Publication | Open Access
Decision Tree Methods for Predicting Surface Roughness in Fused Deposition Modeling Parts
73
Citations
20
References
2019
Year
Geometric ModelingMaterials ScienceIndustrial DesignSolid ModelingEngineeringDecision Tree MethodsSurface RoughnessNatural SciencesMechanical EngineeringAdvanced ManufacturingComputer-aided DesignSurface FinishManufacturing EngineeringComputational GeometryFdm PartsRandom Forest3D PrintingDecision Tree Algorithms
3D printing using fused deposition modeling (FDM) includes a multitude of control parameters. It is difficult to predict a priori what surface finish will be achieved when certain values are set for these parameters. The objective of this work is to compare the models generated by decision tree algorithms (C4.5, random forest, and random tree) and to analyze which makes the best prediction of the surface roughness in polyethylene terephthalate glycol (PETG) parts printed in 3D using the FDM technique. The models have been created using a dataset of 27 instances with the following attributes: layer height, extrusion temperature, print speed, print acceleration, and flow rate. In addition, a dataset has been created to evaluate the models, consisting of 15 additional instances. The models generated by the random tree algorithm achieve the best results for predicting the surface roughness in FDM parts.
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