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Artificial neural network models for HFCS isomerization process

机译:HFCS异构化过程的人工神经网络模型

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摘要

This work presents an approach to the modeling of a real industrial isomerization reactor by using artificial neural networks (ANN) pre-processed with principal component analysis (PCA). The initial model considered the output fructose concentration as the output variable, while the flow rate of substrate to the reactor as the principal input variable. Then, the ANN model was restructured and inversely trained by assuming the exit fructose concentration as the input variable and the feed flow rate as the output variable. Results indicate good performance by the application of the developed strategy to an extensive industrial data set. The results are expected to be useful in future, controlling the fructose concentration in the HFCS isomerization reactor.
机译:这项工作提出了一种通过使用人工神经网络(ANN)和主成分分析(PCA)预处理对真实的工业异构化反应器进行建模的方法。初始模型将输出果糖浓度视为输出变量,而将底物流向反应器的流量视为主要输入变量。然后,以出口果糖浓度为输入变量,进料流量为输出变量,对ANN模型进行重构和逆训练。通过将开发的策略应用于广泛的工业数据集,结果表明了良好的性能。预期该结果在将来可用于控制HFCS异构化反应器中的果糖浓度。

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