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Application of integrated soft computing techniques for optimisation of hybrid CO2 laser-MIG welding process

机译:集成软计算技术在混合CO2激光-MIG焊接工艺优化中的应用

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摘要

In this paper, artificial neural networks (ANNs), genetic algorithm (GA), simulated annealing (SA) and Quasi Newton line search techniques have been combined to develop three integrated soft computing based models such as ANN-GA, ANN-SA and ANN-Quasi Newton for prediction modelling and optimisation of welding strength for hybrid CO2 la ser-MIG welded joints of aluminium alloy. Experimental dataset employed for the purpose has been generated through full factorial experimental design. Laser power, welding speeds and wires feed rate are considered as controllable input parameters. These soft computing models employ a trained ANN for calculation of objective function value and thereby eliminate the need of closed form objective function. Among 11 tested networks, the ANN with best prediction performance produces maximum percentage error of only 3.21%. During optimisation ANN-GA is found to show best performance with absolute percentage error of only 0.09% during experimental validation. Low value of percentage error indicates efficacy of models. Welding speed has been found as most influencing factor for welding strength. (C) 2015 Elsevier B.V. All rights reserved.
机译:本文将人工神经网络(ANN),遗传算法(GA),模拟退火(SA)和拟牛顿线搜索技术相结合,以开发三种基于集成软计算的模型,例如ANN-GA,ANN-SA和ANN -Quasi Newton用于铝合金的CO2 la ser-MIG混合焊接接头的预测建模和焊接强度的优化。为此目的采用的实验数据集已经通过全因子实验设计生成。激光功率,焊接速度和焊丝进给速度被认为是可控制的输入参数。这些软计算模型采用训练有素的人工神经网络来计算目标函数值,从而消除了封闭形式目标函数的需要。在11个经过测试的网络中,具有最佳预测性能的ANN产生的最大百分比误差仅为3.21%。在优化过程中,发现ANN-GA在实验验证过程中显示出最佳性能,绝对百分比误差仅为0.09%。百分比误差的低值表示模型的有效性。已发现焊接速度是影响焊接强度的最主要因素。 (C)2015 Elsevier B.V.保留所有权利。

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