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Complex batch processes quality prediction using non-Gaussian dissimilarity measure based just-in-time learning model

机译:基于非高斯差异度量的实时学习模型的复杂批处理质量预测

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In modern batch processes, soft sensors have been widely used for estimating quality variables. However, they do not show superior prediction performance due to the self-limitations of these methods and the unique characteristics of batch processes such as time-varying, nonlinearity, non-Gaussianity, multi-phases and batch-to-batch variations. To cope with these issues, a novel non-Gaussian dissimilarity measure based just-in-time learning (JITL) soft sensor is developed in this paper. Unlike the traditional JITL model which uses the distance-based dissimilarity measure for local modeling, the proposed method uses non-Gaussian dissimilarity measure to evaluate the statistical dependency of the extracted independent components to construct the local model, which can well capture the non-Gaussian features in the process data. Furthermore, a novel relevant samples search strategy is introduced into the JITL framework for local modeling, which not only searches the relevant samples along the direction of time axis but also along the direction of batch-to-batch. The proposed search strategy can guarantee the current query sample and the local modeling data belong to the same phase duration and have the smallest process trajectory variations. Hence, the proposed soft sensor is suitable for uneven-phase and batch-to-batch variations batch processes. Meanwhile, the proposed method can well cope with the changes in process characteristics as well as nonlinearity. The effectiveness of the proposed method is verified on the fed-batch Penicillin Fermentation process.
机译:在现代批处理过程中,软传感器已广泛用于估算质量变量。但是,由于这些方法的自我局限性以及批处理过程的独特特性(例如时变,非线性,非高斯性,多相和批间差异),它们没有显示出优异的预测性能。为了解决这些问题,本文开发了一种新颖的基于非高斯相近性度量的实时学习(JITL)软传感器。与传统的JITL模型使用基于距离的相异性度量进行局部建模不同,该方法使用非高斯相异性度量来评估提取的独立分量的统计相关性以构建局部模型,从而可以很好地捕获非高斯性过程数据中的特征。此外,一种新颖的相关样本搜索策略被引入到用于局部建模的JITL框架中,该策略不仅沿时间轴方向搜索相关样本,而且沿批次间的方向进行搜索。所提出的搜索策略可以保证当前的查询样本和本地建模数据属于相同的阶段持续时间,并且具有最小的过程轨迹变化。因此,所提出的软传感器适用于不均匀相和批次间变化的批次过程。同时,所提出的方法可以很好地应对过程特性以及非线性的变化。补料分批青霉素发酵工艺验证了该方法的有效性。

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