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Optimisation of weld deposition efficiency in pulsed MIG welding using hybrid neuro-based techniques

机译:使用基于混合神经的技术优化脉冲MIG焊接中的熔敷效率

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The weld quality depends primarily on the degree of arc stability and the bead characteristics in gas metal arc welding. The weld deposition has to be enhanced to make the process economically feasible. This article addresses modelling and optimisation of deposition efficiency in highly non-linear pulsed metal inert gas welding. The design of experiments was performed using central composite response surface methodology for the model development. The back propagation neural network technique was found to be better than the response surface regression model. Two global optimisation techniques, namely, genetic algorithm and differential evolution, were then applied to maximise the deposition efficiency. The capability to identify the hidden optimum solutions using differential evolution technique was found to be better than genetic algorithm.
机译:焊接质量主要取决于气体金属电弧焊的电弧稳定性和焊缝特性。必须增强焊接沉积以使该工艺在经济上可行。本文介绍了高度非线性脉冲金属惰性气体保护焊中沉积效率的建模和优化。实验设计使用中央复合响应面方法进行模型开发。发现反向传播神经网络技术优于响应面回归模型。然后应用了两种全局优化技术,即遗传算法和差分进化,以最大化沉积效率。发现使用差分进化技术识别隐藏的最优解的能力比遗传算法要好。

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