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Influence of Lead Angle Variation on the Coated Carbide Inserts Wear when Milling CGI and Modeling by Artificial Neural Networks and Regression Analysis Method

机译:铣削CGI时导程角变化对涂层硬质合金刀片磨损的影响以及通过人工神经网络和回归分析方法建模

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The aim of this research is to investigate the influence of lead angle, cutting speed and the maximum chip thickness on tool wear in face milling process of compacted graphite iron. Tool failure modes and wear mechanisms for all cutting tools were examined in respect of various cutting parameters and were evaluated on the base of the flank wear. SEM analyses of the cutting inserts were performed and experimental results have been modelled with artificial neural networks (ANN) and regression analysis. A comparison of ANN model with regression model is also carried out. Predictive ANN model is found to be capable of better predictions for flank wear within the range used in network training. The R2 values for testing data were calculated as 0.992 for ANN and 0.998 for regression analysis, respectively. This study is considered to be helpful in predicting the wear mechanism of the coated carbide insert in the machining of compacted graphite iron.
机译:这项研究的目的是研究在压实石墨铁的端面铣削过程中,导程角,切削速度和最大切屑厚度对刀具磨损的影响。针对所有切削参数检查了所有切削刀具的刀具失效模式和磨损机理,并基于侧面磨损对其进行了评估。进行了切削刀片的SEM分析,并使用人工神经网络(ANN)和回归分析对实验结果进行了建模。还进行了ANN模型与回归模型的比较。发现预测性ANN模型能够更好地预测在网络训练中使用的范围内的侧面磨损。测试数据的R2值对于ANN计算为0.992,对于回归分析计算为0.998。该研究被认为有助于预测压实石墨铁加工中涂层硬质合金刀片的磨损机理。

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