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Estimation and Optimization Cutting Conditions of Surface Roughness in Hard Turning Using Taguchi Approach and Artificial Neural Network

机译:用TAGUCHI方法和人工神经网络估计和优化表面粗糙度的表面粗糙度的切割条件

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摘要

One of the most important requirements of part manufacturing is the surface quality. This is so because the most important part is meeting the specific requirements of customers. The surface roughness is a leading indicator of the quality of the machined surface Parts. In the present work in an experimental study to achieve by application of Taguchi method to investigate the effect of three parameters, which known as cutting speeds of (45, 90, and 135 m/min), feed rate of (0.1, 0.2, and 0.3 mm/rev), and cut depth of (0.05, 0.1, and 0.15 mm) on performance measure of surface roughness (Ra). Thus to determine the optimal levels and to analyze the cutting parameter's effect on the surface finish values by employing different method of Orthogonal array, S/N ratio, analysis of variance (ANOVA). During our work two models for prediction have been used. The first one is known as the method of regression analysis, and the second is the method of Adaptive - Neural Network (ANN) relying on practical results. The achieved results show that the estimation and prediction ability of neural networks is better than the regression analysis. Experimental results confirmed with optimal levels of the machining parameters which are clarified by using Taguchi optimization method. Also, the indicated results of the Taguchi's method show its ability to improve the process.
机译:部分制造的最重要要求之一是表面质量。这是因为最重要的部分是满足客户的具体要求。表面粗糙度是加工表面部件质量的领先指示器。在目前在实验研究中的应用借用Taguchi方法来探讨三种参数的效果,称为(45,90和135米/分钟)的切削速度,进料速率(0.1,0.2,和0.3 mm / rev),切割表面粗糙度(Ra)的性能测量(0.05,0.1和0.15 mm)的深度。因此,通过采用不同的正交阵列,S / N比,方差分析(ANOVA)来确定最佳水平并分析切割参数对表面光洁度值的影响。在我们的工作期间,使用了两个预测模型。第一个被称为回归分析方法,第二个是依赖实际结果的自适应神经网络(ANN)的方法。达到的结果表明,神经网络的估计和预测能力优于回归分析。通过使用Taguchi优化方法阐明的加工参数的最佳水平证实了实验结果。此外,Taguchi方法的指示结果表明其改进过程的能力。

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