Linear and nonlinear hierarchical modeling strategy for dynamic soft sensor

Guanyu Ouyang, Yang Xiao, Cong Wang, Wei Wei
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Abstract

In real industrial process, linearity and nonlinearity often exist at the same time, which brings difficulty to the modeling of soft sensor in industrial process. In this paper, a linear and nonlinear hierarchical strategy is proposed for soft sensing of dynamic processes. First, a linear identification coefficient (LIC) is designed to measure the degree of linear correlation between input variables and output variables. Process variables are divided into linear variable group and nonlinear variable group. Then, we use dynamic partial least squares (DPLS) to build a linear model. In view of the prediction residuals of linear models, a long short-term memory (LSTM) model is established to fit them, so as to compensate for the failure of linear methods to capture nonlinear relationships. The validity of the method is proved by the experiment of three-phase flow. Compared with other linear and nonlinear models, the proposed method has better accuracy and clearer structure.
动态软传感器的线性和非线性分层建模策略
在实际工业过程中,线性和非线性往往同时存在,这给工业过程中软传感器的建模带来了困难。本文提出了一种线性和非线性分层的动态过程软测量策略。首先,设计线性识别系数(LIC)来衡量输入变量与输出变量之间的线性相关程度。过程变量分为线性变量组和非线性变量组。然后,我们使用动态偏最小二乘(DPLS)来建立线性模型。针对线性模型的预测残差,建立了长短期记忆(LSTM)模型对其进行拟合,弥补了线性方法无法捕捉非线性关系的不足。通过三相流实验验证了该方法的有效性。与其他线性和非线性模型相比,该方法具有更好的精度和更清晰的结构。
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