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首页> 外文期刊>Chinese Journal of Chemical Engineering >Dimensionality Reduction with Input Training Neural Network and Its Application in Chemical Process Modelling
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Dimensionality Reduction with Input Training Neural Network and Its Application in Chemical Process Modelling

机译:输入训练神经网络的降维及其在化学过程建模中的应用

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摘要

Many applications of principal component analysis (PCA) can be found in dimensionality reduction. But linear PCA method is not well suitable for nonlinear chemical processes. A new PCA method based on improved input training neural network (IT-NN) is proposed for the nonlinear system modelling in this paper. Momentum factor and adaptive learning rate are introduced into learning algorithm to improve the training speed of IT-NN. Contrasting to the auto-associative neural network (ANN), IT-NN has less hidden layers and higher training speed. The effectiveness is illustrated through a comparison of IT-NN with linear PCA and ANN with experiments. Moreover, the IT-NN is combined with RBF neural network (RBF-NN) to model the yields of ethylene and propyl-ene in the naphtha pyrolysis system. From the illustrative example and practical application, IT-NN combined with RBF-NN is an effective method of nonlinear chemical process modelling.
机译:主成分分析(PCA)的许多应用可以在降维中找到。但是线性PCA方法不适用于非线性化学过程。提出了一种基于改进的输入训练神经网络(IT-NN)的PCA方法进行非线性系统建模。将动量因子和自适应学习率引入到学习算法中,以提高IT-NN的训练速度。与自动联想神经网络(ANN)相比,IT-NN具有更少的隐藏层和更高的训练速度。通过将IT-NN与线性PCA和ANN与实验进行比较,说明了有效性。此外,将IT-NN与RBF神经网络(RBF-NN)结合起来,对石脑油热解系统中乙烯和丙烯的收率进行建模。从说明性实例和实际应用来看,IT-NN与RBF-NN结合是非线性化学过程建模的有效方法。

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