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Parametric modelling on prediction of surface finish in turning of difficult-to-machine steels

机译:难加工钢车削表面光洁度预测的参数化建模

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摘要

Parametric modelling based on, multiple regression analysis (MRA), artificial neural networks (ANN) and case-based reasoning (CBR) is developed to predict surface finish during the turning process. Experiments are conducted on difficult-to-machine steels such as AISI 504, AISI D2 and AISI 52100 under different machining conditions with cutting tools viz., multicoated carbide, cermet and alumina inserts. The influence of each input (machining) parameter on surface finish obtained on the workpiece has been determined using analysis of variance (ANOVA) technique. 114 experimental data sets are used for developing the parametric models. 20 sets of validation experiments are conducted in order to evaluate the performance of the developed models. The models are compared based on certain quantitative (statistical measures) and qualitative aspects. It is concluded that CBR model outperformed the other two models in predicting surface finish for the machining conditions considered to a reasonable accuracy.
机译:开发了基于多元回归分析(MRA),人工神经网络(ANN)和基于案例的推理(CBR)的参数模型,以预测车削过程中的表面光洁度。在不同的加工条件下,使用切削工具,即多层涂层硬质合金,金属陶瓷和氧化铝刀片,对难加工的钢(例如AISI 504,AISI D2和AISI 52100)进行了实验。使用方差分析(ANOVA)技术已经确定了每个输入(加工)参数对在工件上获得的表面光洁度的影响。 114个实验数据集用于开发参数模型。为了评估开发模型的性能,进行了20套验证实验。根据某些定量(统计量)和定性方面对模型进行比较。结论是,在考虑合理精度的加工条件下,CBR模型在预测表面光洁度方面优于其他两个模型。

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