论文标题
过采样的对抗网络,用于级别失败的故障诊断
Oversampling Adversarial Network for Class-Imbalanced Fault Diagnosis
论文作者
论文摘要
从工业机器收集的数据通常是不平衡的,这对学习算法产生了负面影响。但是,对于混合的数据类型或类之间的重叠时,此问题变得更具挑战性。类不平衡问题需要一个可靠的学习系统,该系统可以及时预测和分类数据。我们提出了一个新的对抗网络,用于同时分类和故障检测。特别是,我们通过从提出的数据分布的混合物中生成错误样本来恢复不平衡数据集中的平衡。我们设计了模型的判别器来处理生成的故障样品,以防止异常值和过度拟合。我们从经验上证明了这一点; (i)经过生成器训练的鉴别器,从正常和错误的数据分布的混合物中生成样品,这些样品可以被视为故障检测器; (ii),产生的故障样品的质量优于其他合成重采样技术。实验结果表明,与几个评估指标的其他故障诊断方法相比,提出的模型表现良好。特别是,生成对抗网络(GAN)和特征匹配函数的合并有效地识别样本错误。
The collected data from industrial machines are often imbalanced, which poses a negative effect on learning algorithms. However, this problem becomes more challenging for a mixed type of data or while there is overlapping between classes. Class-imbalance problem requires a robust learning system which can timely predict and classify the data. We propose a new adversarial network for simultaneous classification and fault detection. In particular, we restore the balance in the imbalanced dataset by generating faulty samples from the proposed mixture of data distribution. We designed the discriminator of our model to handle the generated faulty samples to prevent outlier and overfitting. We empirically demonstrate that; (i) the discriminator trained with a generator to generates samples from a mixture of normal and faulty data distribution which can be considered as a fault detector; (ii), the quality of the generated faulty samples outperforms the other synthetic resampling techniques. Experimental results show that the proposed model performs well when comparing to other fault diagnosis methods across several evaluation metrics; in particular, coalescing of generative adversarial network (GAN) and feature matching function is effective at recognizing faulty samples.