Just-in-time latent autoregressive residual generation for dynamic process monitoring

IF 2.3 4区 化学 Q1 SOCIAL WORK Journal of Chemometrics Pub Date : 2023-10-25 DOI:10.1002/cem.3523
Shi Hu, Kuan Chang
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Abstract

With a goal of timely and adaptively exploiting the inconsistency inherited in the monitored samples of current interest, a novel dynamic process monitoring method based on just-in-time latent autoregressive residual generation (JITLAR2G) model is proposed. Different from the mainstream dynamic modeling and monitoring methods which usually train a signature generating mechanism and then repeatedly apply it for online monitored samples, the proposed JITLAR2G-based approach provides a JITLAR2G model for the online monitored samples after data augmentation, so that the corresponding inconsistency within the given consecutive samples could be timely and adaptively uncovered. Instead of expressing the time-serial relationship that generally accepted by the normal samples in the given dataset, solving the objective function designed for JITLAR2G in a just-in-time manner can adaptively and correspondingly seek but only one projecting vector as well as coefficient vector to generate residual, which points to the potential inconsistency inherited in the monitored samples, for the sole purpose of fault detection. As demonstrated through comparisons, the proposed JITLAR2G model can consistently guarantee its effectiveness, in terms of reducing both false alarm rate and missed alarm rate, for dynamic process monitoring, the salient performance achieved by the proposed JITLAR2G-based method in contrast to the counterparts can be always confirmed.

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用于动态过程监控的即时潜在自回归残差生成
为了及时、自适应地利用当前关注的监测样本中继承的不一致性,提出了一种基于适时潜自回归残差生成(JITLAR2G)模型的新型动态过程监测方法。不同于主流的动态建模和监测方法通常是先训练一个特征生成机制,然后将其重复应用于在线监测样本,所提出的基于 JITLAR2G 的方法为数据增强后的在线监测样本提供了一个 JITLAR2G 模型,从而可以及时、自适应地发现给定连续样本中相应的不一致性。JITLAR2G 所设计的目标函数不是表达给定数据集中正常样本普遍接受的时间序列关系,而是以适时的方式自适应地相应寻找一个投影向量和系数向量来生成残差,从而指出监测样本中潜在的不一致性,以达到故障检测的唯一目的。通过比较证明,所提出的 JITLAR2G 模型在降低误报率和漏报率方面始终能保证其在动态过程监控中的有效性,基于 JITLAR2G 的方法与同类方法相比所取得的突出性能始终是可以确认的。
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来源期刊
Journal of Chemometrics
Journal of Chemometrics 化学-分析化学
CiteScore
5.20
自引率
8.30%
发文量
78
审稿时长
2 months
期刊介绍: The Journal of Chemometrics is devoted to the rapid publication of original scientific papers, reviews and short communications on fundamental and applied aspects of chemometrics. It also provides a forum for the exchange of information on meetings and other news relevant to the growing community of scientists who are interested in chemometrics and its applications. Short, critical review papers are a particularly important feature of the journal, in view of the multidisciplinary readership at which it is aimed.
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