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Prediction and Optimization Approaches for Modeling and Selection of Optimum Machining Parameters in CNC down Milling Operation

机译:数控下铣床最佳加工参数建模与选择的预测和优化方法

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In this study, we suggested intelligent approach to predict and optimize the cutting parameters when down milling of 45# steel material with cutting tool PTHK- (?10*20C*10D*75L) -4F-1.0R under dry condition. The experiments were performed statistically according to four factors with three levels in Taguchi experimental design method. Adaptive Neuro-fuzzy inference system is utilized to establish the relationship between the inputs and output parameter exploiting the Taguchi orthogonal array L27. The Particle Swarm Optimized-Adaptive Neuro-Fuzzy Inference System (PSOANFIS) is suggested to select the best cutting parameters providing the lower surface through from the experimental data using ANFIS models to predict objective functions. The PSOANFIS optimization approach that improves the surface quality from 0.212 to 0.202, as well as the cutting time is also reduced from 7.5 to 4.78 sec according to machining parameters before and after optimization process. From these results, it can be readily achieved that the advanced study is trusted and suitable for solving other problems encountered in metal cutting operations and the same surface roughness.
机译:在这项研究中,我们提出了一种智能方法来预测和优化在干燥条件下使用切削刀具PTHK-(?10 * 20C * 10D * 75L)-4F-1.0R铣削45#钢材时的切削参数。在田口实验设计方法中,按照三个层次的四个因素对实验进行统计。利用田口正交阵列L27,利用自适应神经模糊推理系统建立输入和输出参数之间的关系。建议使用粒子群优化自适应神经模糊推理系统(PSOANFIS)从使用ANFIS模型预测实验功能的实验数据中选择提供下表面的最佳切削参数。 PSOANFIS优化方法可根据优化前后的加工参数将表面质量从0.212改善到0.202,并将切削时间从7.5 sec减少到4.78 sec。根据这些结果,可以很容易地实现高级研究的信任,并适合解决金属切削操作中遇到的其他问题以及相同的表面粗糙度。

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