FDM)的增材制造系统上重建了测试对象(用于测试各种基准参数下的攻击模型)及其相应的g代码,平均轴预测精度为78.35%,平均长度预测误差为17.82%。我们的工作揭示了基于FDM的增材制造系统的一个严重漏洞,该漏洞可被物理对网络攻击利用,可能导致知识产权(IP)和商业秘密被盗。据我们所知,这种攻击尚未在增材制造系统中进行过探索。
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ICCPS '21: ACM/IEEE 12th International Conference on Cyber-Physical Systems, Nashville, Tennessee, USA, May 19-21, 2021 Demo Abstract: SURE: An Experimentation and Evaluation Testbed for CPS Security and Resilience Poster Abstract: Thermal Side-Channel Forensics in Additive Manufacturing Systems Exploiting Wireless Channel Randomness to Generate Keys for Automotive Cyber-Physical System Security WiP Abstract: Platform for Designing and Managing Resilient and Extensible CPS
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