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Deep learning with neighborhood preserving embedding regularization and its application for soft sensor in an industrial hydrocracking process

机译:深度学习与邻里保留嵌入正规化及其在工业加氢裂化过程中的软传感器应用

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摘要

Recently, deep learning has attracted increasing attention for soft sensor applications in industrial processes. Hierarchical features can be learned from massive process data by deep learning, which is the key step for quality variable prediction. However, few deep learning algorithms consider the neighborhood structure of data samples for feature extraction in industrial processes. In this paper, a novel stacked neighborhood preserving autoencoder (S-NPAE) is proposed to extract hierarchical neighborhood-preserving features. As for each NPAE, a novel loss function is proposed to reconstruct the input data and preserve the neighborhood structure of the input data simultaneously. By minimizing this loss function, NPAE can efficiently extract the neighborhood-preserved features from its input data. Then, the deep S-NPAE network is constructed by stacking multiple NPAEs in a hierarchical way. Finally, the extracted features can be used for accurate quality prediction in soft sensor modeling. The experimental results on an industrial hydrocracking process demonstrate the effectiveness of the proposed method when compared with other commonly used methods.
机译:近年来,深度学习在工业过程中的软测量应用引起了越来越多的关注。通过深度学习可以从大量的过程数据中学习层次特征,这是质量变量预测的关键步骤。然而,在工业过程中,很少有深度学习算法考虑数据样本的邻域结构来进行特征提取。本文提出了一种新的叠层邻域保持自动编码器(S-NPAE),用于提取分层邻域保持特征。对于每个NPAE,提出了一种新的损失函数来重建输入数据,同时保留输入数据的邻域结构。通过最小化该损失函数,NPAE可以有效地从输入数据中提取邻域保留特征。然后,通过分层叠加多个NPAE来构建深度S-NPAE网络。最后,提取的特征可以用于软测量建模中的准确质量预测。工业加氢裂化过程的实验结果表明,与其他常用方法相比,该方法是有效的。

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