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Dynamic historical information incorporated attention deep learning model for industrial soft sensor modeling
Affiliation:1. School of Automation, Central South University, Changsha 410083, Hunan, PR China;2. School of Engineering, Huzhou University, Huzhou 313000, Zhejiang, PR China;1. College of Information Science & Technology, Beijing University of Chemical Technology, Beijing, China;2. Engineering Research Center of Intelligent PSE, Ministry of Education in China, Beijing, China;3. School of Artificial Intelligence, Beijing Institute of Economics and Management, Beijing, China
Abstract:Due to the limitations of sampling conditions and sampling techniques in many real industrial processes, the process data under different sampling conditions subject to different sampling frequencies, which leads to irregular interval sampling characteristics of the entire process data. The dynamic historical data information reflecting the production status under irregular sampling frequency has an important influence on the performance of data feature extraction. However, the existing soft sensor modeling methods based on deep learning do not consider introducing dynamic historical information into the feature extraction process. To combat this issue, a novel attention-based dynamic stacked autoencoder networks (AD-SAE) for soft sensor modeling is proposed in this paper. First, the sliding window technology and attention mechanism based on position coding are introduced to select dynamic historical samples and calculate the contribution of different historical samples to the current sample, respectively. Then, AD-SAE combines obtained historical sample information and current sample information as the input of the network for deep feature extraction and industrial soft sensor modeling. The experimental results on the actual hydrocracking process data set show that the proposed method has better performance than traditional methods.
Keywords:Soft sensor  Deep learning  Stacked autoencoder  Attention mechanism  AD-SAE
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