The Combination of Taguchi and Proximity Indexed Value Methods for Multi-criteria Decision Making When Milling

Q3 Engineering
N. L. Khanh, N. Cuong
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引用次数: 3

Abstract

Milling is a commonly used method in mechanical machining. This is considered to be the method for the highest productivity among cutting methods. Moreover, the quality of the machined surface is increasingly improved as well as the machining productivity is increasingly enhanced thanks to the development of machine tool and cutting tool manufacturing technology. Therefore, in each specific processing condition (about machine, tool and part material, and other conditions), specific studies are required to determine the value of technological parameters in order to improve productivity and machining accuracy. Only in this way can we take full advantage of the capabilities of modern equipment. The process parameters in the milling method in particular and in the machining and cutting methods in general can be easily adjusted by the machine operator as the parameters of the cutting parameters or the change of tool types. In this article, the combination of Taguchi and Proximity Indexed Value (PIV) methods is presented for multi-criteria decision making in milling. An experimental matrix was designed according to Taguchi method with five input parameters, including the insert materials (TiN, TiCN, and TiAlN), nose radius, cutting velocity, feed rate and depth of cut. The total number of experiments that were performed was twenty-seven. The workpiece used during the experiment was SCM440 steel. At each experiment, the surface roughness was measured and the Material Removal Rate (MRR) was calculated. The weights of these two parameters have been chosen by the decision maker on the basis of consultation with experts. The PIV method was applied to determine the experiment at which the minimum surface roughness and the maximum MRR were simultaneously guaranteed. In addition, the influence of input parameters on surface roughness was also found in this study.
多准则铣削决策中的田口指标值法与邻近指标值法的结合
铣削是机械加工中常用的一种方法。这被认为是切削方法中生产率最高的方法。此外,由于机床和刀具制造技术的发展,加工表面的质量日益提高,加工生产率也日益提高。因此,在每一个具体的加工条件下(关于机床、刀具和零件材料等条件),都需要进行具体的研究,确定工艺参数的取值,以提高生产率和加工精度。只有这样,我们才能充分利用现代设备的能力。特别是铣削方法中的工艺参数,以及一般的加工和切削方法中的工艺参数,可以很容易地由机床操作员进行调整,如切削参数的参数或刀具类型的变化。提出了将田口法与邻近指数值法相结合的铣削多准则决策方法。根据田口法设计实验矩阵,输入5个参数,包括切削齿材料(TiN、TiCN和TiAlN)、刀尖半径、切削速度、进给速度和切削深度。总共进行了27次实验。实验所用工件为SCM440钢。在每次实验中,测量表面粗糙度并计算材料去除率(MRR)。这两个参数的权重由决策者在咨询专家的基础上确定。采用PIV法确定了同时保证最小表面粗糙度和最大MRR的实验。此外,本研究还发现了输入参数对表面粗糙度的影响。
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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来源期刊
International Journal of Mechanics
International Journal of Mechanics Engineering-Computational Mechanics
CiteScore
1.60
自引率
0.00%
发文量
17
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