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Nonlinear Dynamic Soft Sensor Modeling With Supervised Long Short-Term Memory Network

机译:具有监督长短期内存网络的非线性动态软传感器建模

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摘要

Soft sensor has been extensively utilized in industrial processes for prediction of key quality variables. To build an accurate virtual sensor model, it is very significant to model the dynamic and nonlinear behaviors of process sequential data properly. Recently, a long short-term memory (LSTM) network has shown great modeling ability on various time series, in which basic LSTM units can handle data nonlinearities and dynamics with a dynamic latent variable structure. However, the hidden variables in the basic LSTM unit mainly focus on describing the dynamics of input variables, which lack representation for the quality data. In this paper, a supervised LSTM (SLSTM) network is proposed to learn quality-relevant hidden dynamics for soft sensor application, which is composed of basic SLSTM unit at each sampling instant. In the basic SLSTM unit, the quality and input variables are simultaneously utilized to learn the dynamic hidden states, which are more relevant and useful for quality prediction. The effectiveness of the proposed SLSTM network is demonstrated on a penicillin fermentation process and an industrial debutanizer column.
机译:软传感器已广泛用于工业过程中,用于预测关键质量变量。要构建准确的虚拟传感器模型,可以正确模拟流程顺序数据的动态和非线性行为非常重要。最近,长期内记忆(LSTM)网络在各种时间序列上显示了良好的建模能力,其中基本的LSTM单元可以用动态潜在的变量结构处理数据非线性和动态。但是,基本LSTM单元中的隐藏变量主要集中在描述输入变量的动态,这缺乏质量数据的表示。在本文中,提出了一种监督的LSTM(SLSTM)网络来学习软传感器应用的质量相关的隐藏动态,其由每个采样瞬间的基本SLSTM单元组成。在基本的SLSTM单元中,质量和输入变量同时利用来学习动态隐藏状态,这些状态更加相关,可用于质量预测。所提出的SLSTM网络的有效性在青霉素发酵过程和工业脱霉素柱上进行了证明。

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