Multivariate modelling of AA6082-T6 drilling performance using RSM, ANN and response optimization

Q1 Engineering
Anastasios Tzotzis , Aristomenis Antoniadis , Panagiotis Kyratsis
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引用次数: 0

Abstract

The AA6082-T6 was experimentally studied in the present research with respect to the drilling performance. Drill diameter, cutting speed and feed rate were examined, using a full factorial design. Mathematical modelling of the process was carried out using the Response Surface Methodology (RSM) as well as the Artificial Neural Network (ANN) techniques. The output results in terms of cutting force, torque and surface roughness, revealed high levels of correlation between the experimental and the predicted data. Specifically, the Mean Absolute Percentage Error (MAPE) values using RSM compared to the ones of the experiments, were equal to 2.14%, 3.49% and 6.16% for Fz, Mz and Ra respectively. The equivalent MAPE between the ANN and the experiments were found to be 2.19%, 1.82% and 2.85% accordingly. Moreover, the most significant terms were revealed, being the interaction D × f for the thrust force and the torque with contribution percentages equal to approximately 44% and 42% respectively, and the term D2 for the surface roughness with 51%. The evaluation of the machining parameters, identified their significance, enabling the selection of the optimal cutting parameters, which were obtained by the desirability function, taking into account the importance of the generated surface quality and the reduction of cost. The solutions given by this approach, pointed out the Ø9 tool, coupled with Vc = 50 m/min and f = 0.15mm/rev as a well-balanced combination, whereas the Ø9.9 tool used under the same conditions, yielded the best possible surface quality (appr. 0.2 μm).

利用 RSM、ANN 和响应优化对 AA6082-T6 钻孔性能进行多变量建模
本研究对 AA6082-T6 的钻孔性能进行了实验研究。采用全因子设计对钻头直径、切削速度和进给量进行了研究。使用响应面方法(RSM)和人工神经网络(ANN)技术对过程进行了数学建模。切削力、扭矩和表面粗糙度方面的输出结果表明,实验数据与预测数据之间具有高度相关性。具体而言,使用 RSM 得出的平均绝对百分比误差 (MAPE) 值与实验值相比,Fz、Mz 和 Ra 分别为 2.14%、3.49% 和 6.16%。ANN 与实验之间的等效 MAPE 值分别为 2.19%、1.82% 和 2.85%。此外,最重要的项是推力和扭矩的交互项 D × f,其贡献率分别约为 44% 和 42%,以及表面粗糙度的项 D2,其贡献率为 51%。对加工参数的评估确定了这些参数的重要性,从而能够选择最佳切削参数,这些参数是通过可取函数获得的,同时考虑到了所产生的表面质量和降低成本的重要性。这种方法给出的解决方案指出,Ø9 刀具与 Vc = 50 米/分钟和 f = 0.15 毫米/转的组合是一个很好的平衡组合,而在相同条件下使用的 Ø9.9 刀具产生了最佳的表面质量(约 0.2 μm)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
International Journal of Lightweight Materials and Manufacture
International Journal of Lightweight Materials and Manufacture Engineering-Industrial and Manufacturing Engineering
CiteScore
9.90
自引率
0.00%
发文量
52
审稿时长
48 days
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