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Predictive modelling of surface roughness and kerf widths in abrasive water jet cutting of Kevlar composites using neural network

机译:基于神经网络的凯夫拉纤维复合材料水射流切割中表面粗糙度和切缝宽度的预测建模

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摘要

Abrasive water jet cutting (AWJC) is one of the important non-traditional machining processes used for cutting of difficult-to-cut materials and intricate profiles. Cutting of Kevlar fibre reinforced polymer composites is a complex process, making it difficult to model, predict and improve the cut surface quality. This paper presents a detailed approach of the usage and effectiveness of a back-propagation neural network (NN) for modelling and prediction of three cut surface characteristics namely top kerf width, bottom kerf width and surface roughness (Ra) in AWJC of aerospace grade Kevlar-epoxy composites. Statistically designed full factorial experiments based on three process parameters [water jet pressure (WJP), abrasive flow rate (AFR) and quality level (QL)] at three levels each were conducted to generate the NN training database. The results demonstrate that the NN model was able to successfully model and predict the two kerf widths and surface roughness closely matching the experimental results.
机译:磨料水射流切割(AWJC)是重要的非传统机械加工工艺之一,用于切削难以切削的材料和复杂的轮廓。凯夫拉尔纤维增强聚合物复合材料的切割是一个复杂的过程,因此很难建模,预测和改善切割表面的质量。本文提出了一种使用反向传播神经网络(NN)进行建模和预测的详细方法,该模型用于预测和评估航空级凯夫拉尔AWJC中的三个切面特征,即顶部切口宽度,底部切口宽度和表面粗糙度(Ra) -环氧复合材料。基于三个过程参数[水喷射压力(WJP),磨料流速(AFR)和质量水平(QL)]的统计设计的全因子实验分别在三个级别上进行,以生成NN训练数据库。结果表明,NN模型能够成功地建模和预测两个切口宽度和表面粗糙度,与实验结果非常吻合。

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