原位
表征(材料科学)
材料科学
沉积(地质)
变压器
热的
纳米技术
地质学
工程类
化学
电压
电气工程
物理
古生物学
有机化学
沉积物
气象学
作者
Israt Zarin Era,Fan Zhou,Ahmed Shoyeb Raihan,Imtiaz Ahmed,Alan Abul-Haj,James E. Craig,Srinjoy Das,Zhichao Liu
出处
期刊:Cornell University - arXiv
日期:2024-11-18
标识
DOI:10.48550/arxiv.2411.12028
摘要
Directed Energy Deposition (DED) offers significant potential for manufacturing complex and multi-material parts. However, internal defects such as porosity and cracks can compromise mechanical properties and overall performance. This study focuses on in-situ monitoring and characterization of melt pools associated with porosity, aiming to improve defect detection and quality control in DED-printed parts. Traditional machine learning approaches for defect identification rely on extensive labeled datasets, often scarce and expensive to generate in real-world manufacturing. To address this, our framework employs self-supervised learning on unlabeled melt pool data using a Vision Transformer-based Masked Autoencoder (MAE) to produce highly representative embeddings. These fine-tuned embeddings are leveraged via transfer learning to train classifiers on a limited labeled dataset, enabling the effective identification of melt pool anomalies. We evaluate two classifiers: (1) a Vision Transformer (ViT) classifier utilizing the fine-tuned MAE Encoder's parameters and (2) the fine-tuned MAE Encoder combined with an MLP classifier head. Our framework achieves overall accuracy ranging from 95.44% to 99.17% and an average F1 score exceeding 80%, with the ViT Classifier slightly outperforming the MAE Encoder Classifier. This demonstrates the scalability and cost-effectiveness of our approach for automated quality control in DED, effectively detecting defects with minimal labeled data.
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