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A fuzzy-genetic system to predict the cutting force in microdrilling processes

机译:用于预测微钻加工切削力的模糊遗传系统

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This paper presents the modeling of thrust force in microdrilling processes of five commonly used alloys (titanium-based, tungsten-based, aluminum-based and invar). The process was carried out by peck drilling and the influence of five parameters (drill diameter, cutting speed, feed rate, one-step feed length and total drilling length) on the behavior of the thrust force was considered. A fuzzy system was used for describing these relationships and genetic algorithms were used for fitting the parameters of the model from the experimental data. Finally a comparison with a traditional cutting model obtained with a regression model was made showing both models a similar correlation values (R), 0.84 for the regression model and 0.86 for the fuzzy-genetic system. However, the fuzzy model showed a better generalization capability (> 0.9) than the regression model, (very poor, near to 0).
机译:本文介绍了五种常用合金(钛基,钨基,铝基和殷钢)的微钻工艺中的推力建模。该过程是通过啄钻进行的,并考虑了五个参数(钻头直径,切削速度,进给速度,一步进给长度和总钻进长度)对推力性能的影响。使用模糊系统描述这些关系,并使用遗传算法根据实验数据拟合模型的参数。最后,与通过回归模型获得的传统切削模型进行了比较,显示两个模型具有相似的相关值(R),回归模型为0.84,模糊遗传系统为0.86。但是,模糊模型显示出比回归模型更好的泛化能力(> 0.9)(非常差,接近0)。

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