Anomaly Detection of Wire Arc Additively Manufactured Parts via Surface Tension Transfer through Unsupervised Machine Learning Techniques
Giulio Mattera(University of Naples Federico II), Zengxi Pan(University of Wollongong), Luigi Nele(University of Naples Federico II), Joseph Polden(University of Wollongong), Alessandra Caggiano(Fraunhofer Italia Research), Patrick Commins(University of Wollongong)
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