用回归和神经网络模型确定两束激光切割硅酸盐玻璃的参数

Y. Nikitjuk, A. N. Serdyukov, I. Aushev
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引用次数: 1

摘要

本文利用Ansys有限元分析程序中进行的数值实验结果,建立了双光束激光劈裂硅酸盐玻璃的神经网络和回归模型。在Ansys Workbench的DesignXplorer模块中,采用面心型中心复合设计获得了双光束激光玻璃切割的回归模型。以加工速度、激光束参数、玻璃板厚度、激光辐射与制冷剂影响区的距离为可变因素。采用激光加工区域的最高温度和热弹性拉伸应力作为响应。使用TensorFlow包构建和训练人工神经网络。比较了用神经网络和回归模型确定激光治疗区的最高温度和热弹性应力的结果。
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Determination of the parameters of two-beam laser splitting of silicate glasses using regression and neural network models
The current work takes the results of the numerical experiment implemented in the Ansys finite element analysis program to create the neural network and regression models of two-beam laser splitting of silicate glasses. The regression models of two-beam laser glass cutting have been obtained in the DesignXplorer module of Ansys Workbench using a face-centered version of the central composite design. The processing speed, the parameters of laser beams, the glass plate thickness, and the distance between the laser radiation and the refrigerant affected zones were used as variable factors. The maximum temperatures and thermoelastic tensile stresses in the laser processing area were used as responses. The artificial neural networks have been constructed and trained using the TensorFlow package. The results of determining the maximum temperatures and thermoelastic stresses in the laser treatment area using the neural network and regression models have been compared.
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