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首页> 外文期刊>Manufacturing Review >Modelling and optimization of Nd:YAG laser micro-turning process during machining of aluminum oxide (Al_2O_3) ceramics using response surface methodology and artificial neural network
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Modelling and optimization of Nd:YAG laser micro-turning process during machining of aluminum oxide (Al_2O_3) ceramics using response surface methodology and artificial neural network

机译:响应面法和人工神经网络的铝氧化铝(AL_2O_3)陶瓷加工过程中Nd:YAG激光微调过程的建模与优化

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摘要

Pulsed Nd:YAG laser has high intensity and high quality beam characteristics, which can be used to produce micro-grooves and micro-turning surface on advanced engineering ceramics. The present research attempts to develop mathematical models by using response surface methodology approach for correlating the machining process parameters and the process responses during laser micro-turning of aluminum oxide (Al_2O_3) ceramics. The process parameters such as laser average power, pulse frequency, workpiece rotating speed, assist air pressure and Y feed rate were varied during experimentation. The rotatable central composite design experimental planning has been used to design the experimentation. The performance measures considered are surface roughness (Ra) and micro-turning depth deviation. Multi-objective optimization has been carried out for achieving the desired surface roughness as well as minimum depth deviation during laser micro-turning operation. Further, an artificial neural network (ANN) model has been developed to predict the process criteria. Levenberg-Marquadt training algorithm is used for multilayer feed forward backpropagation neural network. The developed ANN model has 5-10-2 feed forward network. There are 5 neurons in the input layer, 10 neurons in the hidden layer and 2 neurons in the output layers corresponding to two output responses, respectively. The developed ANN model has been validated using data obtained by conducting additional set of experiments. It was found that the developed ANN model can predict the process criteria more accurately than response surface methodology (RSM) based developed models.
机译:脉冲Nd:YAG激光具有高强度和高质量的光束特性,可用于在先进的工程陶瓷上生产微槽和微型转动表面。本研究试图通过使用响应面方法方法来开发数学模型,用于在氧化铝(AL_2O_3)陶瓷的激光微转向期间的加工过程参数和过程响应。在实验期间,改变了激光平均功率,脉冲频率,工件旋转速度,辅助空气压力和Y进料速率的过程参数。可旋转的中央复合设计实验规划已被用于设计实验。所考虑的性能措施是表面粗糙度(RA)和微调深度偏差。已经进行了多目标优化,用于实现期望的表面粗糙度以及激光微型转动操作期间的最小深度偏差。此外,已经开发了一种人工神经网络(ANN)模型来预测过程标准。 Levenberg-Marquadt训练算法用于多层馈送前进背交神经网络。开发的ANN型号有5-10-2馈线前向网络。输入层中有5个神经元,隐藏层中的10个神经元,输出层中的2个神经元分别对应于两个输出响应。使用通过进行额外一组实验获得的数据验证了开发的ANN模型。发现开发的ANN模型可以比基于响应表面方法(RSM)的开发模型更准确地预测过程标准。

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