4.7 Article

Surface roughness prediction through GAN-synthesized power signal as a process signature*

Journal

JOURNAL OF MANUFACTURING SYSTEMS
Volume 68, Issue -, Pages 660-669

Publisher

ELSEVIER SCI LTD
DOI: 10.1016/j.jmsy.2023.05.016

Keywords

Machining; Surface roughness; Process signature; Generative adversarial network; Convolutional neural network; Machining power

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Predicting machined surface roughness is essential for estimating part performance characteristics, but there is a lack of quantitative association between machining power and surface roughness. This paper presents a method using a conditional generative adversarial network (CGAN) to synthesize power signals and augment measured signals for predicting surface roughness. The experiments show that data augmentation by CGAN significantly improves the accuracy of surface roughness prediction.
Predicting machined surface roughness is critical for estimating a part's performance characteristics such as susceptibility to fatigue and corrosion. Prior studies have indicated that power consumed at the tool-chip interface may represent an indicator for the surface integrity of the machining process. However, no quantitative association has been reported between the machining power and surface roughness due to a lack of data to develop predictive models. This paper presents a data synthesis method to address this gap. Specifically, a conditional generative adversarial network (CGAN) is developed to synthesize power signals associated with varying process parameter combinations. The quality of the synthesized signals is evaluated against experimentally measured power signals by examining the consistency in: 1) the spatial pattern of the signals induced by the cutting process as shown in the frequency domain, and 2) the temporal pattern as shown in the clustering of the synthesized and measured signals corresponding to the same parameter combination. The synthesized signals are then used to augment the measured signals and develop a convolutional neural network (CNN) for predicting the machined surface roughness. Experiments performed using H13 tool steel have shown that data augmentation by CGAN has effectively reduced the error of the surface roughness prediction from 58 %, when no synthetic data is used for CNN training, to 9.1 % when 250 synthetic samples are used. The results demonstrate the effectiveness of CGAN as a data augmentation method and CNN for mapping machining power to surface roughness.

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