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A semi-supervised approach based on evolving clusters for discovering unknown abnormal condition patterns in gearboxes

机译:一种基于演化簇的半监督方法,用于发现齿轮箱中未知的异常条件模式

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摘要

Fault diagnosis plays a crucial role to maintain healthy conditions in rotating machinery. In real industrial applications, a Machine Learning based Classifier (ML-C) analyses data from a current machinery condition to detect abnormal behaviours. Usually, this is achieved through a previous training of the ML-C model, under supervised learning; however, for new machinery conditions, the classifier is not able to correctly identify these new condition. This paper proposes a framework to detect new patterns of abnormal conditions in gearboxes, that could be associated to new faults. The framework relies on an algorithm to build evolving models in simultaneous scenarios of classification and clustering. The design is inspired by the main principles of the K-means and the One Nearest Neighbour (1-NN) algorithms. A heuristic metric is defined to analyse the new discovered clusters; as a result, these new clusters can be labelled as new classes corresponding to new faulty patterns. Once a new pattern is identified, the associated data feeds a dedicated supervised classifier which is updated through a new training phase. The proposed framework is tested on data collected from a gearbox test bed under realistic conditions of faults. Experimental results show that the algorithm is able to discover new valuable knowledge than can be identified as new faulty classes.
机译:故障诊断起到在旋转机械中保持健康条件的至关重要作用。在实际工业应用中,基于机器的基于机器的分类器(ML-C)分析了来自当前机械状况的数据以检测异常行为。通常,这是通过先前的ML-C模型培训来实现的,在监督学习下;但是,对于新的机械状况,分类器无法正确识别这些新条件。本文提出了一种框架,用于检测齿轮箱中的异常条件的新模式,这可能与新故障相关联。该框架依赖于算法在分类和聚类的同时场景中构建不断变化的模型。该设计受K-Means的主要原理和一个最近邻(1-NN)算法的主题。定义了启发式指标以分析新发现的集群;因此,这些新集群可以标记为与新的错误模式对应的新类。一旦识别了新模式,相关联的数据就会通过新的训练阶段来更新的专用监督分类器。建议的框架在齿轮箱试验床上收集的数据,在现实的故障条件下。实验结果表明,该算法能够发现新的宝贵知识,而不是可以被识别为新的错误类。

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