Stacked dynamic target regularization enhanced autoencoder for soft sensor in industrial processes

Xiaoping Guo, Xiaofeng Zhao, Yuan Li
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Abstract

Stacked autoencoders (SAEs) have great potential in developing soft sensors due to their excellent feature extraction capabilities. However, the pre‐training stage of SAE is unsupervised and some important information related to target variables may be discarded. Meanwhile, as the depth of the network increases, reconstruction errors continue to accumulate, resulting in incomplete feature representations of the original input. In addition, the dynamic nature of the data affects the predictive results of the model. To address these issues, the stacked dynamic target regularization enhanced autoencoder (SDTR‐EAE) method is proposed, which adds the DTR and the original input information layer by layer to enhance the feature extraction. To adapt to the dynamic changes in data and extract target‐related features, entropy weight grey relational analysis (EW‐GRA) is used as the DTR term to constrain the weight matrix and suppress irrelevant features. To reduce the accumulation of information loss during the reconstruction, an information enhancement layer is introduced, where the original inputs and the information of the hidden layers of previous DTR‐EAE units are added to the follow‐up DTR‐EAE unit. Finally, in the regression process, the DTR term is used again to fully utilize depth features for quality prediction and prevent overfitting. Experimental verifications using the debutanizer column and thermal power plant are conducted to validate the effectiveness of the proposed modelling method.
用于工业流程中软传感器的堆叠动态目标正则化增强型自动编码器
堆叠自编码器(SAE)具有出色的特征提取能力,因此在开发软传感器方面具有巨大潜力。然而,SAE 的预训练阶段是无监督的,可能会丢弃一些与目标变量相关的重要信息。同时,随着网络深度的增加,重构误差会不断累积,导致原始输入的特征表征不完整。此外,数据的动态特性也会影响模型的预测结果。为了解决这些问题,我们提出了堆叠动态目标正则化增强自动编码器(SDTR-EAE)方法,该方法逐层添加 DTR 和原始输入信息,以增强特征提取。为了适应数据的动态变化并提取与目标相关的特征,使用熵权灰色关系分析(EW-GRA)作为 DTR 项来约束权重矩阵并抑制无关特征。为了减少重构过程中信息损失的积累,引入了信息增强层,将前一个 DTR-EAE 单元的原始输入和隐藏层的信息添加到后续的 DTR-EAE 单元中。最后,在回归过程中,再次使用 DTR 项,以充分利用深度特征进行质量预测,并防止过拟合。我们利用脱膻塔和热电厂进行了实验验证,以验证所提建模方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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