Neural Net Based Hybrid Modeling of the Methanol Synthesis Process

作者:Primož Potočnik, Igor Grabec, Marko Šetinc, Janez Levec

摘要

A Hybrid modeling approach, combining an analytical model with a radial basis function neural network is introduced in this paper. The modeling procedure is combined with genetic algorithm based feature selection designed to select informative variables from the set of available measurements. By only using informative inputs, the model's generalization ability can be enhanced. The approach proposed is applied to modeling of the liquid–phase methanol synthesis. It is shown that a hybrid modeling approach exploiting available a priori knowledge and experimental data can considerably outperform a purely analytical approach.

论文关键词:hybrid modeling, genetic algorithms, feature selection, methanol synthesis, neural networks

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论文官网地址:https://doi.org/10.1023/A:1009615710515