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The use of multi-objective genetic algorithm (MOGA) in optimizing and predicting weld quality

机译:多目标遗传算法(MOGA)在优化和预测焊接质量中的使用

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The search for acceptable optimal or near-optimal weld process parameters through the application of suitable optimization technique cannot be over emphasized, as this will help prevent weld defects capable of causing remarkable decrease in the mechanical properties of welded joints. This study explodes the application of multi-objective genetic algorithm (MOGA), an evolutionary optimization technique, alongside a regression model, in finding the optimal process parameters of a GTAW welded mild steel plate. Analysis of variance ANOVA was used in determining the significance of the model as well as studying the main and interactive effects of the process parameters on the responses. With the mathematical models obtained, used as objective functions, the genetic algorithm provided the best optimization on the 186th generation. An optimal weld strength of 546.8?N/mm~(2) and hardness of 159.1?at the combined input variable of 140 ampere welding current, 24.9?V weld voltage, 20?l/min gas flow rate, and 2.4 mm?filler rod diameter were obtained. Confirmatory tests conducted using the generated optimal results showed that the percentage of error was within the permissible limit of 5%, a validation of the optimization technique.
机译:通过应用合适的优化技术的应用,不能通过强调寻找可接受的最佳或接近最佳焊接工艺参数,因为这将有助于防止能够在焊接接头的机械性能下引起显着降低的焊接缺陷。该研究探讨了多目标遗传算法(MOGA)的应用,进化优化技术,以及回归模型,在寻找GTAW焊接温和钢板的最佳过程参数时。用于确定模型的重要性以及研究过程参数对响应的主要和交互式效应的分析。利用所获得的数学模型用作客观函数,遗传算法在186代中提供了最佳优化。最佳焊接强度为546.8Ω·n / mm〜(2)和硬度为159.1〜140安培焊接电流的组合输入变量,24.9Ω·V焊接电压,20?L / min气体流速,2.4 mm?填料获得棒直径。使用所产生的最佳结果进行的确认测试表明,误差的百分比在5%的允许限制范围内,优化技术的验证。

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