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A Relevance-Based Data Exploration Approach to Assist Operators in Anomaly Detection

机译:基于关联的数据探索方法,辅助操作员进行异常检测

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摘要

Data is emerging as a new industrial asset in the factory of the future, to implement advanced functions like state detection, health assessment, as well as manufacturing servitization. In this paper, we foster Industry 4.0 data exploration by relying on a relevance evaluation approach that is: (ⅰ) flexible, to detect relevant data according to different analysis requirements; (ⅱ) context-aware, since relevant data is discovered also considering specific working conditions of the monitored machines; (ⅲ) operator-centered, thus enabling operators to visualise unexpected working states without being overwhelmed by the huge volume and velocity of collected data. We demonstrate the feasibility of our approach with the implementation of an anomaly detection service in the Smart Factory, where the attention of operators is focused on relevant data corresponding to unusual working conditions, and data of interest is properly visualised on operator's cockpit according to adaptive sampling techniques based on the relevance of collected data.
机译:数据正在成为未来工厂中的一种新的工业资产,以实现高级功能,例如状态检测,健康评估以及制造服务。在本文中,我们将依靠一种相关性评估方法来促进工业4.0数据探索:(ⅰ)灵活,可根据不同的分析要求检测相关数据; (ⅱ)感知上下文,因为发现相关数据时还考虑了受监控机器的特定工作条件; (ⅲ)以操作员为中心,从而使操作员可以可视化意外的工作状态,而不会因所收集的数据量巨大和速度不堪重负。我们通过在智能工厂中实施异常检测服务来证明我们的方法的可行性,在该工厂中,操作员的注意力集中在与异常工作条件相对应的相关数据上,并且根据自适应采样在操作员的驾驶舱中正确显示了感兴趣的数据基于收集数据的相关性的技术。

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