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Parameter optimization of non-vertical laser cutting

机译:非垂直激光切割的参数优化

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摘要

In some cases, in order to avoid interference during 3D laser cutting of thin metal a laser head could not be kept vertical to the surface of a work piece. In such situations, the cutting quality depends not only on “typical” cutting parameters but also on the slant angle of the laser head. Traditionally, many tests had to be done in order to obtain the best cutting results. In this paper, an experimental design is employed to reduce the number of tests and an artificial neural network (ANN) is set up to describe quantitatively the relationship between cutting quality and cutting parameters in the non-vertical laser cutting situation. A quality point system is used to evaluate the cutting result of the thin sheet quantitatively. Testing of this novel method shows that the calculated “quality point” using ANN is quite closely in accord with the actual cutting result. The ANN is very successful for optimizing parameters, predicting cutting results and deducing new cutting information.
机译:在某些情况下,为了避免在薄金属的3D激光切割过程中产生干扰,激光头无法保持垂直于工件表面。在这种情况下,切割质量不仅取决于“典型”切割参数,而且取决于激光头的倾斜角度。传统上,必须进行许多测试才能获得最佳切割效果。本文采用实验设计来减少测试次数,并建立了人工神经网络(ANN)来定量描述非垂直激光切割情况下切割质量与切割参数之间的关系。质量点系统用于定量评估薄片的切割结果。对这种新方法的测试表明,使用人工神经网络计算出的“质量点”与实际切割结果非常接近。人工神经网络在优化参数,预测切割结果和推导新的切割信息方面非常成功。

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