Deep neural network and meta-learning-based reactive sputtering with small data sample counts

被引:7
|
作者
Lee, Jeongsu [1 ,3 ]
Yang, Chanwoo [2 ]
机构
[1] Korea Inst Ind Technol, Smart Liquid Proc R&D Dept, Cheonan 15014, Gyeonggi, South Korea
[2] Korea Inst Ind Technol, Heat & Surface Technol R&D Dept, Incheon 21999, South Korea
[3] Gachon Univ, Dept Mech Engn, Seongnam, South Korea
关键词
Few-shot regression; Deep neural network; Meta-learning; Data augmentation; FAULT-DETECTION; TOOL WEAR; CLASSIFICATION; ALGORITHM; SIZE;
D O I
10.1016/j.jmsy.2022.02.004
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Although several studies have focused on the application of deep-learning techniques in manufacturing processes, the lack of relevant datasets remains a major challenge. Hence, this paper presents a meta-learning approach to resolve the few-shot regression problem encountered in manufacturing applications. The proposed approach is based on data augmentation using conventional regression models and optimization-based meta-learning. The resulting deep neural network can be employed to optimize the reactive-sputtering process used in the fabrication of thin, compounded films of titanium and nitride. The performance of the proposed meta learning approach is compared to the conventional regression models, including support vector regression, Bayesian ridge regression, and Gaussian process regression, which exhibit state-of-the-art performance for regression over small data sample counts. The proposed meta-learning approach outperformed the baseline regression models when tested by varying the training sample counts from 5 to 40, resulting in a decrease in the root mean square error to 74.6% of that observed in the conventional models to predict the stoichiometric ratio of the film produced during the reactive sputtering process. This is remarkable because regression performed over a small number of data is usually considered unsuitable for deep-learning approaches. Therefore, this approach exhibits considerable potential for usage in different manufacturing applications because of its capability to handle a range of dataset sizes.
引用
收藏
页码:703 / 717
页数:15
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