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Burning Side Reaction Model of the INVISTA Oxidation Process Using a Radial Basis Function Neural Network Integrated with Partial Mutual Information-Least Square Regression

机译:径向基函数神经网络结合部分互信息最小二乘回归的INVISTA氧化过程燃烧侧反应模型

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The mechanism of the burning side reaction in the INVISTA oxidation process is complex, nearly unknown, and difficult to model. In this study, a radial basis function neural network (RBFNN) was used to model the burning side reaction based on the data collected from the INVISTA process. Over the past decades, clustering methods have been used to improve the ability of several RBFNN models to determine more efficient structures. However, these RBFNN models determine the RBFNN structure without considering the prediction accuracy of the model. To elucidate the optimal RBFNN structure and obtain a satisfactory burning side reaction model, RBFNN integrated with partial mutual information-least square regression (PMI-LSR) is proposed. PMI-based selection takes the correlation between the hidden layer and the output layer into account and eliminates redundant information in the selected hidden layer neurons to improve RBFNN prediction accuracy. Sammon's nonlinear map is used to illustrate the distribution of the selected hidden layer centers. This distribution differs from the uniform distribution of the cluster centers obtained using cluster methods. The burning side reaction model developed by PMI-LSR-RBFNN is better than those obtained by several cluster based RBFNN variants.
机译:INVISTA氧化过程中燃烧副反应的机理复杂,几乎未知且难以建模。在这项研究中,基于从英威达过程中收集的数据,使用了径向基函数神经网络(RBFNN)对燃烧副反应进行建模。在过去的几十年中,已经使用聚类方法来提高几种RBFNN模型确定更有效结构的能力。然而,这些RBFNN模型确定了RBFNN结构,而没有考虑模型的预测准确性。为了阐明最优的RBFNN结构并获得令人满意的燃烧副反应模型,提出了将RBFNN与部分互信息最小二乘回归(PMI-LSR)集成的方法。基于PMI的选择考虑了隐藏层和输出层之间的相关性,并消除了所选隐藏层神经元中的冗余信息,从而提高了RBFNN的预测准确性。 Sammon的非线性贴图用于说明所选隐藏层中心的分布。这种分布不同于使用聚类方法获得的聚类中心的均匀分布。由PMI-LSR-RBFNN开发的燃烧侧反应模型优于由几个基于聚类的RBFNN变体获得的模型。

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