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Hybrid ABC Optimized MARS-Based Modeling of the Milling Tool Wear from Milling Run Experimental Data

机译:基于铣削实验数据的混合ABC优化基于MARS的铣刀磨损建模

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摘要

Milling cutters are important cutting tools used in milling machines to perform milling operations, which are prone to wear and subsequent failure. In this paper, a practical new hybrid model to predict the milling tool wear in a regular cut, as well as entry cut and exit cut, of a milling tool is proposed. The model was based on the optimization tool termed artificial bee colony (ABC) in combination with multivariate adaptive regression splines (MARS) technique. This optimization mechanism involved the parameter setting in the MARS training procedure, which significantly influences the regression accuracy. Therefore, an ABC–MARS-based model was successfully used here to predict the milling tool flank wear (output variable) as a function of the following input variables: the time duration of experiment, depth of cut, feed, type of material, etc. Regression with optimal hyperparameters was performed and a determination coefficient of 0.94 was obtained. The ABC–MARS-based model's goodness of fit to experimental data confirmed the good performance of this model. This new model also allowed us to ascertain the most influential parameters on the milling tool flank wear with a view to proposing milling machine's improvements. Finally, conclusions of this study are exposed.
机译:铣刀是铣床中用于执行铣削操作的重要切削工具,铣削操作容易磨损和随后发生故障。在本文中,提出了一种实用的新型混合模型来预测铣刀的常规切削以及入口切削和出口切削中的刀具磨损。该模型基于称为人工蜂群(ABC)的优化工具,并结合了多元自适应回归样条(MARS)技术。这种优化机制涉及MARS训练过程中的参数设置,这极大地影响了回归精度。因此,这里成功地使用了基于ABC–MARS的模型来预测铣削刀具的侧面磨损(输出变量),它是以下输入变量的函数:实验的持续时间,切削深度,进给,材料类型等进行具有最佳超参数的回归,确定系数为0.94。基于ABC–MARS的模型对实验数据的拟合优度证实了该模型的良好性能。这个新模型还使我们能够确定铣削刀具侧面磨损中最有影响力的参数,以期提出铣削机床的改进建议。最后,揭露了这项研究的结论。

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