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首页> 外文期刊>International journal of hydrogen energy >Dimensionality reduction for predicting CO conversion in water gas shift reaction over Pt-based catalysts using support vector regression models
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Dimensionality reduction for predicting CO conversion in water gas shift reaction over Pt-based catalysts using support vector regression models

机译:使用支持向量回归模型预测Pt基催化剂在水煤气变换反应中CO转化率的降维

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摘要

Removal of CO in fuel cell applications is an important issue. In this study, models based on support vector regression (SVR) along with several dimensionality reduction methods are utilized for predicting the CO conversion in water gas shift (WGS) reaction. SVR model parameters are determined with a two-stage grid search method and for dimensionality reduction, principal component analysis (PCA), backward feature elimination (BFE) and simulated annealing (SA) methods are used. PCA reduces the dimension by mapping the input data to a lower dimensional feature space. On the other hand, BFE and SA methods finds a subset of features leading to a higher prediction performance. Influence of these methods on prediction performance is investigated by testing the SVR models with and without reducing the dimension. It is observed that all of these methods reduce the prediction error when an appropriate threshold for final number of features is set. Moreover, identical feature subsets are output by BFE and SA methods. In conclusion, it has been shown that some of the features for CO conversion in WGS reaction are more important and using only these features may improve the prediction performance. (C) 2016 Hydrogen Energy Publications LLC. Published by Elsevier Ltd. All rights reserved.
机译:在燃料电池应用中去除CO是重要的问题。在这项研究中,基于支持向量回归(SVR)以及几种降维方法的模型可用于预测水煤气变换(WGS)反应中的一氧化碳转化率。通过两阶段网格搜索方法确定SVR模型参数,并使用降维方法使用主成分分析(PCA),后向特征消除(BFE)和模拟退火(SA)方法。 PCA通过将输入数据映射到较低维度的特征空间来减小维度。另一方面,BFE和SA方法可以找到导致更高预测性能的特征子集。通过在不减小尺寸的情况下测试SVR模型,研究了这些方法对预测性能的影响。可以看出,当为特征的最终数量设置适当的阈值时,所有这些方法都会减少预测误差。而且,相同的特征子集通过BFE和SA方法输出。总之,已经表明,WGS反应中CO转化的某些特征更为重要,仅使用这些特征可以提高预测性能。 (C)2016氢能出版物有限公司。由Elsevier Ltd.出版。保留所有权利。

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