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Application of GA to optimize cutting conditions for minimizing surface roughness in end milling machining process

机译:应用遗传算法优化切削条件以最小化端铣加工过程中的表面粗糙度

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摘要

This study is carried out to observe the optimal effect of the radial rake angle of the tool, combined with speed and feed rate cutting conditions in influencing the surface roughness result. In machining, the surface roughness value is targeted as low as possible and is given by the value of the optimal cutting conditions. By looking at previous studies, as far as they have been reviewed, it seems that the application of GA optimization techniques for optimizing the cutting conditions value of the radial rake angle for minimizing surface roughness in the end milling of titanium alloy is still not given consideration by researchers. Therefore, having dealt with radial rake angle machining parameter, this study attempts the application of GA to find the optimal solution of the cutting conditions for giving the minimum value of surface roughness. By referring to the real machining case study, the regression model is developed. The best regression model is determined to formulate the fitness function of the GA. The analysis of this study has proven that the GA technique is capable of estimating the optimal cutting conditions that yield the minimum surface roughness value. With the highest speed, lowest feed rate and highest radial rake angle of the cutting conditions scale, the GA technique recommends 0.138 μm as the best minimum predicted surface roughness value. This means the GA technique has decreased the minimum surface roughness value of the experimental sample data, regression modelling and response surface methodology technique by about 27%, 26% and 50%, respectively.
机译:进行这项研究是为了观察刀具径向前角的最佳效果,并结合速度和进给速度切削条件对表面粗糙度结果的影响。在加工中,表面粗糙度值应尽可能低,并由最佳切削条件的值给出。通过回顾以前的研究,就其综述而言,似乎仍未考虑将GA优化技术用于优化径向前角切削条件值以最小化钛合金立铣刀中的表面粗糙度的应用。由研究人员。因此,在研究了径向前角加工参数后,本研究尝试使用遗传算法找到切削条件的最佳解决方案,以给出最小的表面粗糙度值。通过参考实际加工案例研究,开发了回归模型。确定最佳回归模型以制定GA的适应度函数。这项研究的分析证明,GA技术能够估算出产生最小表面粗糙度值的最佳切削条件。在切削条件范围内具有最高速度,最低进给速度和最高径向前角的情况下,GA技术建议将0.138μm作为最佳的最小预测表面粗糙度值。这意味着GA技术已将实验样品数据,回归建模和响应表面方法技术的最小表面粗糙度值分别降低了约27%,26%和50%。

著录项

  • 来源
    《Expert systems with applications》 |2010年第6期|p.4650-4659|共10页
  • 作者单位

    Department of Modelling and Industrial Computing, Faculty of Computer Science and Information System, Universiti Teknologi Malaysia, 81310 UTM Skudai Johor, Malaysia;

    Department of Modelling and Industrial Computing, Faculty of Computer Science and Information System, Universiti Teknologi Malaysia, 81310 UTM Skudai Johor, Malaysia;

    Department of Manufacturing and Industrial Engineering, Faculty of Mechanical Engineering, Universiti Teknologi Malaysia, 81310 UTM Skudai Johor, Malaysia;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    genetic algorithm; optimization; surface roughness; milling;

    机译:遗传算法优化;表面粗糙度;铣削;
  • 入库时间 2022-08-17 13:33:17

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