3DFed: A Secure Federated Learning-based System for Fault Detection in 3D Printer Industry

Made Adi Paramartha Putra, Mark Verana, G. Sampedro, Dong‐Seong Kim, Jae-Min Lee
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引用次数: 3

Abstract

This paper proposes a secure federated learning (FL) approach for 3D printer fault detection, namely 3DFed. Most current 3D fault detection systems were developed with a centralized learning approach, which is less efficient for large-scale deployment due to limited data for training. The FL-based system could be exploited to further increase fault detection accuracy while maintaining high performance by using the FedAvg algorithm. The 2D convolutional neural network (CNN) was used to extract data features from an image array. To further improve security in the simulation work, a certificate authority (CA) was added to maintain secure communication between the FL server and clients. The suggested 3DFed with the proposed CNN-based model can deliver high classification accuracy while preserving minimum time-cost, according to a thorough performance evaluation. Also covered in depth is how total client variance affects the learning process.
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3DFed:一种安全的基于联邦学习的3D打印机故障检测系统
本文提出了一种用于3D打印机故障检测的安全联邦学习(FL)方法,即3DFed。目前大多数三维故障检测系统都是采用集中式学习方法开发的,由于训练数据有限,这种方法在大规模部署时效率较低。利用fedag算法,可以进一步提高故障检测精度,同时保持较高的性能。利用二维卷积神经网络(CNN)从图像阵列中提取数据特征。为了进一步提高仿真工作的安全性,添加了一个证书颁发机构(CA)来维护FL服务器和客户端之间的安全通信。经过全面的性能评估,采用本文提出的基于cnn的模型的3DFed可以在保持最小时间成本的同时提供较高的分类精度。还深入讨论了总体客户差异如何影响学习过程。
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