Abstract
In recent years, technological advancements have led to the industrialization of the laser powder bed fusion process. Despite all of the advancements, quality assurance, reliability, and lack of repeatability of the laser powder bed fusion process still hinder risk-averse industries from adopting it wholeheartedly. The process-induced defects or drifts can have a detrimental effect on the quality of the final part, which could lead to catastrophic failure of the finished part. It led to the development of in situ monitoring systems to effectively monitor the process signatures during printing. Nevertheless, post-processing of the in situ data and defect detection in an automated fashion are major challenges. Nowadays, many studies have been focused on incorporating machine learning approaches to solve this problem and develop a feedback control loop system to monitor the process in real-time. In our study, we review the types of process defects that can be monitored via process signatures captured by in situ sensing devices and recent advancements in the field of data analytics for easy and automated defect detection. We also discuss the working principles of the most common in situ sensing sensors to have a better understanding of the process. Commercially available in situ monitoring devices on laser powder bed fusion systems are also reviewed. This review is inspired by the work of Grasso and Colosimo, which presented an overall review of powder bed fusion technology.
Subject
Inorganic Chemistry,Condensed Matter Physics,General Materials Science,General Chemical Engineering
Reference104 articles.
1. ISO/ASTM 52900: 2015 Additive Manufacturing-General Principles-Terminology,2012
2. Measurement Science Needs for Real-Time Control of Additive Manufacturing Powder Bed Fusion Processeshttps://www.researchgate.net/publication/279178288_Measurement_Science_Needs_for_Real-time_Control_of_Additive_Manufacturing_Powder_Bed_Fusion_Processes
3. Main defects observed in aluminum alloy parts produced by SLM: From causes to consequences
4. A Review on Process Monitoring and Control in Metal-Based Additive Manufacturing
5. Designing heterogeneous porous tissue scaffolds for additive manufacturing processes
Cited by
63 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献