基于自动编码器的全局动态特征和相邻隐层增强信息,用于工业过程软传感器应用

Xiaoping Guo, Sulei Pan, Yuan Li
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引用次数: 0

摘要

在堆叠式自动编码器的软传感器模型中,缺乏对过程变量的时空相关性和相邻隐藏层相关性的考虑。针对这一问题,提出了一种新的全局动态相邻层信息增强自动编码器(GD-ALIEAE)方法,以改善较差的预测性能。在 GD-ALIEAE 模型中应用了门控递归单元(GRU)和均匀流形逼近与投影(UMAP),通过并行计算获得过程变量的时间和空间信息的全局动态特征。提出了一种相邻层信息相关算法,以避免堆叠过程中隐藏层信息的丢失。该算法通过非线性映射增强低层的特征,将低层及其相邻层作为输入。然后将输入输入到多头关注机制,以获得包含相邻层相关性的特征。最后,通过全连接层建立预测模型。通过对硫磺回收装置和火力发电厂两个工业案例的仿真实验,并与堆叠自动编码器(SAE)、堆叠同构自动编码器(SIAE)和目标相关堆叠自动编码器(TSAE)模型进行比较,验证了所提方法的有效性。
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Global dynamic features and information of adjacent hidden layer enhancement based on autoencoder for industrial process soft sensor application
There is a lack of consideration of temporal and spatial correlation in the process variables and adjacent hidden layers correlation in the soft sensor model of stacked autoencoders. To address the issue, a novel global dynamic adjacent layer information enhancement auto encoder (GD‐ALIEAE) method is proposed to improve the poor prediction performance. The gated recurrent unit (GRU) and uniform manifold approximation and projection (UMAP) are applied to the GD‐ALIEAE model for obtaining global dynamic features of the temporal and spatial information of process variables by parallel computation. An adjacent layer information correlation algorithm is proposed to avoid the loss of hidden layers information during the stacking process. The algorithm enhances the features of the low layer through nonlinear mapping, combining the low layer and its adjacent layer as input. The input then is fed to the multi‐head attention mechanism to obtain features that contain adjacent layer correlation. Finally, a prediction model is established through a fully connected layer. Through simulation experiments on two industrial cases of sulphur recovery unit and thermal power plant, and compared with models of stacked autoencoder (SAE), stacked isomorphic autoencoder (SIAE), and target‐related stacked autoencoder (TSAE), the effectiveness of the proposed method was verified.
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