Fault Classification of Industrial Processes based on Generalized Zero-Shot Learning

Jiacheng Huang, Zuxin Li, Lingjian Ye, Zhe Zhou
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引用次数: 7

Abstract

In the process industry, the supervised learning methods cannot classify the unseen faults (i.e., those faults without training samples to participate in the establishment of the model). Although Zero-Shot Learning (ZSL) has been proposed and successfully solved the problem of unseen fault classification, it failed to classify the seen faults (i.e., those faults participate in the establishment of the model). To overcome their shortcomings, in this paper, a generalized Zero-Shot Learning (GZSL) method is proposed to classify all the faults including the seen and the unseen faults by only using the samples of the seen fault and the human-defined fault semantic attribute description information. We use a gating mechanism based on Conditional Variational Autoencoder (CVAE) and a binary classifier to distinguish the online sample into the classes of the seen and unseen faults. Thus, the GZSL problem can be transformed into a supervised fault classification problem and a ZSL fault classification problem. Firstly, we train a CVAE to generate pseudo unseen fault samples and seen fault samples. Secondly, a binary classifier is trained to classify the online samples into seen and unseen categories. Finally, the specific category of the online samples will be determined by the supervised method and ZSL method, respectively. We validate our approach on the Tennessee-Eastman benchmark process.
基于广义零采样学习的工业过程故障分类
在过程工业中,监督学习方法不能对看不见的故障(即没有训练样本参与模型建立的故障)进行分类。虽然Zero-Shot Learning (ZSL)已经被提出并成功地解决了看不见的故障分类问题,但它不能对看到的故障进行分类(即这些故障参与了模型的建立)。针对这两种方法的不足,本文提出了一种广义零次学习(GZSL)方法,该方法仅利用已见故障的样本和自定义的故障语义属性描述信息对所有故障进行分类,包括已见故障和未见故障。我们使用了一种基于条件变分自编码器(CVAE)的门控机制和一种二值分类器来将在线样本区分为可见故障和未见故障。因此,GZSL问题可以转化为监督故障分类问题和ZSL故障分类问题。首先,训练CVAE生成伪未见故障样本和已见故障样本;其次,训练二值分类器将在线样本分为可见类和未见类。最后,在线样本的具体类别将分别由监督法和ZSL法确定。我们在Tennessee-Eastman基准过程中验证了我们的方法。
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