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Distributed Real-Time Anomaly Detection in Networked Industrial Sensing Systems

机译:网络工业传感系统中的分布式实时异常检测

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摘要

Reliable real-time sensing plays a vital role in ensuring the reliability and safety of industrial cyberphysical systems (CPSs) such as wireless sensor and actuator networks. For many reasons, such as harsh industrial environments, fault-prone sensors, or malicious attacks, sensor readings may be abnormal or faulty. This could lead to serious system performance degradation or even catastrophic failure. Current anomaly detection approaches are either centralized and complicated or restricted due to strict assumptions, which are not suitable for practical large-scale networked industrial sensing systems (NISSs), where sensing devices are connected via digital communications, such as wireless sensor networks or smart grid systems. In this paper, we introduce a fully distributed general anomaly detection (GAD) scheme, which uses graph theory and exploits spatiotemporal correlations of physical processes to carry out real-time anomaly detection for general large-scale NISSs. We formally prove the scalability of our GAD approach and evaluate the performance of GAD for two industrial applications: building structure monitoring and smart grids. Extensive trace-driven simulations validate our theoretical analysis and demonstrate that our approach can significantly outperform state-of-the-art approaches in terms of detection accuracy and efficiency.
机译:可靠的实时传感在确保工业网络物理系统(CPS)(例如无线传感器和执行器网络)的可靠性和安全性方面起着至关重要的作用。由于多种原因,例如恶劣的工业环境,容易出错的传感器或恶意攻击,传感器读数可能异常或有故障。这可能导致严重的系统性能下降甚至灾难性故障。由于严格的假设,当前的异常检测方法要么集中,复杂要么受到限制,不适用于实际的大型联网工业传感系统(NISS),在该系统中传感设备通过数字通信连接,例如无线传感器网络或智能电网。系统。在本文中,我们介绍了一种完全分布式的通用异常检测(GAD)方案,该方案使用图论并利用物理过程的时空相关性对通用大型NISS进行实时异常检测。我们正式证明了GAD方法的可扩展性,并评估了GAD在两个工业应用中的性能:建筑结构监控和智能电网。广泛的跟踪驱动仿真验证了我们的理论分析,并证明了我们的方法在检测准确性和效率方面可以大大优于最新方法。

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