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Ensemble deep kernel learning with application to quality prediction in industrial polymerization processes

机译:合奏深入学习应用于工业聚合过程中的质量预测

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摘要

For predicting the melt index (MI) in industrial polymerization processes, traditional data-driven empirical models do not utilize the information in a large amount of the unlabeled data. To overcome this data-rich-but information-poor (DRIP) problem in polymer industries, an ensemble deep kernel learning (EDKL) model is proposed. With an unsupervised learning stage, the deep brief network is adopted to extract useful information from the available data. Then, a kernel learning regression model is formulated to obtain a nonlinear relationship between the extracted features and MI values. Moreover, a bagging-based ensemble strategy is integrated into the deep kernel learning method to enhance the reliability of the prediction model. The industrial MI prediction results demonstrate the advantages of the developed EDKL model as compared with conventional supervised soft sensors (e.g., partial least squares and support vector regression) that only use the limited labeled data.
机译:为了预测工业聚合过程中的熔体指数(MI),传统的数据驱动的经验模型不利用大量未标记数据的信息。 为了克服聚合物行业的富含信息匮乏(DRIP)问题,提出了一个集成的深核学习(EDKL)模型。 通过无监督的学习阶段,采用深度简短的网络从可用数据中提取有用信息。 然后,配制内核学习回归模型以获得提取的特征和MI值之间的非线性关系。 此外,基于袋装的集合策略集成到深核学习方法中,以提高预测模型的可靠性。 与传统的监督软传感器相比,工业MI预测结果表明,与传统的监督软传感器(例如,偏最小二乘和支持向量回归)相比,仅使用Limber Labened数据的传统监督软传感器(例如,偏最小二乘和支持向量回归)。

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