Issue |
MATEC Web Conf.
Volume 368, 2022
NEWTECH 2022 – The 7th International Conference on Advanced Manufacturing Engineering and Technologies
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Article Number | 01019 | |
Number of page(s) | 12 | |
Section | Advanced Manufacturing Engineering and Technologies | |
DOI | https://doi.org/10.1051/matecconf/202236801019 | |
Published online | 19 October 2022 |
In-situ prediction of the spatial surface roughness profile during slot milling
KTH Royal Institute of Technology, Stockholm 08544, Sweden
Quality inspection is traditionally considered non-productive. That is why the manufacturing industries aim to decrease inspection times to a bare minimum without sacrificing part quality. Alongside the implementation of the Industry 4.0 paradigm, data-driven in-situ quality control is a potential enabler for minimizing inspection times. In that, the surface roughness parameter prediction is the subject of a large body of research, but studies on the spatial surface roughness profile prediction are limited. This research contributes to this field by using vibration signals and physics-informed machine learning models for the in-situ prediction of the surface roughness profile. A tri-axial accelerometer mounted on the machine tool spindle is used to capture the vibrations during a slot milling process. For one tool revolution during a stable cut, the observed acceleration in the three axes and the surface roughness profile are periodic. A model is constructed to establish the correlation between the input signals and the spatial surface roughness profile by utilizing a physics-based model of the tool trajectory together with a two-layer feed-forward neural network. Furthermore, the feature engineering of denoised velocities and displacements derived by the numerical integration of the acceleration signals improves the prediction performance with overfitting. The results show a good correlation between the spatial surface roughness and the accelerometer signals.
Key words: surface roughness / data-driven modeling / physics-informed machine learning
© The Authors, published by EDP Sciences, 2022
This is an Open Access article distributed under the terms of the Creative Commons Attribution License 4.0, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
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