Taguchi Dizayn ile belirlenen optimum ANN kullanarak kriyojenik işlem uygulanmış ve uygulanmamış kesici takımlarla elde edilen kesme kuvvetlerinin tahmini

Şehmus Baday, H. Gürbüz, Onur Ersöz
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Abstract

This experimental and statistical study addresses the prediction of cutting forces by using the optimum Artificial Neural Network employed by Taguchi design. For this purpose, input and output transfer function and training algorithm were selected as control parameters, while Mean Square Error was chosen as output parameters for evaluating optimum ANN structure with S/N ratios. ANN structure was optimized through Taguchi L9 orthogonal design, which occurred 5 set-up for utilizing all training function. According to MSE values of S/N ratios, each set-up was compared with the obtained prediction of making values of cutting forces to the optimal result. For each set, the hidden transfer function, output transfer function and training function used in the optimal ANN structure were determined. The optimal ANN structure for cutting forces obtained in turning experiments were logsig transfer function in hidden layer, Tlm training function and pureline transfer function in output layer, while R square was at 0.999945. It was found that ANN based Taguchi orthogonal design was successful in evaluating the experimental results.
使用田口设计确定的最佳 ANN 预测经过低温处理和未经过低温处理的刀具所获得的切削力
本实验和统计研究采用田口设计的最佳人工神经网络来预测切削力。为此,选择输入和输出传递函数以及训练算法作为控制参数,同时选择均方误差作为输出参数,以评估具有信噪比的最佳人工神经网络结构。通过田口 L9 正交设计对 ANN 结构进行了优化,利用所有训练函数进行了 5 次设置。根据信噪比的 MSE 值,将每个设置与获得的切削力预测值进行比较,以获得最佳结果。对于每一组,确定了最优 ANN 结构中使用的隐藏传递函数、输出传递函数和训练函数。车削实验中获得的切削力最佳方差网络结构为:隐藏层的 logsig 传递函数、Tlm 训练函数和输出层的 pureline 传递函数,R 平方为 0.999945。研究发现,基于田口正交设计的方差网络能够成功评估实验结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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