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Prediction of contact fatigue life of AT40 ceramic coating based on neural network

Renze Zhou (College of Mechanical Engineering, Zhejiang University of Technology, Hangzhou, China and National Key Laboratory for Remanufacturing, Academy of Armored Force Engineering, Beijing, China)
Zhiguo Xing (National Key Laboratory for Remanufacturing, Academy of Armored Force Engineering, Beijing, China)
Haidou Wang (National Key Laboratory for Remanufacturing, Academy of Armored Force Engineering, Beijing, China and College of Mechanical Engineering, Zhejiang University of Technology, Hangzhou, China)
Zhongyu Piao (College of Mechanical Engineering, Zhejiang University of Technology, Hangzhou, China)
Yanfei Huang (National Key Laboratory for Remanufacturing, Academy of Armored Force Engineering, Beijing, China)
Weiling Guo (National Key Laboratory for Remanufacturing, Academy of Armored Force Engineering, Beijing, China)
Runbo Ma (National Key Laboratory for Remanufacturing, Academy of Armored Force Engineering, Beijing, China)

Anti-Corrosion Methods and Materials

ISSN: 0003-5599

Article publication date: 27 January 2020

Issue publication date: 8 January 2020

355

Abstract

Purpose

With the development of deep learning-based analytical techniques, increased research has focused on fatigue data analysis methods based on deep learning, which are gaining in popularity. However, the application of deep neural networks in the material science domain is mainly inhibited by data availability. In this paper, to overcome the difficulty of multifactor fatigue life prediction with small data sets,

Design/methodology/approach

A multiple neural network ensemble (MNNE) is used, and an MNNE with a general and flexible explicit function is developed to accurately quantify the complicated relationships hidden in multivariable data sets. Moreover, a variational autoencoder-based data generator is trained with small sample sets to expand the size of the training data set. A comparative study involving the proposed method and traditional models is performed. In addition, a filtering rule based on the R2 score is proposed and applied in the training process of the MNNE, and this approach has a beneficial effect on the prediction accuracy and generalization ability.

Findings

A comparative study involving the proposed method and traditional models is performed. The comparative experiment confirms that the use of hybrid data can improve the accuracy and generalization ability of the deep neural network and that the MNNE outperforms support vector machines, multilayer perceptron and deep neural network models based on the goodness of fit and robustness in the small sample case.

Practical implications

The experimental results imply that the proposed algorithm is a sophisticated and promising multivariate method for predicting the contact fatigue life of a coating when data availability is limited.

Originality/value

A data generated model based on variational autoencoder was used to make up lack of data. An MNNE method was proposed to apply in the small data case of fatigue life prediction.

Keywords

Acknowledgements

Author contributions: Z. R. Z. developed the study design, created the original draft, prepared the final version; M. R. B. carried out the fatigue life test; X. Z. G. provided fund; W. H.D. managed the project; P. Z. Y. carried out formal analysis; H. Y. F and G. W. L revised the manuscript draft.

Funding: This work was supported by the National Key Lab for Remanufacturing and financially supported by the NSFC (51775554 and 51535011) and the 973 Project (613283204).

Conflicts of interest: The authors declare no conflict of interest.

Citation

Zhou, R., Xing, Z., Wang, H., Piao, Z., Huang, Y., Guo, W. and Ma, R. (2020), "Prediction of contact fatigue life of AT40 ceramic coating based on neural network", Anti-Corrosion Methods and Materials, Vol. 67 No. 1, pp. 83-100. https://doi.org/10.1108/ACMM-10-2019-2190

Publisher

:

Emerald Publishing Limited

Copyright © 2019, Emerald Publishing Limited

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