Federated Transfer Learning with Task Personalization for Condition Monitoring in Ultrasonic Metal Welding
Ahmadreza Eslaminia, Yuquan Meng, Klara Nahrstedt, Chenhui Shao

TL;DR
This paper introduces a federated transfer learning framework with task personalization for ultrasonic metal welding condition monitoring, improving model adaptability and accuracy across different domains while preserving data privacy.
Contribution
It proposes a novel FTL-TP framework that enhances domain generalization and personalization in federated learning for manufacturing applications.
Findings
FTL-TP improves accuracy by 5.35%-8.08% in new domains.
Performs well with unbalanced data and limited clients.
Efficiently implemented on edge-cloud architecture.
Abstract
Ultrasonic metal welding (UMW) is a key joining technology with widespread industrial applications. Condition monitoring (CM) capabilities are critically needed in UMW applications because process anomalies significantly deteriorate the joining quality. Recently, machine learning models emerged as a promising tool for CM in many manufacturing applications due to their ability to learn complex patterns. Yet, the successful deployment of these models requires substantial training data that may be expensive and time-consuming to collect. Additionally, many existing machine learning models lack generalizability and cannot be directly applied to new process configurations (i.e., domains). Such issues may be potentially alleviated by pooling data across manufacturers, but data sharing raises critical data privacy concerns. To address these challenges, this paper presents a Federated Transfer…
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Taxonomy
TopicsWelding Techniques and Residual Stresses · Advanced Welding Techniques Analysis · Additive Manufacturing Materials and Processes
