Toward data-driven research: preliminary study to predict surface roughness in material extrusion using previously published data with Machine Learning
F\'atima Garc\'ia-Mart\'inez, Diego Carou, Francisco de, Arriba-P\'erez, Silvia Garc\'ia-M\'endez

TL;DR
This study leverages machine learning to predict surface roughness in material extrusion additive manufacturing, reducing the need for extensive experimental trials by analyzing literature and experimental data.
Contribution
It introduces a data-driven predictive model that estimates surface roughness from key printing parameters, demonstrating high accuracy with literature and experimental data.
Findings
Achieved 0.93 correlation with literature data
Mean absolute percentage error of 13% on literature data
Correlation of 0.79 and 8% error on own experimental data
Abstract
Material extrusion is one of the most commonly used approaches within the additive manufacturing processes available. Despite its popularity and related technical advancements, process reliability and quality assurance remain only partially solved. In particular, the surface roughness caused by this process is a key concern. To solve this constraint, experimental plans have been exploited to optimize surface roughness in recent years. However, the latter empirical trial and error process is extremely time- and resource-consuming. Thus, this study aims to avoid using large experimental programs to optimize surface roughness in material extrusion. Methodology. This research provides an in-depth analysis of the effect of several printing parameters: layer height, printing temperature, printing speed and wall thickness. The proposed data-driven predictive modeling approach takes advantage…
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Taxonomy
MethodsSPEED: Separable Pyramidal Pooling EncodEr-Decoder for Real-Time Monocular Depth Estimation on Low-Resource Settings
