A hybrid learning framework for manufacturing feature recognition using graph neural networks

IF 6.8 1区 工程技术 Q1 ENGINEERING, MANUFACTURING
PengYu Wang, Wen-An Yang, YouPeng You
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引用次数: 3

Abstract

Manufacturing feature recognition is a critical issue in intelligent manufacturing, which can extract valuable geometric information from solid models for humans not to be subservient to machines and automation. Features can bridge the information gap between computer-aided design (CAD), computer-aided process planning (CAPP), computer-aided engineering (CAE), and computer-aided manufacturing (CAM). Based on the concept of feature, the whole process of digital seamless connection from design to manufacture can be implemented. However, the existing methods have not solved the feature recognition problem well. These methods have some limitations, such as lack of learning ability/low learning efficiency, lack of expandability, low accuracy, and so on. To improve the performance of the feature recognition, a hybrid learning framework based on Graph neural network (GNN) termed DeepFeature is proposed. First, a method that can extract features from CAD solid model is used. Then, a scheme for the construction and storage of feature datasets is developed. The feature samples in the dataset are sufficient, and the representation of each feature is different. Next, DeepFeature models are constructed, and the models are trained and driven by the samples in feature datasets. Finally, the features of the parts are classified based on rules and GNN models. The interacting features with multiple base planes are decomposed into several isolated features for feature classification. The experimental results show that the proposed hybrid learning framework not only has high feature recognition accuracy but also has good robustness in handling interacting features.

基于图神经网络的制造特征识别混合学习框架
制造特征识别是智能制造中的一个关键问题,它可以从实体模型中提取有价值的几何信息,使人类不屈从于机器和自动化。特征可以弥合计算机辅助设计(CAD)、计算机辅助工艺规划(CAPP)、计算机辅助工程(CAE)和计算机辅助制造(CAM)之间的信息鸿沟。基于特征的概念,可以实现从设计到制造的数字化无缝连接全过程。然而,现有的方法并没有很好地解决特征识别问题。这些方法存在一些局限性,如学习能力不足/学习效率低、缺乏可扩展性、准确性低等。为了提高特征识别的性能,提出了一种基于图神经网络(GNN)的混合学习框架DeepFeature。首先,采用一种从CAD实体模型中提取特征的方法。然后,提出了一种特征数据集的构建和存储方案。数据集中的特征样本是足够的,并且每个特征的表示是不同的。其次,构建深度特征模型,并通过特征数据集中的样本对模型进行训练和驱动。最后,基于规则和GNN模型对零件特征进行分类。将多个基面的交互特征分解为多个孤立的特征进行特征分类。实验结果表明,所提出的混合学习框架不仅具有较高的特征识别精度,而且在处理交互特征方面具有良好的鲁棒性。
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来源期刊
Journal of Manufacturing Processes
Journal of Manufacturing Processes ENGINEERING, MANUFACTURING-
CiteScore
10.20
自引率
11.30%
发文量
833
审稿时长
50 days
期刊介绍: The aim of the Journal of Manufacturing Processes (JMP) is to exchange current and future directions of manufacturing processes research, development and implementation, and to publish archival scholarly literature with a view to advancing state-of-the-art manufacturing processes and encouraging innovation for developing new and efficient processes. The journal will also publish from other research communities for rapid communication of innovative new concepts. Special-topic issues on emerging technologies and invited papers will also be published.
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