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Fault Diagnosis of Planetary Gear Carrier Packs: A Class Imbalance and Multiclass Classification Problem

机译:行星齿轮架包的故障诊断:类别不平衡和多标量分类问题

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Fault diagnosis plays a key role in monitoring manufactured products for the purpose of quality control. Among the several fault diagnosis approaches, knowledge-based fault diagnosis, which uses signals from sensors and machine learning algorithms instead of a priori information, is widely employed to diagnose the status of products. In this paper, we propose a knowledge-based procedure to establish a fault diagnosis model. The model is aimed to diagnose planetary gear carrier packs, which have many fault types and an unbalanced number of samples in the sample classes, using transmission error. In the procedure, the best feature subset that contains the most important features is selected using two different feature selection processes. Several ensemble algorithms are used during the model training process. The imbalance ratio between classes of samples is addressed. The number of weak learners is automatically determined by a genetic algorithm. Finally, the performance of the proposed procedure is validated by comparison with other models trained without applying the proposed procedure. We observed that it is important to incorporate the class imbalance technique in the training process as it reduces the misclassification of faulty products as normal ones. This reduction is important in production quality control.
机译:故障诊断在监控制造产品中发挥关键作用,以便为质量控制的目的进行。在若干故障诊断方法中,基于知识的故障诊断,它使用来自传感器和机器学习算法而不是先验信息的信号,而是广泛用于诊断产品的状态。在本文中,我们提出了一种基于知识的程序来建立故障诊断模型。该模型旨在诊断行星齿轮载体包,其使用传输错误在样本类中具有许多故障类型和不平衡数量的样本。在过程中,使用两个不同的特征选择过程选择包含最重要功能的最佳特征子集。在模型培训过程中使用了几种集合算法。寻址样本类之间的不平衡比率。弱学习人员的数量由遗传算法自动确定。最后,通过在不申请所提出的程序的情况下与其他培训的其他模型进行验证,验证了所提出的程序的性能。我们观察到,在培训过程中纳入类别的不平衡技术是重要的,因为它减少了常规产品的错误分类。这种减少在生产质量控制方面很重要。

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