理论(学习稳定性)
融合
多孔性
不稳定性
选择性激光熔化
材料科学
计算机科学
生物系统
激光器
人工智能
复合材料
机械
微观结构
光学
物理
机器学习
哲学
生物
语言学
作者
Brian G. Booth,Rob Heylen,Mohsen Nourazar,Dries Verhees,Wilfried Philips,Abdellatif Bey-Temsamani
出处
期刊:Sensors
[MDPI AG]
日期:2022-05-14
卷期号:22 (10): 3740-3740
被引量:17
摘要
In laser powder bed fusion (LPBF), melt pool instability can lead to the development of pores in printed parts, reducing the part’s structural strength. While camera-based monitoring systems have been introduced to improve melt pool stability, these systems only measure melt pool stability in limited, indirect ways. We propose that melt pool stability can be improved by explicitly encoding stability into LPBF monitoring systems through the use of temporal features and pore density modelling. We introduce the temporal features, in the form of temporal variances of common LPBF monitoring features (e.g., melt pool area, intensity), to explicitly quantify printing stability. Furthermore, we introduce a neural network model trained to link these video features directly to pore densities estimated from the CT scans of previously printed parts. This model aims to reduce the number of online printer interventions to only those that are required to avoid porosity. These contributions are then implemented in a full LPBF monitoring system and tested on prints using 316L stainless steel. Results showed that our explicit stability quantification improved the correlation between our predicted pore densities and true pore densities by up to 42%.
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