Determination of the Parameters of Controlled Laser Thermal Cleavage of Crystalline Silicon Using Regression and Neural Network Models

IF 0.6 4区 材料科学 Q4 CRYSTALLOGRAPHY
Yu. V. Nikitjuk, A. N. Serdyukov
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引用次数: 0

Abstract

Regression and neural network models of controlled laser thermal cleavage of crystalline silicon have been built on the basis of the results of the finite element calculation obtained in a numerical experiment with the central composite design. The analysis of thermoelastic fields has been carried out for the cases of exposure to laser radiation with wavelengths of 1.06 and 0.808 μm in six anisotropy versions. The processing rate, silicon wafer thickness, and laser beam parameters have been used as variable factors. An artificial neural network architecture providing the best prognosis of thermoelastic stresses and temperatures in the laser processing zone has been established. The neural network and regression models have been compared. The neural network models are found to be moreaccurate as compared with the regression ones.

Abstract Image

利用回归和神经网络模型确定晶体硅受控激光热裂解参数
摘要 根据中心复合设计数值实验中获得的有限元计算结果,建立了晶体硅受控激光热裂解的回归和神经网络模型。在波长为 1.06 和 0.808 μm 的激光辐射下,对六种各向异性情况下的热弹性场进行了分析。加工速率、硅片厚度和激光束参数被用作可变因素。建立了一个人工神经网络架构,该架构能对激光加工区的热弹性应力和温度做出最佳预测。对神经网络和回归模型进行了比较。结果发现,神经网络模型比回归模型更精确。
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来源期刊
Crystallography Reports
Crystallography Reports 化学-晶体学
CiteScore
1.10
自引率
28.60%
发文量
96
审稿时长
4-8 weeks
期刊介绍: Crystallography Reports is a journal that publishes original articles short communications, and reviews on various aspects of crystallography: diffraction and scattering of X-rays, electrons, and neutrons, determination of crystal structure of inorganic and organic substances, including proteins and other biological substances; UV-VIS and IR spectroscopy; growth, imperfect structure and physical properties of crystals; thin films, liquid crystals, nanomaterials, partially disordered systems, and the methods of studies.
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