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Enhanced batch process monitoring and quality prediction using multi-phase dynamic PLS

机译:使用多阶段动态PLS的增强的批处理过程监控和质量预测

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In industrial manufacturing, most batch processes are multi-phase and uneven-length batch processes in nature, phase-based approaches are intuitively well suited for batch process monitoring and quality prediction. In this paper, a new strategy is proposed using multi-phase dynamic partial least squares (DPLS) for batch processes monitoring and quality prediction. Firstly, batch process data was automatically divided into several phases using Gaussian mixture model (GMM) clustering arithmetic. Then run¯to¯run variations among different instances of a phase are synchronized by using dynamic time warping (DTW). Finally, multi-phase DPLS model is built between each phase and the quality variables. The proposed method easily handles the following problems: (1) static single model; (2) process and its model do not match; (3) linear method may not be efficient in compressing and extracting dynamic nonlinear process data. The idea and algorithm are illustrated with respect to the typical data collected from a benchmark simulation of fed-batch penicillin fermentation production. The simulation results demonstrate the effectiveness of the proposed method in comparison to original DPLS.
机译:在工业制造中,大多数批处理过程本质上都是多阶段且长度不均匀的批处理过程,基于阶段的方法直观地非常适合于批处理过程监视和质量预测。在本文中,提出了一种使用多阶段动态局部最小二乘(DPLS)进行批处理过程监控和质量预测的新策略。首先,使用高斯混合模型(GMM)聚类算法将批处理过程数据自动分为几个阶段。然后,通过使用动态时间规整(DTW)来同步不同阶段实例之间的运行间变化。最后,在每个阶段和质量变量之间建立了多阶段DPLS模型。所提出的方法容易解决以下问题:(1)静态单一模型; (2)过程及其模型不匹配; (3)线性方法可能无法有效地压缩和提取动态非线性过程数据。针对从补料分批青霉素发酵生产的基准模拟中收集的典型数据,说明了这种思想和算法。仿真结果证明了该方法与原始DPLS相比的有效性。

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