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Self-Organizing Maps for Anomaly Localization and Predictive Maintenance in Cyber-Physical Production Systems

机译:网络物理生产系统中异常定位和预测维护的自组织映射

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Modern Cyber-Physical Production Systems provide large amounts of data such as sensor and control signals or configuration parameters. The available data enables unsupervised, data-driven solutions for model-based anomaly detection, anomaly localization and predictive maintenance: models which represent the normal behaviour of the system are learned from data. Then, live data from the system can be compared to the predictions of the model to detect faults, perform fault diagnosis and derive the overall condition of a system or its components. In this paper we use self-organizing maps for the aforementioned tasks and evaluate the presented methods on several real-world systems.
机译:现代的网络物理生产系统可提供大量数据,例如传感器和控制信号或配置参数。可用数据为基于模型的异常检测,异常定位和预测性维护提供了无监督的,数据驱动的解决方案:代表系统正常行为的模型是从数据中学习的。然后,可以将来自系统的实时数据与模型的预测进行比较,以检测故障,执行故障诊断并得出系统或其组件的整体状况。在本文中,我们将自组织映射用于上述任务,并在几种实际系统上评估所提出的方法。

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