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Soft sensor model for dynamic processes based on multichannel convolutional neural network

机译:基于多通道卷积神经网络的动态过程软传感器模型

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摘要

Soft sensors have been extensively used to predict the difficult-to-measure key quality variables. The robust soft sensors should be able to sufficiently extract the local dynamic and nonlinear features of process data for accurate prediction. Convolutional neural network (CNN) has shown powerful performance in local feature representation that is suitable for soft sensor modeling. However, the process variables that have a distant topological structure usually cannot be covered within the same convolution kernel when applying CNN to process data, which results in the fact that local correlations of those distant process variables are not captured. Therefore, a new multichannel CNN (MCNN) is proposed for various local dynamic feature representation. As a key step, a multichannel 3-D tensor is augmented for each sample as the input to the MCNN model. For the 3-D tensor, each channel has specific local correlations of certain variables, while the variables have different neighborhood relationships for different channels, which refer the various local correlations of different combination variables. Combining with the time axis of each channel, the various local dynamic correlations of different variable combinations can be learnt using MCNN regardless of their distance. The feasibility and effectiveness of MCNN-based soft sensor are demonstrated on the industrial debutanizer column and hydrocracking process.
机译:软传感器已广泛用于预测难以测量的关键质量变量。强大的软传感器应该能够充分提取过程数据的局部动态和非线性特征以获得精确的预测。卷积神经网络(CNN)在适用于软传感器建模的本地特征表示中显示出强大的性能。然而,当将CNN应用于处理数据时,通常不能在同一卷积内核内覆盖具有遥远拓扑结构的过程变量,这导致不捕获这些远程处理变量的本地相关性的事实。因此,提出了一种新的多声道CNN(MCNN)用于各种局部动态特征表示。作为一个关键步骤,为每个样本增加多通道3-D张量作为MCNN模型的输入。对于3-D张量,每个通道具有某些变量的特定本地相关性,而变量对不同的信道具有不同的邻域关系,这引用了不同组合变量的各种局部相关性。与每个信道的时轴组合,可以使用MCNN学习不同变量组合的各种局部动态相关性,无论其距离如何。基于MCNN的软传感器的可行性和有效性在工业脱丹化器柱和加氢裂化过程中证明。

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