Optimization of femtosecond laser processing parameters of SiC using ANN-NSGA-II

Chen Li, Wanzhou Ren, Jing Wang
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Abstract

In the field of femtosecond laser machining, it is essential to select the appropriate process parameters to obtain near thermal damage-free and high efficient machining of SiC wafer. In this work, a method of process parameter optimization for femtosecond laser machining of 4H-SiC was proposed by using the predictive ability of the Artificial Neural Network (ANN) and the optimization algorithm of the non-dominated sorting genetic algorithm (NSGA-II). Firstly, the femtosecond laser was used to fabricate microgrooves on SiC wafers, and the effects of process parameters (laser average power, scanning speed and repetition rate) on groove depth, width, heat affected zone (HAZ) and material removal rate (MRR) were investigated. Secondly, The ANN model is established based on experimental data. Other experiments verify the accuracy of the model, and the average error in the model's predictions is around 5%. Thirdly, Pareto optimal solutions are obtained by global optimization of the ANN model using the NSGA-II. The experimental results show that the Pareto optimal solutions are effective and reliable. This proposed method offers dependable guidance for the selecting and optimizing process parameters of high hardness and brittle materials in the field of femtosecond laser processing, and reduces the cost of selecting the appropriate processing parameters in the production process. The method can also be extended to other machining means, such as turning and milling.
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使用 ANN-NSGA-II 优化 SiC 的飞秒激光加工参数
在飞秒激光加工领域,选择合适的工艺参数对于获得接近无热损伤和高效率的碳化硅晶片加工至关重要。本研究利用人工神经网络(ANN)的预测能力和非支配排序遗传算法(NSGA-II)的优化算法,提出了一种用于 4H-SiC 飞秒激光加工的工艺参数优化方法。首先,利用飞秒激光在碳化硅晶片上制作微槽,并研究了工艺参数(激光平均功率、扫描速度和重复率)对槽深、槽宽、热影响区(HAZ)和材料去除率(MRR)的影响。其次,根据实验数据建立了 ANN 模型。其他实验验证了模型的准确性,模型预测的平均误差约为 5%。第三,利用 NSGA-II 对 ANN 模型进行全局优化,获得帕累托最优解。实验结果表明,帕累托最优解是有效和可靠的。该方法为飞秒激光加工领域高硬度和脆性材料工艺参数的选择和优化提供了可靠的指导,降低了生产过程中选择合适工艺参数的成本。该方法还可扩展到其他加工手段,如车削和铣削。
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