首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers, Part B. Journal of engineering manufacture >Optimization of surface roughness in ball-end milling using teaching-learning-based optimization and response surface methodology
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Optimization of surface roughness in ball-end milling using teaching-learning-based optimization and response surface methodology

机译:基于教学的优化和响应表面方法的球终研磨表面粗糙度优化

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摘要

Surface roughness is one of the most important requirements of the finished products in machining process. The determination of optimal cutting parameters is very important to minimize the surface roughness of a product. This article describes the development process of a surface roughness model in high-speed ball-end milling using response surface methodology based on design of experiment. Composite desirability function and teaching-learning-based optimization algorithm have been used for determining optimal cutting process parameters. The experiments have been planned and conducted using rotatable central composite design under dry condition. Mathematical model for surface roughness has been developed in terms of cutting speed, feed per tooth, axial depth of cut and radial depth of cut as the cutting process parameters. Analysis of variance has been performed for analysing the effect of cutting parameters on surface roughness. A second-order full quadratic model is used for mathematical modelling. The analysis of the results shows that the developed model is adequate enough and good to be accepted. Analysis of variance for the individual terms revealed that surface roughness is mostly affected by the cutting speed with a percentage contribution of 47.18% followed by axial depth of cut by 10.83%. The optimum values of cutting process parameters obtained through teaching-learning-based optimization are feed per tooth (f(z))=0.06mm, axial depth of cut (A(p))=0.74mm, cutting speed (V-c)=145.8m/min, and radial depth of cut (A(e))=0.38mm. The optimum value of surface roughness at the optimum parametric setting is 1.11 mu m and has been validated by confirmation experiments.
机译:表面粗糙度是成品在加工过程中最重要的要求之一。最佳切削参数的测定非常重要,可以最小化产品的表面粗糙度。本文介绍了基于实验设计的响应表面方法的高速球端铣削表面粗糙度模型的开发过程。复合期望函数和基于教学的优化算法用于确定最佳切削过程参数。已经在干燥条件下使用可旋转的中央复合材料设计进行了实验和进行。表面粗糙度的数学模型已经在切割速度,每颗牙齿的饲料,轴向深度和切割径向深度作为切割过程参数方面进行了数学模型。已经进行了差异分析,用于分析切削参数对表面粗糙度的影响。二阶全准二次模型用于数学建模。结果分析表明,发达的模型足够充分,良好可接受。各种术语的差异分析表明,表面粗糙度大多受切割速度的影响,百分比为47.18%,然后轴向切割为10.83%。通过教学 - 基于教学的优化获得的切割过程参数的最佳值是每齿(F(Z))= 0.06mm,切割轴深(A(P))= 0.74mm,切割速度(Vc)= 145.8 M / min,切割径向深度(a(e))= 0.38mm。最佳参数设定下表面粗糙度的最佳值为1.11μm,并通过确认实验验证。

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