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Anomaly detection and critical attributes identification for products with multiple operating conditions based on isolation forest

机译:基于隔离林的多运行条件的产品的异常检测和关键属性识别

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摘要

Performance analysis of the existing mechanical products is critical to identifying design defects and improving product reliability. With the advances of information technologies, product operating data collected through continuous condition monitoring (CM) serve as main sources for analysis of performance and detection of anomaly. Most of the existing anomaly detection methods, however, are not effective when CM data are very high dimensional, leading to poor quality of assessment results. Besides, the effects of multiple operating conditions on anomaly detection are seldom considered in these existing methods. To solve these problems, an integrated approach for anomaly detection and critical behavioral attributes identification based on CM data is developed in this research. Gaussian mixed model GMM) is employed to develop a method for clustering of operating conditions. Isolation forest (iForest) method is used to detect anomaly instances, and further to identify the critical attributes related to product performance degradation. The effectiveness of the developed approach is demonstrated by an application with collected operating data of a wind turbine.
机译:现有机械产品的性能分析对于识别设计缺陷并提高产品可靠性至关重要。随着信息技术的进步,通过连续状态监测(CM)收集的产品操作数据用作分析性能和异常检测的主要来源。然而,当CM数据非常高时,大多数现有的异常检测方法都没有有效,导致评估结果差。此外,在这些现有方法中,很少考虑多种操作条件对异常检测的影响。为了解决这些问题,在本研究中开发了基于CM数据的异常检测和严重行为属性识别的综合方法。高斯混合模型GMM)用于开发一种用于聚类操作条件的方法。隔离林(IFOrest)方法用于检测异常实例,并进一步识别与产品性能下降相关的关键属性。通过用于风力涡轮机的收集的操作数据的应用,通过应用程序的应用来证明所开发方法的有效性。

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