CASPER: Context-Aware IoT Anomaly Detection System for Industrial Robotic Arms

IF 3.5 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS ACM Transactions on Internet of Things Pub Date : 2024-06-01 DOI:10.1145/3670414
Hakan Kayan, Ryan Heartfield, Omer F. Rana, Pete Burnap, Charith Perera
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Abstract

Industrial cyber-physical systems (ICPS) are widely employed in supervising and controlling critical infrastructures (CIs), with manufacturing systems that incorporate industrial robotic arms being a prominent example. The increasing adoption of ubiquitous computing technologies in these systems has led to benefits such as real-time monitoring, reduced maintenance costs, and high interconnectivity. This adoption has also brought cybersecurity vulnerabilities exploited by adversaries disrupting manufacturing processes via manipulating actuator behaviors. Previous incidents in the industrial cyber domain prove that adversaries launch sophisticated attacks rendering network-based anomaly detection mechanisms insufficient as the ”physics” involved in the process is overlooked. To address this issue, we propose an IoT-based cyber-physical anomaly detection system that can detect motion-based behavioral changes in an industrial robotic arm. We apply both statistical and state-of-the-art machine learning (ML) methods to real-time Inertial Measurement Unit (IMU) data collected from an edge development board attached to an arm doing a pick-and-place operation. To generate anomalies, we modify the joint velocity of the arm. Our goal is to create an air-gapped secondary protection layer to detect ”physical” anomalies without depending on the integrity of network data, thus augmenting overall anomaly detection capability. Our empirical results show that the proposed system, which utilizes 1D-CNNs, can successfully detect motion-based anomalies on a real-world industrial robotic arm. The significance of our work lies in its contribution to developing a comprehensive solution for ICPS security, which goes beyond conventional network-based methods.
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CASPER:面向工业机械臂的情境感知物联网异常检测系统
工业网络物理系统(ICPS)被广泛应用于关键基础设施(CIs)的监督和控制,其中包含工业机械臂的制造系统就是一个突出的例子。这些系统越来越多地采用泛在计算技术,带来了实时监控、降低维护成本和高度互联性等好处。这种采用也带来了网络安全漏洞,被对手利用,通过操纵执行器行为破坏制造流程。之前在工业网络领域发生的事件证明,对手发起的复杂攻击使基于网络的异常检测机制变得不足,因为过程中涉及的 "物理 "因素被忽视了。为了解决这个问题,我们提出了一种基于物联网的网络物理异常检测系统,它可以检测工业机械臂中基于运动的行为变化。我们将统计方法和最先进的机器学习(ML)方法应用于从连接到进行拾放操作的机械臂的边缘开发板上收集的实时惯性测量单元(IMU)数据。为了产生异常,我们修改了手臂的关节速度。我们的目标是在不依赖网络数据完整性的情况下,创建一个空气屏蔽二级保护层来检测 "物理 "异常,从而增强整体异常检测能力。我们的实证结果表明,利用 1D-CNN 的拟议系统可以成功检测到真实世界中工业机械臂上基于运动的异常。我们工作的意义在于,它为开发 ICPS 安全的全面解决方案做出了贡献,超越了传统的基于网络的方法。
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CiteScore
5.20
自引率
3.70%
发文量
0
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FLAShadow: A Flash-based Shadow Stack for Low-end Embedded Systems CoSense: Deep Learning Augmented Sensing for Coexistence with Networking in Millimeter-Wave Picocells CASPER: Context-Aware IoT Anomaly Detection System for Industrial Robotic Arms Collaborative Video Caching in the Edge Network using Deep Reinforcement Learning ARIoTEDef: Adversarially Robust IoT Early Defense System Based on Self-Evolution against Multi-step Attacks
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