Exploring Machine Learning and Machine Vision in Femtosecond Laser Machining

Julia K. Hoskins, Han Hu, Min Zou
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Abstract

Abstract To achieve optimal results, femtosecond laser machining requires precise control of system variables such as Regenerative Amplifier Divider, Frequency, and Laser Power. To this end, two regression models, multi-layer perceptron (MLP) regression and Gaussian process regression (GPR) were used to define the complex relationships between these parameters of the laser system and the resulting diameter of a dimple fabricated on a 304 stainless-steel substrate by a 0.2-second laser pulse. In order to quantify dimple diameter accurately and quickly, machine vision was implemented as a processing step while incorporating minimal error. Both regression models were investigated by training with datasets containing 300, 600, 900, and 1210 data points to assess the effect of the dataset size on the training time and accuracy. Results showed that the GPR was approximately six times faster than the MLP model for all of the datasets evaluated. The GPR model accuracy stabilized at approximately 20% error when using more than 300 data points and training times of less than 5 s. In contrast, the MLP model accuracy stabilized at roughly 33% error when using more than 900 data points and training times ranging from 30 to 40 s. It was concluded that GPR performed much faster and more accurately than MLP regression and is more suitable for work with femtosecond laser machining.
飞秒激光加工中机器学习和机器视觉的探索
摘要:飞秒激光加工需要对再生放大器、分频、频率、激光功率等系统参数进行精确控制,以达到最佳加工效果。为此,采用多层感知器(MLP)回归和高斯过程回归(GPR)两种回归模型,定义了激光系统的这些参数与0.2秒激光脉冲在304不锈钢衬底上形成的韧窝直径之间的复杂关系。为了准确、快速地量化酒窝直径,将机器视觉作为一个处理步骤来实现,同时尽量减小误差。两种回归模型分别在包含300、600、900和1210个数据点的数据集上进行训练,以评估数据集大小对训练时间和准确性的影响。结果表明,对于所有评估的数据集,GPR比MLP模型快大约6倍。当使用300个数据点以上,训练时间小于5 s时,GPR模型精度稳定在20%左右。相比之下,当使用超过900个数据点和30到40秒的训练时间时,MLP模型的准确度稳定在大约33%的误差。结果表明,GPR比MLP回归更快、更准确,更适合飞秒激光加工。
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