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Optimization and Prediction of Cutting Parameters in the End Milling Process for Cast Aluminium B_4C Based Composite

机译:B_4C铸铝复合材料端铣切削参数的优化与预测。

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摘要

End milling process is a very common and important machining process not only due to its ease of machining but also due to the availability of various cutter profiles and curved surfaces. This research work investigates the effect of various process parameters, such as rotational speed of the cutting tool, feed rate, depth of cut on the machined surface of the composite, experimentally. The composite material is synthesized by using the stir casting process with reinforcement of B4C particulate into Al5083 aluminium alloy. The Taguchi design of experiments is used to calculate the optimum process parameters for machining with minimum variability. In this study, RSM (Response surface methodology) based equation is applied to Teaching-Learning-Based Optimization (TLBO) algorithm to optimize the process parameters. The mathematical model is developed with a confidence level of 95% with a prediction error of less than +/- 5%. The efficiency and effectiveness of the TLBO algorithm has been observed with the help of convergence graph of the value outcome from experiment. The optimized results obtained from TLBO are almost nearer to the average results of 10 runs.
机译:端铣加工是非常普遍且重要的加工过程,这不仅是因为其易于加工,而且还因为各种刀具轮廓和曲面的可用性。这项研究工作通过实验研究了各种工艺参数的影响,例如切削工具的转速,进给速度,复合材料加工表面上的切削深度。通过搅拌铸造工艺将B4C颗粒增强到Al5083铝合金中来合成复合材料。 Taguchi的实验设计用于计算最小可变性的最佳加工工艺参数。在这项研究中,将基于RSM(响应面方法)的方程式应用于基于教学-学习的优化(TLBO)算法,以优化过程参数。该数学模型的置信度为95%,预测误差小于+/- 5%。借助实验值结果的收敛图,观察到了TLBO算法的效率和有效性。从TLBO获得的优化结果几乎接近10次运行的平均结果。

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