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首页> 外文期刊>International journal of systems assurance engineering and management >Quality characteristics optimization in CNC end milling of A36 K02600 using Taguchi's approach coupled with artificial neural network and genetic algorithm
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Quality characteristics optimization in CNC end milling of A36 K02600 using Taguchi's approach coupled with artificial neural network and genetic algorithm

机译:Taguchi方法结合人工神经网络和遗传算法优化A36 K02600数控立铣刀的质量特性

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This study investigates surface roughness and energy consumption in a CNC end milling of plain low carbon steel (mild steel) A36 K02600 using a carbide end mill cutter. Taguchi's L_9 orthogonal array was adopted for designing the experimental runs considering several process parameters viz. cutting velocity, Feed rate, spindle speed and cutting depth in order to study their influence on the quality characteristics. Optimal control parameter combinations for minimizing surface roughness and energy consumption were evaluated from signal to noise ratio. Analysis of variance revealed the contribution of control factors on the quality characteristics. Numerical predictive models using linear regression and artificial neural network were developed to envisage the responses accurately. Multi-objective Genetic Algorithm optimization was exploited in order to obtain a specific set of control parameter which would optimize both the responses simultaneously. This study concludes that spindle speed (68.24% contribution) and feed rate (92% contribution) are the most responsible variables for surface quality and energy consumption respectively. The outcome of artificial neural network model and genetic algorithm confirm that both quality characteristics can be optimized simultaneously and Taguchi's robust design approach is a successful tactic for optimizing machining parameters to achieve desired surface quality at low energy consumption. Improvement in surface quality and reduction in energy consumption were found to be 27.79% and 30% respectively. Low carbon steel is extensively accepted by the industries for its wide variety of which make this study physically viable.
机译:这项研究调查了使用硬质合金立铣刀对普通低碳钢(低碳钢)A36 K02600进行CNC立铣的表面粗糙度和能耗。考虑到多个工艺参数,采用田口的L_9正交阵列设计实验运行。切削速度,进给速度,主轴速度和切削深度,以研究它们对质量特性的影响。从信噪比评估了用于最小化表面粗糙度和能耗的最佳控制参数组合。方差分析揭示了控制因素对质量特征的贡献。开发了使用线性回归和人工神经网络的数值预测模型,以准确地预测响应。利用多目标遗传算法优化来获得一组特定的控制参数,该参数将同时优化两个响应。这项研究得出的结论是,主轴转速(贡献度为68.24%)和进给率(贡献度为92%)分别是表面质量和能耗的最主要变量。人工神经网络模型和遗传算法的结果证实,可以同时优化两个质量特性,田口健壮的设计方法是优化加工参数以获得低能耗所需表面质量的成功策略。发现表面质量的改善和能耗的减少分别为27.79%和30%。低碳钢因其种类繁多而在工业上被广泛接受,使这项研究在物理上可行。

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