基于元学习的领域泛化,实现经济高效的超声波金属焊接工具状态监测

IF 9.9 1区 计算机科学 Q1 AUTOMATION & CONTROL SYSTEMS IEEE Transactions on Industrial Informatics Pub Date : 2024-09-23 DOI:10.1109/TII.2024.3456671
Yuquan Meng;Zhiqiao Dong;Kuan-Chieh Lu;Shichen Li;Chenhui Shao
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引用次数: 0

摘要

在线工具状态监测(TCM)是包括超声金属焊接(UMW)在内的许多制造应用中的关键能力。有效和高效的TCM可以促进预测性维护,提高产品质量,提高生产力。现有的基于传统机器学习模型的在线中医系统通常需要大量的标记数据,这些数据的收集成本高昂,耗时且劳动密集。这样的模型不能满足现代可重构UMW系统对成本效益和敏捷性的要求。因此,具有良好泛化能力的数据高效中医方法至关重要。为此,我们开发了一种新的基于相似性的元表示学习(SMRL)方法进行领域泛化。SMRL有效地学习在不同焊接场景或领域之间共享的高级元知识。因此,在源域训练的模型可以推广到其他域,而无需在训练阶段访问标记数据。采用不同焊接材料和焊接参数的四种焊接方案进行了案例研究。结果表明,该方法优于神经网络、分层神经网络、模型不可知元学习(MAML)和分层MAML等基线方法。与基线方法相比,SMRL的中医诊断准确率平均提高15.44% ~ 31.62%。这些结果表明,SMRL很容易适用于工业应用,以实现成本效益和数据效率高的TCM。
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Meta-Learning-Based Domain Generalization for Cost-Effective Tool Condition Monitoring in Ultrasonic Metal Welding
Online tool condition monitoring (TCM) is a pivotal capability in many manufacturing applications including ultrasonic metal welding (UMW). Effective and efficient TCM can facilitate predictive maintenance, improve product quality, and enhance productivity. Existing online TCM systems based on conventional machine learning models often require a large amount of labeled data, the collection of which is cost-prohibitive, time-consuming, and labor-intensive. Such models fail to satisfy the requirements of cost-effectiveness and agility posed by modern, reconfigurable UMW systems. As such, data-efficient TCM methods with excellent generalization ability are of vital importance. To this end, we develop a novel similarity-based meta-representation learning (SMRL) method for domain generalization. SMRL effectively learns high-level meta-knowledge that is shared among different welding scenarios or domains. Therefore, the model trained in source domains can be generalized to other domains without access to labeled data in the training phase. Case studies are performed using four welding scenarios with varied welding materials and welding parameters. It is demonstrated that the proposed method is superior to the baseline methods, including neural network, hierarchical neural network, model-agnostic meta-learning (MAML), and hierarchical MAML. Compared with the baseline methods, SMRL offers an average improvement of 15.44%–31.62% in TCM accuracy. These results show that SMRL is readily applicable to industrial applications to enable cost-effective and data-efficient TCM.
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来源期刊
IEEE Transactions on Industrial Informatics
IEEE Transactions on Industrial Informatics 工程技术-工程:工业
CiteScore
24.10
自引率
8.90%
发文量
1202
审稿时长
5.1 months
期刊介绍: The IEEE Transactions on Industrial Informatics is a multidisciplinary journal dedicated to publishing technical papers that connect theory with practical applications of informatics in industrial settings. It focuses on the utilization of information in intelligent, distributed, and agile industrial automation and control systems. The scope includes topics such as knowledge-based and AI-enhanced automation, intelligent computer control systems, flexible and collaborative manufacturing, industrial informatics in software-defined vehicles and robotics, computer vision, industrial cyber-physical and industrial IoT systems, real-time and networked embedded systems, security in industrial processes, industrial communications, systems interoperability, and human-machine interaction.
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