Viscosity Prediction of Lubricants by a General Feed-Forward Neural Network

Modern industrial lubricants are often blended with an assortment of chemical additives to improve the performance of the base stock. Machine learning-based predictive models allow fast and veracious derivation of material properties and facilitate novel and innovative material designs. In this stud...

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Veröffentlicht in:Journal of chemical information and modeling 2020-03, Vol.60 (3), p.1224-1234
Hauptverfasser: Loh, G. C, Lee, H.-C, Tee, X. Y, Chow, P. S, Zheng, J. W
Format: Artikel
Sprache:eng
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Zusammenfassung:Modern industrial lubricants are often blended with an assortment of chemical additives to improve the performance of the base stock. Machine learning-based predictive models allow fast and veracious derivation of material properties and facilitate novel and innovative material designs. In this study, we outline the design and training process of a general feed-forward artificial neural network that accurately predicts the dynamic viscosity of oil-based lubricant formulations. The network hyperparameters are systematically optimized by Bayesian optimization, and strongly correlated/collinear features are trimmed from the model. By harnessing domain knowledge in the selection of features, the quantitative structure–property relationship model is built with a relatively simple feature set and is versatile in predicting the dynamic viscosity of lubricant oils with and without enhancement by viscosity modifiers (VMs). Moreover, partial dependency, local-interpretable model-agnostic explanations, and Shapley values consistently show that the eccentricity index, Crippen MR, and Petitjean number are important predictors of viscosity. All in all, the neural model is reasonably accurate in predicting the dynamic viscosity of lubricant solvents and VM-enhanced lubricants with an R 2 of 0.980 and 0.963, respectively.
ISSN:1549-9596
1549-960X
DOI:10.1021/acs.jcim.9b01068