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Predictive modelling and analysis of surface roughness in CNC milling of green alumina using response surface method and genetic algorithm

机译:响应面法和遗传算法用CNC铣削表面粗糙度的预测建模与分析

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摘要

Modelling and optimization of machining parameters are essential in Computer Numerical Control (CNC) milling process. The objective of current study is to develop a functional relationship between various factors and responses of CNC machined alumina green ceramic compact. As, ceramic material is notch sensitive in nature, the measurement of average surface roughness (Ra) is vital as it influences the quality and performance of the finished product. In this context, optimization of surface roughness is of maximum importance in manufacturing sectors. To accomplish the required optimal levels of surface quality, the proper selection of machining parameters in CNC milling is highly needed. In this study, four significant machining parameters including spindle speed, XY speed, Z speed and depth of cut in CNC milling process have been selected and along with various combination experiments were conducted. A mathematical regression model was developed to predict the average surface roughness in CNC milling machined surface of alumina based green ceramic compact. The developed model was validated with the new experimental data. Further, the model was coupled with Genetic Algorithm (GA) technique, to predict the optimum possible surface roughness. The results demonstrate the potential to improve the efficacy of production and quality of the finished product as well.
机译:加工参数的建模与优化在计算机数控(CNC)铣削过程中是必不可少的。目前研究的目的是在CNC加工氧化铝绿色陶瓷紧凑型的各种因素和反应之间产生功能关系。如,陶瓷材料在自然界中敏感,平均表面粗糙度(RA)的测量值至关重要,因为它会影响成品的质量和性能。在这种情况下,表面粗糙度的优化在制造业方面最重要。为了实现所需的表面质量水平,非常需要正确选择CNC铣削中的加工参数。在本研究中,已经选择了四种显着的加工参数,包括CNC铣削过程中的主轴速度,XY速度,Z速度和切割深度,并进行了各种组合实验。开发了一种数学回归模型,以预测基于氧化铝的绿色陶瓷紧凑型CNC铣削机加工表面的平均表面粗糙度。开发的模型用新的实验数据验证。此外,该模型与遗传算法(GA)技术耦合,以预测最佳可能的表面粗糙度。结果表明,潜在的潜力,可以提高成品的生产和质量的功效。

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