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Batch Process Monitoring with Gaussian Mixture Model in Neighborhood Preserving Embedding Subspace

机译:邻域保留嵌入子空间中基于高斯混合模型的批处理监控

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An improved GMM (Gaussian mixture model) based batch process monitoring approach is proposed in this article to handle batch processes with multiple operating phases. GMM is an effective tool to construct monitoring models by estimating separate probability density functions of the nominal batch data. However, the existing GMM based monitoring method has the following disadvantages: (1) GMM utilize all the observed variables for online monitoring, which are computationally intensive for complex processes with dozens of variables. (2) Different measure units of variables will impact the monitoring results significantly since there is no auto-scaling procedure. (3) The trajectory of faulty is likely to fall within normal areas of other Gaussian components, which will leads to obvious false negatives. To overcome these deficiencies, an NPE (neighborhood preserving embedding) algorithm is introduced to generate an enhanced monitoring subspace, which not only facilitates the computational burden of training and utilizing GMMs, but also improves sensitivity to incipient fault symptoms. The efficiency of the proposed method is verified through a simulated fed-batch penicillin fermentation process.
机译:本文提出了一种改进的基于GMM(高斯混合模型)的批处理过程监控方法,以处理具有多个操作阶段的批处理过程。 GMM是通过估计名义批次数据的单独概率密度函数来构建监控模型的有效工具。然而,现有的基于GMM的监视方法具有以下缺点:(1)GMM利用所有观察到的变量进行在线监视,这对于具有数十个变量的复杂过程而言是计算密集型的。 (2)由于没有自动缩放程序,因此变量的不同度量单位将对监视结果产生重大影响。 (3)断层的轨迹可能落在其他高斯分量的正常区域内,这将导致明显的假阴性。为了克服这些缺陷,引入了NPE(邻域保留嵌入)算法以生成增强的监视子空间,这不仅减轻了训练和利用GMM的计算负担,而且还提高了对初期故障症状的敏感性。通过模拟的分批补料青霉素发酵过程验证了该方法的有效性。

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