Data Augmentation-based Manufacturing Quality Prediction Approach in Human Cyber-Physical Systems

IF 2.4 3区 工程技术 Q3 ENGINEERING, MANUFACTURING
Tianyue Wang, Bingtao Hu, Yixiong Feng, Xiaoxie Gao, Chen Yang, Jianrong Tan
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引用次数: 0

Abstract

The vigorous development of the human cyber-physical system (HCPS) and the next generation of artificial intelligence provide new ideas for smart manufacturing, where manufacturing quality prediction is an important issue in the manufacturing system. However, the small-scale data from humans in emerging HCPS-enabled manufacturing restricts the development of traditional quality prediction methods. To address this question, a data augmentation-based manufacturing quality prediction approach in human cyber-physical systems is proposed in this paper. Specifically, a Data Augmentation-Gradient Boosting Decision Tree (DA-GBDT) model is developed for quality prediction under the HCPS context. In addition, an adaptive selection algorithm of data augmentation rate is designed to balance the trade-off between the training time of the prediction model and the prediction accuracy. Finally, the experimental results of automobile covering products demonstrate that the proposed method can improve the average prediction error of the model compared with the prevailing quality prediction methods. Moreover, the predicted quality information can provide guidance for product optimization decisions in smart manufacturing systems.
基于数据增强的人类网络物理系统制造质量预测方法
人类信息物理系统(HCPS)和下一代人工智能的蓬勃发展为智能制造提供了新的思路,其中制造质量预测是制造系统中的一个重要问题。然而,在新兴的hcps制造中,来自人类的小规模数据限制了传统质量预测方法的发展。为了解决这一问题,本文提出了一种基于数据增强的人类信息物理系统制造质量预测方法。针对HCPS环境下的质量预测,提出了一种数据增强-梯度增强决策树(DA-GBDT)模型。此外,设计了一种数据增强率的自适应选择算法,以平衡预测模型的训练时间和预测精度之间的权衡。最后,对汽车覆盖件产品的实验结果表明,与现有的质量预测方法相比,该方法可以提高模型的平均预测误差。此外,预测的质量信息可以为智能制造系统中的产品优化决策提供指导。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
6.80
自引率
20.00%
发文量
126
审稿时长
12 months
期刊介绍: Areas of interest including, but not limited to: Additive manufacturing; Advanced materials and processing; Assembly; Biomedical manufacturing; Bulk deformation processes (e.g., extrusion, forging, wire drawing, etc.); CAD/CAM/CAE; Computer-integrated manufacturing; Control and automation; Cyber-physical systems in manufacturing; Data science-enhanced manufacturing; Design for manufacturing; Electrical and electrochemical machining; Grinding and abrasive processes; Injection molding and other polymer fabrication processes; Inspection and quality control; Laser processes; Machine tool dynamics; Machining processes; Materials handling; Metrology; Micro- and nano-machining and processing; Modeling and simulation; Nontraditional manufacturing processes; Plant engineering and maintenance; Powder processing; Precision and ultra-precision machining; Process engineering; Process planning; Production systems optimization; Rapid prototyping and solid freeform fabrication; Robotics and flexible tooling; Sensing, monitoring, and diagnostics; Sheet and tube metal forming; Sustainable manufacturing; Tribology in manufacturing; Welding and joining
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