Privacy-preserving Anomaly Detection in Cloud Manufacturing via Federated Transformer
Shiyao Ma, Jiangtian Nie, Jiawen Kang, Lingjuan Lyu, Ryan Wen Liu,, Ruihui Zhao, Ziyao Liu, Dusit Niyato

TL;DR
This paper introduces FedAnomaly, a novel federated learning framework using Transformer models with differential privacy for anomaly detection in cloud manufacturing, ensuring data privacy and improved abnormal feature extraction.
Contribution
It is the first to integrate federated learning and Transformer models for privacy-preserving anomaly detection in cloud manufacturing.
Findings
Effective anomaly detection on four benchmark datasets.
Enhanced privacy through differential privacy noise addition.
Improved abnormal feature extraction with Transformer models.
Abstract
With the rapid development of cloud manufacturing, industrial production with edge computing as the core architecture has been greatly developed. However, edge devices often suffer from abnormalities and failures in industrial production. Therefore, detecting these abnormal situations timely and accurately is crucial for cloud manufacturing. As such, a straightforward solution is that the edge device uploads the data to the cloud for anomaly detection. However, Industry 4.0 puts forward higher requirements for data privacy and security so that it is unrealistic to upload data from edge devices directly to the cloud. Considering the above-mentioned severe challenges, this paper customizes a weakly-supervised edge computing anomaly detection framework, i.e., Federated Learning-based Transformer framework (\textit{FedAnomaly}), to deal with the anomaly detection problem in cloud…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Anomaly Detection Techniques and Applications · Network Security and Intrusion Detection
