基于概率模型的大噪声多材料3D打印机数据集的隐身网络异常检测

Srikanth B. Yoginath, Michael D. Iannacone, Varisara Tansakul, A. Passian, Rob Jordan, Joel Asiamah, M. Ericson, G. Long, Joel A. Dawson
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引用次数: 0

摘要

随着增材制造技术在工业中的广泛应用,其在安全关键部件制造中的应用也在不断被探索和采用。然而,ALM对嵌入式计算的依赖使其容易受到网络攻击的篡改。ALM设备的传感器仪表允许严格的过程和安全监控,但也会导致每次运行的大量噪声数据。因此,现场、近实时的异常检测是非常有挑战性的。这种情况下的理想算法是简单的,计算效率高,最大限度地减少误报,并且足够准确地解决小的偏差。在本文中,我们提出了一种基于概率模型的方法来解决这一挑战。为了测试我们的方法,我们分析了聚合物复合3D打印机在模拟篡改攻击期间的当前测量值。我们的结果表明,我们的方法可以在存在大量操作噪声的情况下一致有效地定位小变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Stealthy Cyber Anomaly Detection On Large Noisy Multi-material 3D Printer Datasets Using Probabilistic Models
As Additive Layer Manufacturing (ALM) becomes pervasive in industry, its applications in safety critical component manufacturing are being explored and adopted. However, ALM's reliance on embedded computing renders it vulnerable to tampering through cyber-attacks. Sensor instrumentation of ALM devices allows for rigorous process and security monitoring, but also results in a massive volume of noisy data for each run. As such, in-situ, near-real-time anomaly detection is very challenging. The ideal algorithm for this context is simple, computationally efficient, minimizes false positives, and is accurate enough to resolve small deviations. In this paper, we present a probabilistic-model-based approach to address this challenge. To test our approach, we analyze current measurements from a polymer composite 3D printer during emulated tampering attacks. Our results show that our approach can consistently and efficiently locate small changes in the presence of substantial operational noise.
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