论文标题
故障面:基于深卷积生成的对抗网络(DCGAN)的弹丸失效检测方法
FaultFace: Deep Convolutional Generative Adversarial Network (DCGAN) based Ball-Bearing Failure Detection Method
论文作者
论文摘要
由于意外的故障事件,该行业采用了失败检测来改善系统性能并降低成本。因此,对于设计自动故障检测系统,需要一个良好的系统数据集。但是,工业过程数据集是不平衡的,并且由于这些事件的独特性以及运行系统的高成本而仅包含有关故障行为的信息,只是为了获取有关不希望行为的信息。因此,对自动故障检测方法进行正确的培训和验证是具有挑战性的。本文提出了一种使用深度学习技术来创建平衡数据集的旋转轴的弹丸关节故障检测的方法,用于弹丸关节的故障检测。断层方法使用振动信号的2D表示,该振动信号由时频转换技术获得。从获得的面部流动器中,采用了深层卷积生成的对抗网络来产生名义和失败行为的新面孔,以获得平衡的数据集。卷积神经网络接受了使用平衡数据集的故障检测培训。将故障方法与其他深度学习技术进行了比较,以评估其在不平衡数据集中检测故障检测的性能。获得的结果表明,故障方法对于不平衡数据集的故障检测具有良好的性能。
Failure detection is employed in the industry to improve system performance and reduce costs due to unexpected malfunction events. So, a good dataset of the system is desirable for designing an automated failure detection system. However, industrial process datasets are unbalanced and contain little information about failure behavior due to the uniqueness of these events and the high cost for running the system just to get information about the undesired behaviors. For this reason, performing correct training and validation of automated failure detection methods is challenging. This paper proposes a methodology called FaultFace for failure detection on Ball-Bearing joints for rotational shafts using deep learning techniques to create balanced datasets. The FaultFace methodology uses 2D representations of vibration signals denominated faceportraits obtained by time-frequency transformation techniques. From the obtained faceportraits, a Deep Convolutional Generative Adversarial Network is employed to produce new faceportraits of the nominal and failure behaviors to get a balanced dataset. A Convolutional Neural Network is trained for fault detection employing the balanced dataset. The FaultFace methodology is compared with other deep learning techniques to evaluate its performance in for fault detection with unbalanced datasets. Obtained results show that FaultFace methodology has a good performance for failure detection for unbalanced datasets.