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Journal ArticleDOI

Application of supervised machine learning for defect detection during metallic powder bed fusion additive manufacturing using high resolution imaging.

TLDR
In this article, an in- situ defect detection strategy for powder bed fusion (PBF) AM using supervised machine learning is described, where multiple images were collected at each build layer using a high resolution digital single-lens reflex (DSLR) camera.
Abstract: 
Process monitoring in additive manufacturing (AM) is a crucial component in the mission of broadening AM industrialization. However, conventional part evaluation and qualification techniques, such as computed tomography (CT), can only be utilized after the build is complete, and thus eliminate any potential to correct defects during the build process. In contrast to post-build CT, in situ defect detection based on in situ sensing, such as layerwise visual inspection, enables the potential for in-process re-melting and correction of detected defects and thus facilitates in-process part qualification. This paper describes the development and implementation of such an in situ defect detection strategy for powder bed fusion (PBF) AM using supervised machine learning. During the build process, multiple images were collected at each build layer using a high resolution digital single-lens reflex (DSLR) camera. For each neighborhood in the resulting layerwise image stack, multi-dimensional visual features were extracted and evaluated using binary classification techniques, i.e. a linear support vector machine (SVM). Through binary classification, neighborhoods are then categorized as either a flaw, i.e. an undesirable interruption in the typical structure of the material, or a nominal build condition. Ground truth labels, i.e. the true location of flaws and nominal build areas, which are needed to train the binary classifiers, were obtained from post-build high-resolution 3D CT scan data. In CT scans, discontinuities, e.g. incomplete fusion, porosity, cracks, or inclusions, were identified using automated analysis tools or manual inspection. The xyz locations of the CT data were transferred into the layerwise image domain using an affine transformation, which was estimated using reference points embedded in the part. After the classifier had been properly trained, in situ defect detection accuracies greater than 80% were demonstrated during cross-validation experiments.

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Citations
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Journal ArticleDOI

Metal Additive Manufacturing Parts Inspection Using Convolutional Neural Network

TL;DR: Wang et al. as discussed by the authors presented a convolutional neural network (CNN) approach toward robust AM quality inspection, such as good quality, crack, gas porosity, and lack of fusion.
Journal ArticleDOI

Machine learning for metal additive manufacturing: Towards a physics-informed data-driven paradigm

TL;DR: In this paper, the current state-of-the-art in metal additive manufacturing is reviewed and opportunities for a paradigm shift to PIML are discussed, thereby identifying relevant future research directions.
Journal ArticleDOI

Real-time defect detection in 3D printing using machine learning

TL;DR: A Convolutional Neural Network-Deep Learning model is developed to detect real-time malicious defects to prevent the production losses and reduce human involvement for quality checks and is built on the concepts of image classification and computer vision using machine learning.
Journal ArticleDOI

Unsupervised learning for the droplet evolution prediction and process dynamics understanding in inkjet printing

TL;DR: An unsupervised learning method for studying the flow pattern of the droplet, which does not require well-defined ground-truth labels is proposed and Experimental results demonstrate that the proposed method can learn latent representations of thedroplet jetting process video data, which is very useful for the prediction of theDroplet behavior.
Journal ArticleDOI

Machine learning algorithms for defect detection in metal laser-based additive manufacturing: A review

TL;DR: In this article , a comprehensive and systematic summary of machine learning algorithms for defect detection in laser-based additive manufacturing (LBAM) processes is presented, including machine learning algorithm, material type, defect type, dataset type, and accuracy for various LBAM technologies.
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