Abstract
This article presents a new way of evaluating the laser cutting process. We show that it is possible to deduce the underlying process parameters directly from the laser-cut edge using a convolutional neural network (CNN).For this purpose, we developed a suitable CNN architecture and generated a broad database of 3336 stainless steel (1.4301) edges that were cut with different combinations of four process parameters. RGB images and 3D point clouds of the edges were used as input to the network, and the process parameters were the regression targets (output). We found that the CNN estimates the process parameters well and performs better on the RGB images. The mean error is 1.1m/min, or 7% of the range, for the feed rate and 0.2mm, or 4% of the range, for the focus position.The proposed method could be used to monitor the condition of a laser cutting machine by evaluating an image of a cut edge. Because defective machine components can cause the actual process parameters (in the sheet metal) to differ from the set values, they can be identified quickly by comparing the CNN output with the chosen settings.As our approach offers a new perspective on the process, the visualisation of the CNN might offer a better understanding of the process. We applied layer-wise relevance propagation to visualise the relationship between each individual pixel of the input image and the output of the CNN. We show the potential of this technique with some examples.
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