Fault diagnosis-based SDG transfer for zero-sample fault symptom

Mengqin Yu, Y. Lee, Junghui Chen
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Abstract

The traditional fault diagnosis models cannot achieve good fault diagnosis accuracy when a new unseen fault class appears in the test set, but there is no training sample of this fault in the training set. Therefore, studying the unseen cause-effect problem of fault symptoms is extremely challenging. As various faults often occur in a chemical plant, it is necessary to perform fault causal-effect diagnosis to find the root cause of the fault. However, only some fault causal-effect data are always available to construct a reliable causal-effect diagnosis model. Another worst thing is that measurement noise often contaminates the collected data. The above problems are very common in industrial operations. However, past-developed data-driven approaches rarely include causal-effect relationships between variables, particularly in the zero-shot of causal-effect relationships. This would cause incorrect inference of seen faults and make it impossible to predict unseen faults. This study effectively combines zero-shot learning, conditional variational autoencoders (CVAE), and the signed directed graph (SDG) to solve the above problems. Specifically, the learning approach that determines the cause-effect of all the faults using SDG with physics knowledge to obtain the fault description. SDG is used to determine the attributes of the seen and unseen faults. Instead of the seen fault label space, attributes can easily create an unseen fault space from a seen fault space. After having the corresponding attribute spaces of the failure cause, some failure causes are learned in advance by a CVAE model from the available fault data. The advantage of the CVAE is that process variables are mapped into the latent space for dimension reduction and measurement noise deduction; the latent data can more accurately represent the actual behavior of the process. Then, with the extended space spanned by unseen attributes, the migration capabilities can predict the unseen causes of failure and infer the causes of the unseen failures. Finally, the feasibility of the proposed method is verified by the data collected from chemical reaction processes.
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基于故障诊断的零样本故障症状 SDG 转移
当测试集中出现新的未知故障类别,而训练集中又没有该故障的训练样本时,传统的故障诊断模型无法达到很好的故障诊断精度。因此,研究故障症状的未知因果问题极具挑战性。由于化工厂经常出现各种故障,因此有必要进行故障因果诊断,找出故障的根本原因。然而,要构建可靠的因果诊断模型,总是只能获得部分故障因果数据。另一个最糟糕的问题是,测量噪声经常会污染采集到的数据。上述问题在工业运行中非常普遍。然而,过去开发的数据驱动方法很少包含变量之间的因果关系,特别是在因果关系的零点扫描中。这将导致对已见故障的错误推断,从而无法预测未见故障。本研究有效地结合了零点学习、条件变异自动编码器(CVAE)和签名有向图(SDG)来解决上述问题。具体来说,该学习方法利用 SDG 与物理知识确定所有故障的因果关系,从而获得故障描述。SDG 用于确定已见故障和未见故障的属性。属性可以轻松地从已见故障空间创建未见故障空间,而不是已见故障标签空间。有了故障原因的相应属性空间后,一些故障原因可通过 CVAE 模型从可用的故障数据中提前学习到。CVAE 的优势在于将过程变量映射到潜空间,以减少维度和测量噪声;潜数据可以更准确地代表过程的实际行为。然后,利用未见属性所跨越的扩展空间,迁移能力可以预测未见的故障原因,并推断未见故障的原因。最后,从化学反应过程中收集的数据验证了所提方法的可行性。
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来源期刊
International Journal of Advances in Intelligent Informatics
International Journal of Advances in Intelligent Informatics Computer Science-Computer Vision and Pattern Recognition
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3.00
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