混合工业系统异常能耗的随机检测方法

Stefan Windmann, Shuo Jiao, O. Niggemann, H. Borcherding
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引用次数: 36

摘要

在本工作中,研究了混合工业生产系统中异常能耗的检测。采用基于模型的方法,以时间混合自动机作为系统整体模型进行异常检测。该方法是基于假定系统的几种模式,即具有连续系统行为的相位。模式之间的转换归因于离散的控制事件,如开/关信号。将包含系统模式和转换的底层离散事件系统建模为有限状态机。本文的重点是对特定系统模式下的能耗进行建模。随机状态空间模型序列用于此目的。考虑了该方法的模型学习和异常检测。在一个小型模型工厂中对该方法进行了进一步的评估。实验结果表明,与现有的混合工业系统异常检测方法相比,该方法有了显著的改进。
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A stochastic method for the detection of anomalous energy consumption in hybrid industrial systems
In the presented work, the detection of anomalous energy consumption in hybrid industrial production systems is investigated. A model-based approach with a timed hybrid automaton as overall system model is employed for anomaly detection. The approach is based on the assumption of several system modes, i.e. phases with continuous system behavior. Transitions between the modes are attributed to discrete control events such as on/off signals. The underlying discrete event system which comprises both system modes and transitions is modeled as finite state machine. The focus of this paper is set on the modeling of the energy consumption in the particular system modes. Sequences of stochastic state space models are employed for this purpose. Model learning and anomaly detection for this approach are considered. The proposed approach is further evaluated in a small model factory. The experimental results show significant improvements compared to existing approaches to anomaly detection in hybrid industrial systems.
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