Literature DB >> 17266513

Zeolite synthesis modelling with support vector machines: a combinatorial approach.

Jose Manuel Serra1, Laurent Allen Baumes, Manuel Moliner, Pedro Serna, Avelino Corma.   

Abstract

This work shows the application of support vector machines (SVM) for modelling and prediction of zeolite synthesis, when using the gel molar ratios as model input (synthesis descriptors). Experimental data includes the synthesis results of a multi-level factorial experimental design of the system TEA:SiO2:Na2O:Al2O3:H2O. The few parameters of the SVM model were studied and the fitting performance is compared with the ones obtained with other machine learning models such as neural networks and classification trees. SVM models show very good prediction performances and generalization capacity in zeolite synthesis prediction. They may overcome overfitting problems observed sometimes for neural networks. It is also studied the influence of the type of material descriptors used as model output.

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Year:  2007        PMID: 17266513     DOI: 10.2174/138620707779802779

Source DB:  PubMed          Journal:  Comb Chem High Throughput Screen        ISSN: 1386-2073            Impact factor:   1.339


  4 in total

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4.  Discovering Relationships between OSDAs and Zeolites through Data Mining and Generative Neural Networks.

Authors:  Zach Jensen; Soonhyoung Kwon; Daniel Schwalbe-Koda; Cecilia Paris; Rafael Gómez-Bombarelli; Yuriy Román-Leshkov; Avelino Corma; Manuel Moliner; Elsa A Olivetti
Journal:  ACS Cent Sci       Date:  2021-04-16       Impact factor: 14.553

  4 in total

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