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Hauptverfasser: Huuk, Julia, Dhingra, Abheek, Ntoutsi, Eirini, Denkena, Berend
Format: Preprint
Veröffentlicht: 2024
Schlagworte:
Online-Zugang:https://arxiv.org/abs/2412.10341
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author Huuk, Julia
Dhingra, Abheek
Ntoutsi, Eirini
Denkena, Berend
author_facet Huuk, Julia
Dhingra, Abheek
Ntoutsi, Eirini
Denkena, Berend
contents This paper presents an innovative method for predicting shape errors in 5-axis machining using graph neural networks. The graph structure is defined with nodes representing workpiece surface points and edges denoting the neighboring relationships. The dataset encompasses data from a material removal simulation, process data, and post-machining quality information. Experimental results show that the presented approach can generalize the shape error prediction for the investigated workpiece geometry. Moreover, by modelling spatial and temporal connections within the workpiece, the approach handles a low number of labels compared to non-graphical methods such as Support Vector Machines.
format Preprint
id arxiv_https___arxiv_org_abs_2412_10341
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Shape error prediction in 5-axis machining using graph neural networks
Huuk, Julia
Dhingra, Abheek
Ntoutsi, Eirini
Denkena, Berend
Systems and Control
Machine Learning
This paper presents an innovative method for predicting shape errors in 5-axis machining using graph neural networks. The graph structure is defined with nodes representing workpiece surface points and edges denoting the neighboring relationships. The dataset encompasses data from a material removal simulation, process data, and post-machining quality information. Experimental results show that the presented approach can generalize the shape error prediction for the investigated workpiece geometry. Moreover, by modelling spatial and temporal connections within the workpiece, the approach handles a low number of labels compared to non-graphical methods such as Support Vector Machines.
title Shape error prediction in 5-axis machining using graph neural networks
topic Systems and Control
Machine Learning
url https://arxiv.org/abs/2412.10341