弥合数据差距:激光粉末床熔融热发射预测的联合学习方法

Rong Lei, Y.B. Guo, Jiwang Yan, W. Guo
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引用次数: 0

摘要

深度学习对增材制造(AM)中的缺陷预测产生了影响,这对确保工艺稳定性和零件质量非常重要。然而,深度学习的成功取决于广泛的训练,需要大量的同质数据集,这对增材制造行业,尤其是中小型企业(SMEs)来说仍然是一个挑战。AM 零件独特而多样的特性以及中小企业有限的资源阻碍了数据收集,给深度学习模型的独立训练带来了困难。要解决这些问题,就需要在谨慎处理隐私问题的同时,从 AM 过程和缺陷形成机制的物理相似性中实现知识共享。联合学习(FL)提供了一种解决方案,允许多个实体在不共享本地数据的情况下进行协作模型训练。本文介绍了一种联合学习框架,用于预测激光粉末床融合(LPBF)过程中的热量排放,这是一种重要的工艺特征。它为每个客户定制了一个长短期记忆(LSTM)模型,在不共享敏感信息的情况下捕捉动态 AM 过程的时间序列特性。它集成了三种先进的 FL 算法--FedAvg、FedProx 和 FedAvgM,以汇总模型权重而非原始数据集。实验证明,FL 框架可确保收敛性,并保持与单独训练的模型相当的预测性能。这项工作展示了基于 FL 的 AM 建模和预测的潜力,中小企业可以在不损害数据隐私的情况下提高产品质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
BRIDGING DATA GAPS: A FEDERATED LEARNING APPROACH TO HEAT EMISSION PREDICTION IN LASER POWDER BED FUSION
Deep learning has impacted defect prediction in Additive Manufacturing (AM), which is important to ensure process stability and part quality. However, its success depends on extensive training, requiring large, homogenous datasets–remaining a challenge for the AM industry, particularly for small- and medium-sized enterprises (SMEs). The unique and varied characteristics of AM parts, along with the limited resources of SMEs, hampers data collection, posing difficulties in the independent training of deep learning models. Addressing these concerns requires enabling knowledge sharing from the similarities in the physics of the AM process and defect formation mechanisms while carefully handling privacy concerns. Federated learning (FL) offers a solution to allow collaborative model training across multiple entities without sharing local data. This paper introduces an FL framework to predict section-wise heat emission during Laser Powder Bed Fusion (LPBF), a vital process signature. It incorporates a customized Long Short-Term Memory (LSTM) model for each client, capturing the dynamic AM process's time series properties without sharing sensitive information. Three advanced FL algorithms are integrated–FedAvg, FedProx, and FedAvgM–to aggregate model weights rather than raw datasets. Experiments demonstrate that the FL framework ensures convergence and maintains prediction performance comparable to individually trained models. This work demonstrates the potential of FL-enabled AM modeling and prediction where SMEs can improve their product quality without compromising data privacy.
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