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首页> 外文期刊>Modelling and simulation in engineering >Mathematical Modelling of a Friction Stir Welding Process to Predict the Joint Strength of Two Dissimilar Aluminium Alloys Using Experimental Data and Genetic Programming
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Mathematical Modelling of a Friction Stir Welding Process to Predict the Joint Strength of Two Dissimilar Aluminium Alloys Using Experimental Data and Genetic Programming

机译:利用实验数据和遗传规划预测两种异种铝合金接头强度的摩擦搅拌焊接过程数学模型

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摘要

Friction stir welding (FSW) is the most popular and efficient method of solid-state joining for similar as well as dissimilar metals and alloys. It is mosdy used in applications for aerospace, rail, automotive, and marine industries. Many researchers are currently working with different perspectives on this FSW process for various combinations of materials. The general input process parameters are the thickness of the plate, axial load, rotational speed, welding speed, and tilt angle. The output parameters are joint hardness, % of elongation, and impact and yield strengths. Genetic programming (GP) is a relatively new method of evolutionary computing with the principal advantage of this approach being to evaluate efficacious predictive mathematical models or equations without any prior assumption regarding the possible form of the functional relationship. This paper both defines and illustrates how GP can be applied to the FSW process to derive precise relationships between the output and input parameters in order to obtain a generalized prediction model. A GP model will assist engineers in quantifying the performance of FSW, and the results from this study can then be utilized to estimate future requirements based on the historical data to provide a robust solution. The obtained results from the GP models showed good agreement with experimental and target data at an average prediction error of 0.72%.
机译:搅拌摩擦焊(FSW)是用于相似以及不同金属和合金的固态连接的最流行和最有效的方法。 mosdy用于航空航天,铁路,汽车和海洋工业。当前,对于各种材料组合,许多研究人员正在以不同的观点研究FSW工艺。一般的输入过程参数是板的厚度,轴向载荷,转速,焊接速度和倾斜角度。输出参数是接头硬度,伸长百分比以及冲击强度和屈服强度。遗传编程(GP)是一种相对较新的进化计算方法,该方法的主要优点是无需对功能关系的可能形式进行任何事先假设即可评估有效的预测数学模型或方程。本文既定义又说明了如何将GP应用于FSW过程,以得出输出和输入参数之间的精确关系,从而获得广义的预测模型。 GP模型将帮助工程师量化FSW的性能,然后可以根据历史数据将本研究的结果用于估计未来需求,以提供可靠的解决方案。从GP模型获得的结果显示与实验和目标数据吻合良好,平均预测误差为0.72%。

著录项

  • 来源
    《Modelling and simulation in engineering》 |2018年第2018期|4183816.1-4183816.18|共18页
  • 作者单位

    Mechanical Engineering Department, Umm Al-Qura University, Makkah, Saudi Arabia;

    Mechanical Engineering Department, Umm Al-Qura University, Makkah, Saudi Arabia;

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