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首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers, Part C. Journal of mechanical engineering science >Multi-objective optimization of residual stresses and distortion in submerged arc welding process using Genetic Algorithm and Harmony Search
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Multi-objective optimization of residual stresses and distortion in submerged arc welding process using Genetic Algorithm and Harmony Search

机译:使用遗传算法和和声搜索淹没电弧焊接过程残余应力和变形的多目标优化

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摘要

Residual stresses and distortion in welded joints undermine the durability of the structure and prevent a correct assembly of the parts. The principal objective of this study is to find a solution to minimize the residual stresses and distortion induced by submerged arc welding process. Accordingly, first, a thermal simulation of the process was undertaken by the finite-element method, and the results were used to provide a mechanical solution. The mechanical solution determined residual stresses and distortion that were found to be consistent with experimental results. Next, drawing on the design of experiment method based on cooling time between first pass and second pass and the first and second pass welding speed, a set of training data was formed for the developed artificial neural network. The trained neural network was then used as input for the optimization algorithm. Single- and multi-objective Genetic Algorithm and single and multi-objective Harmony Search methods were used for optimization process. Results illustrate that artificial neural network and multi-objective optimization algorithms are excellent methods for optimizing the residual stresses and distortion caused by welding process. As it was proved in this study, the single-objective optimization of the welding process is effective in reducing both the residual stress and distortion. The double-objective optimization also contributed to reduce both residual stress and distortion with 4% (for residual stresses) and 26.56% (for distortion) in multi-objective Harmony Search which was the better algorithm based on the solution time. Given the contradiction of the residual stresses and distortion in the welding process, the double-objective algorithm was found to be less successful in minimizing the two target functions relative to the case with the two optimized separately.
机译:焊接接头中的残余应力和变形破坏了结构的耐久性,并防止了部件的正确组装。本研究的主要目的是找到一种解决方案,以最大限度地减少浸没电弧焊接过程引起的残余应力和变形。因此,首先,通过有限元方法进行该方法的热模拟,结果用于提供机械溶液。机械溶液确定发现与实验结果一致的残余应力和变形。接下来,在第一通道和第二通道和第一和第二通焊速度之间的冷却时间基于冷却时间的实验方法设计,形成一组训练数据,用于开发的人工神经网络。然后将培训的神经网络用作优化算法的输入。单个和多目标遗传算法和单个和多目标和平搜索方法用于优化过程。结果说明人工神经网络和多目标优化算法是优化焊接过程引起的残余应力和变形的优异方法。正如在本研究证明的那样,焊接过程的单目标优化在减少残余应力和变形方面是有效的。双目标优化也有助于降低4%(用于残余应力)的残留应力和变形,在多目标和平搜索中为26.56%(用于失真),这是基于解决方案时间的更好的算法。鉴于焊接过程中的残余应力和变形的矛盾,发现双目标算法在最小化相对于两个优化的情况下最小化两个目标功能,在最小化两种目标功能时不太成功。

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