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Framework for Discovering Unknown Abnormal Condition Patterns in Gearboxes Using a Semi-supervised Approach

机译:使用半监督方法发现变速箱中未知异常状态模式的框架

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摘要

Fault diagnosis plays a crucial role to maintain healthy conditions in rotating machinery. This paper proposes a framework to detect new patterns of abnormal conditions in gearboxes, that would be associated to new faults. This is achieved through a Hybrid Heuristic Algorithm for Evolving Models in scenarios of Classification and Clustering (HHA-EMCC), which is a machine learning algorithm that can be adapted to solve problems related to classification and clustering both combined. The design aims at creating clusters and classes inspired by the main principles of the nearest neighbour (1-NN) strategy and K-means. HHA-EMCC has the particularity of detecting new clusters after being trained, this characteristic defines some guidelines that determine whether a cluster represents new knowledge or not. The framework is able to discover abnormal conditions from unlabelled data through cluster constructions. This analysis can lead to labelling these clusters as new classes. Once a new pattern is identified, the associated data feeds the current classifier for a new training phase. The proposed framework is tested on a fault dataset for gearboxes and experimental results show that valuable new knowledge is obtained.
机译:故障诊断对于维持旋转机械的健康状况至关重要。本文提出了一种框架,用于检测变速箱中与新故障相关的异常状态的新模式。这是通过在分类和聚类情况下用于模型演化的混合启发式算法(HHA-EMCC)实现的,该算法是一种机器学习算法,可以解决与分类和聚类相关的问题。该设计旨在根据最近邻(1-NN)策略和K均值的主要原理创建聚类和类。 HHA-EMCC具有在训练后检测新集群的特殊性,此特征定义了一些准则,这些准则确定集群是否代表新知识。该框架能够通过集群构造从未标记的数据中发现异常情况。这种分析可能导致将这些群集标记为新类。一旦确定了新的模式,相关的数据就会为当前的分类器提供新的训练阶段。在齿轮箱故障数据集上对提出的框架进行了测试,实验结果表明获得了有价值的新知识。

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