An Evaluation of Classification Methods for 3D Printing Time-Series Data

Additive Manufacturing presents a great application area for Machine Learning because of the vast volume of data generated and the potential to mine this data to control outcomes. In this paper we present preliminary work on classifying infrared time-series data representing melt-pool temperature in...

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Bibliographic Details
Main Authors Mahato, Vivek, Obeidi, Muhannad Ahmed, Brabazon, Dermot, Cunningham, Padraig
Format Journal Article
LanguageEnglish
Published 02.10.2020
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Summary:Additive Manufacturing presents a great application area for Machine Learning because of the vast volume of data generated and the potential to mine this data to control outcomes. In this paper we present preliminary work on classifying infrared time-series data representing melt-pool temperature in a metal 3D printing process. Our ultimate objective is to use this data to predict process outcomes (e.g. hardness, porosity, surface roughness). In the work presented here we simply show that there is a signal in this data that can be used for the classification of different components and stages of the AM process. In line with other Machine Learning research on time-series classification we use k-Nearest Neighbour classifiers. The results we present suggests that Dynamic Time Warping is an effective distance measure compared with alternatives for 3D printing data of this type.
DOI:10.48550/arxiv.2010.00903