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A multi-objective optimization of the friction stir welding process using RSM-based-desirability function approach for joining aluminum alloy 6063-T6 pipes

机译:利用RSM的期望函数方法进行摩擦搅拌焊接工艺的多目标优化,用于连接铝合金6063-T6管道

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摘要

In this study, a multi-objective optimization technique involving response surface methodology (RSM)-based desirability function approach is used in optimizing the process parameters for friction stir welding of AA6063-T6 pipes. Two process parameters, namely, tool rotational speed and weld speed, are optimized for achieving a weld joint having superior tensile properties, viz., maximum yield, and ultimate tensile strength and maximum % of elongation. A regression model, with a 95% confidence level, is developed using response surface methodology to predict the tensile strength of the weld joint. ANOVA technique is used to determine the adequacy of the developed model and identify the significant terms. The desirability function is used to analyze the responses and predict the optimal process parameters. It is found that tool rotational speed and weld speed have equal influence over the tensile strength of the pipe weld. Tool rotational speed 1986 rpm and weld speed 0.65 rpm have yielded a maximum ultimate tensile strength of 167 MPa, yield strength of 145 MPa, and % elongation of 8.3, under considered operating conditions. Microstructural attributes for superior weld properties are also discussed.
机译:在该研究中,用于优化AA6063-T6管道的摩擦搅拌焊接工艺参数,使用涉及响应表面方法(RSM)的可期望功能方法的多目标优化技术。两种工艺参数,即刀具转速和焊接速度,用于实现具有优异的拉伸性能的焊接接头,VIZ,最大产量和最终拉伸强度和伸长率的最大%。使用响应面方法开发了一种具有95%置信水平的回归模型,以预测焊接接头的拉伸强度。 ANOVA技术用于确定开发模型的充分性并确定重要术语。期望函数用于分析响应并预测最佳过程参数。发现刀具转速和焊接速度对管焊的拉伸强度具有相同的影响。工具转速1986RPM和焊接速度0.65rpm产生的最大抗拉强度为167MPa,屈服强度为145MPa,并且在考虑的操作条件下,8.3的伸长率为8.3。还讨论了良好焊接性能的微观结构属性。

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