Zaidi Sajid Raza, Butt Shahid Ikramullah, Khan Muhammad Ali, Faraz Muhammad Iftikhar, Jaffery Syed Husain Imran, Petru Jana
School of Mechanical and Manufacturing Engineering (SMME), National University of Sciences and Technology (NUST), Islamabad 44000, Pakistan.
Department of Mechanical Engineering, College of Electrical and Mechanical Engineering (CEME), National University of Sciences and Technology (NUST), Islamabad 44000, Pakistan.
Heliyon. 2024 Jun 29;10(13):e33726. doi: 10.1016/j.heliyon.2024.e33726. eCollection 2024 Jul 15.
Modern machining requires reduction in energy usage, surface roughness, and burr width to produce finished or near-finished parts. To ensure high surface quality in machining processes, it is crucial to minimize surface finish and minimize burr width, which are considered as significant parameters as specific cutting energy. The objective of this study was to identify the optimal machining parameters for milling in order to minimize surface roughness, burr width, and specific cutting energy. To achieve this, the research investigated the impact of feed per tooth, cutting speed, depth of cut, and number of inserts on the responses across three intervals using Taguchi L9 array. Observing the responses by varying these parameters, underlined the need for multi objective optimisation. Machining conditions of 0.14 mm/tooth , 350 m/min and 2 mm using 1 cutting insert (exp no 9) was identified as the best machining run using grey relational analysis owing to its highest grey relational grade of 0.936. ANOVA examination identified cutting speed as the leading factor impacting the grey relational grade with 31.07 % contribution ratio, with the number of inserts, depth of cut, and feed per tooth also making notable contributions. Conclusively, machining parameters identified through response surface optimisation resulted in 21.69 % improvement in surface finish, 11.39 % reduction in specific energy consumption, and 6.2 % decrease in burr width on the down milling side albeit with an increase of 9 % in burr width on the up-milling side.
现代加工要求降低能源消耗、表面粗糙度和毛刺宽度,以生产成品或接近成品的零件。为确保加工过程中的高表面质量,将表面光洁度和毛刺宽度降至最低至关重要,这两个指标与单位切削能量一样,被视为重要参数。本研究的目的是确定铣削的最佳加工参数,以最小化表面粗糙度、毛刺宽度和单位切削能量。为此,该研究使用田口L9阵列,研究了每齿进给量、切削速度、切削深度和刀片数量在三个区间内对响应的影响。通过改变这些参数观察响应结果,凸显了多目标优化的必要性。使用灰色关联分析,确定使用1个切削刀片(实验编号9)、每齿进给量0.14毫米、切削速度350米/分钟和切削深度2毫米的加工条件为最佳加工方案,因其最高灰色关联度为0.936。方差分析表明,切削速度是影响灰色关联度的主要因素,贡献率为31.07%,刀片数量、切削深度和每齿进给量也有显著贡献。总之,通过响应面优化确定的加工参数使表面光洁度提高了21.69%,单位能耗降低了11.39%,顺铣侧毛刺宽度减少了6.2%,尽管逆铣侧毛刺宽度增加了9%。