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Mutual Information-Weighted Principle Components Identified From the Depth Features of Stacked Autoencoders and Original Variables for Oil Dry Point Soft Sensor

机译:从堆叠式自动编码器的深度特征和油干点软传感器的原始变量确定的互信息加权主成分

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摘要

In modern chemical process control, the application of data-driven soft sensor has become increasingly extensive. Feature extraction is an important step in soft sensor. A novel feature extraction and integration method based on stacked autoencoders (SAE) and mutual information (MI)-weighted principle component analysis (PCA) was proposed to solve the loss of information on shallow depth features and original variables in neural network models. First, an SAE model was trained to extract the features of the original variables with varying depths. Second, through an MI indicator, the original variables and features with strong dependency on the outputs were selected. Then, MI was used to assign varied weights to the features and original variables, and the PCA method was used to remove any possible redundancy between the original variables and features of varying depths to obtain the principle components. Finally, the principle components were used to construct a regressor, such as a neural network. The model was first tested using the Boston housing dataset as a benchmark and then applied to the soft sensor of a constant top oil dry point. The proposed model achieved optimal results in terms of the root mean squared error and r indicators in the experiments and was thus proved feasible and useful.
机译:在现代化学过程控制中,数据驱动的软传感器的应用变得越来越广泛。特征提取是软传感器中的重要步骤。提出了一种基于堆叠自动编码器(SAE)和互信息(MI)加权主成分分析(PCA)的特征提取和集成方法,以解决神经网络模型中浅层深度信息和原始变量信息丢失的问题。首先,训练了SAE模型以提取具有不同深度的原始变量的特征。其次,通过一个MI指标,选择了对输出有强烈依赖性的原始变量和特征。然后,使用MI为特征和原始变量分配不同的权重,并使用PCA方法删除原始变量和变化深度的特征之间的任何可能的冗余,以获得主成分。最后,主要成分用于构造回归器,例如神经网络。首先以Boston房屋数据集为基准测试该模型,然后将其应用于恒定顶油干点的软传感器。在实验中,该模型在均方根误差和r指标方面均取得了最佳结果,因此被证明是可行和有用的。

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