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Application of orthogonal array technique and particle swarm optimization approach in surface roughness modification when face milling AISI1045 steel parts

机译:正交阵列技术和粒子群优化方法在AISI1045钢零件端面铣削表面粗糙度改性中的应用。

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Face milling is an important and common machining operation because of its versatility and capability to produce various surfaces. Face milling is a machining process of removing material by the relative motion between a work piece and rotating cutter with multiple cutting edges. It is an interrupted cutting operation in which the teeth of the milling cutter enter and exit the work piece during each revolution. This paper is concerned with the experimental and numerical study of face milling of AISI1045. The proposed approach is based on statistical analysis on the experimental data gathered using Taguchi design matrix. Surface roughness is the most important performance characteristics of the face milling process. In this study the effect of input face milling process parameters on surface roughness of AISI1045 steel milled parts have been studied. The input parameters are cutting speed (v), feed rate (fz) and depth of cut (ap). The experimental data are gathered using Taguchi L9 design matrix. In order to establish the relations between the input and the output parameters, various regression functions have been fitted on the data based on output characteristics. The significance of the process parameters on the quality characteristics of the process was also evaluated quantitatively using the analysis of variance method. Then, statistical analysis and validation experiments have been carried out to compare and select the best and most fitted models. In the last section of this research, mathematical model has been developed for surface roughness prediction using particle swarm optimization (PSO) on the basis of experimental results. The model developed for optimization has been validated by confirmation experiments. It has been found that the predicted roughness using PSO is in good agreement with the actual surface roughness.
机译:端面铣削由于其多功能性和生产各种表面的能力而成为重要且常见的加工操作。端面铣削是通过工件和具有多个切削刃的旋转刀具之间的相对运动来去除材料的加工过程。这是一种间断的切割操作,其中铣刀的齿在每次旋转时进入和离开工件。本文涉及AISI1045端面铣削的实验和数值研究。所提出的方法是基于对使用Taguchi设计矩阵收集的实验数据的统计分析。表面粗糙度是平面铣削过程中最重要的性能特征。在这项研究中,研究了输入面铣削工艺参数对AISI1045钢铣削零件的表面粗糙度的影响。输入参数是切削速度(v),进给速度(fz)和切削深度(ap)。使用田口L9设计矩阵收集实验数据。为了建立输入和输出参数之间的关系,已基于输出特性在数据上拟合了各种回归函数。还使用方差分析法定量评估了过程参数对过程质量特征的重要性。然后,进行了统计分析和验证实验,以比较和选择最佳和最拟合的模型。在本研究的最后一部分中,在实验结果的基础上,已经开发了使用粒子群优化(PSO)进行表面粗糙度预测的数学模型。通过优化实验验证了为优化而开发的模型。已经发现使用PSO的预测粗糙度与实际表面粗糙度非常吻合。

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