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首页> 外文期刊>The Canadian Journal of Chemical Engineering >Simultaneous fault detection and isolation using semi-supervised kernel nonnegative matrix factorization
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Simultaneous fault detection and isolation using semi-supervised kernel nonnegative matrix factorization

机译:使用半监控内核非负矩阵分解的同时故障检测和隔离

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摘要

This paper presents a monitoring approach for nonlinear processes based on a new semi-supervised kernel nonnegative matrix factorization (SKNMF). Different from the existing nonnegative matrix factorization (NMF) and kernel nonnegative matrix factorization (KNMF), SKNMF is a semi-supervised matrix factorization algorithm, which takes advantages of both labelled and unlabelled samples to improve algorithm performance. Labelled samples refer to the samples whose memberships are already known, while unlabelled samples are a set of samples whose memberships are unknown. In fact, both NMF and KNMF are unsupervised algorithms, and they cannot make full use of labelled samples to improve algorithm performance. More importantly, we explain the reasons why labelled samples can improve algorithm performance even if the amount of labelled samples is small. Last but not least, SKNMF induces a simultaneous fault detection and isolation scheme for online processes monitoring. Case studies of a numerical example and a penicillin fermentation process (PFP) demonstrate that the proposed process monitoring approaches outperform the existing process monitoring approaches.
机译:本文介绍了基于新的半监督内核非负矩阵分解(SKNMF)的非线性过程的监测方法。与现有的非负矩阵分解(NMF)和内核非负矩阵分解(KNMF)不同,SKNMF是半监督矩阵分子分子算法,其具有标记和未标记的样本的优势以提高算法性能。标记的样本是指其成员资格已知的样本,而未标记的样本是一组样本,其成员资格未知。实际上,NMF和KNMF都是无监督的算法,它们无法充分利用标记的样本来提高算法性能。更重要的是,我们解释了标记样本可以提高算法性能的原因,即使标记样本的量很小。最后但并非最不重要的是,SKNMF引起了在线进程监控的同时故障检测和隔离方案。对数值例子和青霉素发酵过程(PFP)的情况研究表明,所提出的过程监测方法优于现有的过程监测方法。

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