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Weak fault monitoring method for batch process based on multi-model SDKPCA

机译:基于多模型SDKPCA的批量过程弱故障监测方法

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摘要

In industrial manufacturing, most batch processes have the dynamic and nonlinear features in nature. To ensure both quality consistency of the manufactured products and safe operation of this kind of batch process, a number of multivariate statistical analyses, including multiway principal component analysis (MPCA), batch dynamic kernel principal component analysis (BDKPCA), have been developed in recent years. However, these methods can't effectively detect the weak faults due to large fluctuations in the initial conditions, because the weak faults are submerged to the fluctuations in the poor initial conditions. In order to improve the performance of the weak fault detection, a new nonlinear dynamic batch process monitoring method, called multi-model single dynamic kernel principal component analysis (M-SDKPCA), is proposed in this paper. The multi-model methodology is based on BDKPCA. The method firstly integrates kernel PCA (KPCA) and auto-regressive moving average exogenous (ARMAX) time series model for each batch data at each stage to build SDKPCA. Then hierarchical clusters are obtained through load matrix similarity among SDKPCA models. At different stages, multiple model structures are constructed along with the variation of the cluster number. The monitoring method proposed in this paper was applied to fault detection for benchmark of fed-batch penicillin production. In both off-line analysis and on-line batch monitoring, the proposed approach shows better performance than MKPCA and BDKPCA.
机译:在工业制造中,大多数批处理过程本质上都具有动态和非线性特征。为了确保制成品的质量一致性和这种批处理过程的安全运行,最近已经开发了许多多元统计分析,包括多路主成分分析(MPCA),批处理动态内核主成分分析(BDKPCA)。年份。但是,这些方法不能有效地检测出由于初始条件下的大波动而引起的弱故障,因为弱故障被淹没在恶劣的初始条件下的波动中。为了提高弱故障检测的性能,提出了一种新的非线性动态批处理过程监测方法,即多模型单动态核主成分分析法(M-SDKPCA)。多模型方法基于BDKPCA。该方法首先在每个阶段针对每个批处理数据集成内核PCA(KPCA)和自回归移动平均外生(ARMAX)时间序列模型,以构建SDKPCA。然后通过SDKPCA模型之间的负载矩阵相似性获得层次聚类。在不同阶段,随着簇数的变化,构建了多个模型结构。本文提出的监测方法被用于故障检测中,以补料分批生产青霉素为基准。在离线分析和在线批次监视中,所提出的方法都比MKPCA和BDKPCA表现出更好的性能。

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