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An integrated approach for the modelling of silicon carbide components laser milling process

机译:一种碳化硅部件激光铣削工艺建模的集成方法

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摘要

The paper deals with characterisation and modelling of laser milling process on silicon carbide hard ceramic. To this end, a Yb:YAG pulsed fiber laser was adopted to mill silicon carbide bars. Square pockets, 5x5 mm(2) in plane dimension, were machined at the maximum nominal average power (30W), under different laser process parameters: pulse frequency, scan speed, hatching distance, repetitions and scanning strategy. After machining, the achieved depth and the roughness parameters were measured by way of digital microscopy and 3D surface profiling, respectively. In addition, the material removal rate was calculated as the ratio between the removed volume/process time. Analysis of variance (ANOVA) was adopted to assess the effect of the process parameters on the achieved depth, the material removal rate (MRR) and roughness parameters, while response surface methodology (RSM) and artificial neuronal networks (ANNs) were adopted to model the process behaviours. Results show that both RSM and ANNs fault in MRR and RSm roughness parameters modelling. Thus, an integrated approach was developed to overcome the issue; the approach is based on the use of the RSM model to obtain a hybrid Training dataset for the ANNs. The results show that the approach can allow improvement in model accuracy. Graphical abstract
机译:本文涉及碳化硅硬质陶瓷激光铣削工艺的表征和建模。为此,采用Yb:YAG脉冲光纤激光器铣削碳化硅棒材。在不同的激光工艺参数(脉冲频率、扫描速度、影线距离、重复次数和扫描策略)下,以最大标称平均功率(30W)加工平面尺寸为5x5 mm(2)的方形型腔。加工后,分别通过数字显微镜和3D表面轮廓测量所达到的深度和粗糙度参数。此外,材料去除率计算为去除体积/处理时间之间的比率。采用方差分析(ANOVA)评估工艺参数对达到的深度、材料去除率(MRR)和粗糙度参数的影响,并采用响应面法(RSM)和人工神经元网络(ANNs)对工艺行为进行建模。结果表明:RSM和ANNs在MRR和RSm粗糙度参数建模中均存在故障。因此,开发了一种综合方法来克服这个问题;该方法基于使用 RSM 模型来获取 ANN 的混合训练数据集。结果表明,该方法可以提高模型的精度。图形摘要

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