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Variational Autoencoder Based Approach for Imbalance Process Fault Detection

机译:基于变化的AutiCencoder的不平衡过程故障检测方法

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Process fault detection has drawn growing attention from various industrial sectors. Efficient detection of process faults can help to avoid abnormal event progression and reduce productivity loss. However, in the complex process system, there are uncontrollable factors or variables which are not captured by sensors that lead to problems with the high imbalance ratio and the curse of dimensionality. It becomes more challenging for many traditional fault detection methods to diagnose the faults in the process or capture the process's hidden characteristics when the data distribution is imbalanced. Therefore, motivated by deep generative models, we proposed a variational-autoencoder (VAE) based approach which can efficiently boost the fault detection performance from imbalanced process data. The proposed approach is highly suitable for dimension reduction and feature extraction of abnormal data: fault samples with new characteristics can be generated. The prediction accuracy evaluated by state-of-the-art classification algorithms can be improved significantly. We have tested our proposed approach using one real dataset collected from a packaging production line of semiconductor integrated circuits (PoSIC), and one public dataset describes a sample of pular candidates collected during High Time Resolution Universe Survey (HTRU2). Our experimental results demonstrate that the proposed approach can be well applied to imbalance process data and significantly improve prediction accuracy.
机译:工艺故障检测从各种工业领域增长了越来越关注。有效检测过程故障可以有助于避免异常的事件进展并降低生产率损失。然而,在复杂的过程系统中,存在不受控制的因素或变量,这些因素或变量不会被传感器捕获,导致高不平衡比和维度的诅咒。对于许多传统故障检测方法来诊断过程中的故障或在数据分布不平衡时捕获过程的隐藏特性变得更具挑战性。因此,通过深度生成模型的动机,我们提出了一种基于自动化的方法(VAE)的方法,可以有效地提高了从不平衡的过程数据的故障检测性能。所提出的方法非常适合对异常数据的尺寸减少和特征提取:可以产生具有新特性的故障样本。通过最先进的分类算法评估的预测精度可以显着提高。我们已经测试了我们的建议方法,使用从半导体集成电路(Posic)的包装生产线(Posic)收集的一个真实数据集,一个公共数据集描述了在高时间分辨率宇宙调查(HTRU2)期间收集的小型候选的样本。我们的实验结果表明,所提出的方法可以很好地应用于不平衡过程数据并显着提高预测精度。

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