利用集成式多源域动态自适应迁移学习预测多特征零件的加工质量

IF 9.1 1区 计算机科学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Pei Wang , Jingshuai Qi , Xun Xu , Sheng Yang
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引用次数: 0

摘要

由于数据集较小,且每个加工特征的质量数据分布不一致,因此多特征零件的加工质量预测一直是一个具有挑战性的问题。为此,利用一项任务的知识并将其重新用于另一项任务的迁移学习似乎是一个很好的解决方案。然而,传统的迁移学习通常只有一个源域和一个目标域,这限制了其在多源场景(如多特征)中的应用。为解决这一问题,本文提出了一种新型集成多源域动态自适应迁移学习(IMD-DATL)框架,用于多特征零件加工系统的加工质量预测。具体来说,设计了一种域-样本相似性双匹配多源域集成方法,以构建从多源域到目标域的集成知识转移。设计了基于样本熵-动态通道双层注意结构的残差特征提取网络和细粒度可转移特征注意模块。从样本、信道和数据特征三个维度提高特征学习能力和对预测对象的适应水平。最后,在薄壁零件加工系统中进行的多组对比实验证实了所提出的方法在跨域质量预测中的有效性和优越性。与其他传统迁移学习方法相比,该方法的平均 MAE、RMSE 和 Score 分别提高了 5.47 %、4.59 % 和 4.84 %;与其他多源域适应方法相比,该方法的平均 MAE、RMSE 和 Score 分别提高了 7.13 %、7.37 % 和 6.52 %。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machining quality prediction of multi-feature parts using integrated multi-source domain dynamic adaptive transfer learning

Machining quality prediction of multi-feature parts has been a challenging problem because of small dataset and inconsistent quality data distribution with respect to each machining feature. Transfer learning that leverages knowledge of one task and can be repurposed on another task seems a good solution for this purpose. However, traditional transfer learning typically has a single source domain and a target domain, which limits its applications in multi-source scenarios (e.g., multi-feature). To solve this issue, this paper proposes a novel integrated multi-source domain dynamic adaptive transfer learning (IMD-DATL) framework for machining quality prediction of multi-feature part machining systems. Specifically, a domain-sample similarity double matching multi-source domain integration method is designed to construct the integration knowledge transfer from multiple source domains to the target domain. A residual feature extraction network based on sample entropy-dynamic channel double-layer attention structure and a fine-grained transferable feature attention module are designed. These three attentions are used to improve the feature learning ability and the adaptation level to the predicted object in the three dimensions of sample, channel and data feature. Finally, multiple sets of comparative experiments in thin-walled part machining systems confirm the effectiveness and superiority of the proposed method for cross-domain quality prediction. Compared with other traditional transfer learning methods, the MAE, RMSE and Score on average of this method are increased by 5.47 %, 4.59 % and 4.84 %, respectively, compared with other multi-source domain adaptation methods, the MAE, RMSE and Score on average of this method are increased by 7.13 %, 7.37 % and 6.52 %, respectively.

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来源期刊
Robotics and Computer-integrated Manufacturing
Robotics and Computer-integrated Manufacturing 工程技术-工程:制造
CiteScore
24.10
自引率
13.50%
发文量
160
审稿时长
50 days
期刊介绍: The journal, Robotics and Computer-Integrated Manufacturing, focuses on sharing research applications that contribute to the development of new or enhanced robotics, manufacturing technologies, and innovative manufacturing strategies that are relevant to industry. Papers that combine theory and experimental validation are preferred, while review papers on current robotics and manufacturing issues are also considered. However, papers on traditional machining processes, modeling and simulation, supply chain management, and resource optimization are generally not within the scope of the journal, as there are more appropriate journals for these topics. Similarly, papers that are overly theoretical or mathematical will be directed to other suitable journals. The journal welcomes original papers in areas such as industrial robotics, human-robot collaboration in manufacturing, cloud-based manufacturing, cyber-physical production systems, big data analytics in manufacturing, smart mechatronics, machine learning, adaptive and sustainable manufacturing, and other fields involving unique manufacturing technologies.
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