基于多模型集成方法的工业软传感器预测

Xiaofeng Yuan, Zhenzhen Jia, Lingjian Ye, Kai Wang, Yalin Wang
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引用次数: 0

摘要

工业过程通常具有非线性和动态性的特点。因此,通常采用长短期记忆(LSTM)网络提取工业质量指标的非线性动态特征进行预测。然而,传统的LSTM只捕获输入变量的时间特征,而忽略了输出变量。为此,本研究提出了一种多模型集成方法(MMIM),用于同时提取输入输出时间特征。在MMIM中,LSTM和其他静态模型用于收集输入的时间和静态特征,而RNN用于预测输出变量。在工业加氢裂化装置上验证了该方法对轻油异戊烷和重油质量预测的有效性和性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Industrial Soft Sensor Prediction based on Multi-model Integrated Method
The industrial processes are commonly characterized by nonlinearities and dynamics. Therefore, long short-term memory (LSTM) networks are often adopted to extract the nonlinear dynamic features for the prediction of industrial quality indicators. However, traditional LSTM only captures the temporal characteristics of input variables but ignores the output variables. Therefore, a multi-model integrated method (MMIM) is proposed for simultaneously extracting the input and output temporal characteristics in this study. In the MMIM, a LSTM and other static models are used to collect the temporal and static characteristics for the inputs, while a RNN is applied to predict the output variable. The effectiveness and performance are verified on an industrial hydrocracking plant for the prediction of light naphtha isopentane and heavy naphtha quality.
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