Journal of Manufacturing Systems | 2019
Image analysis-based closed loop quality control for additive manufacturing with fused filament fabrication
Abstract
Abstract Additive manufacturing (AM) is a powerful technology for fabrication of components with complex geometries using a variety of materials. However, one of the major challenges in the AM industry is how to ensure product quality and consistency by detecting and then mitigating the defects, which otherwise can severely deteriorate the quality of AM products and even the sustainability of AM technology. Although optimizing machine parameter settings offline and post-processing of AM products can improve the quality, the effects may be still limited, particularly for the parts with complex geometries. The objective of this study is to develop an image-based closed-loop quality control system for a typical AM process, namely, fused filament fabrication (FFF). This system is implemented by a customized online image acquisition system with a proposed image diagnosis-based feedback quality control method. Based on this novel approach, the typical quality issues can be addressed by efficient and effective defect mitigation via online automatic machine parameter adjustment. The case studies based on an actual FFF platform demonstrate the effectiveness and applicability of the proposed approach.