首页> 外文期刊>The International Journal of Advanced Manufacturing Technology >Estimation and optimization of depth of penetration in hybrid CO_2 LASER-MIG welding using ANN-optimization hybrid model
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Estimation and optimization of depth of penetration in hybrid CO_2 LASER-MIG welding using ANN-optimization hybrid model

机译:基于ANN优化混合模型的CO_2 LASER-MIG混合焊接熔深估算与优化。

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摘要

The paper presents an artificial neural network-optimization hybrid model to predict and optimize penetration depth of CO_2 LASER-MIG hybrid welding used for 5005 Al-Mg alloy. The input welding parameters are power, focal distance from the work piece surface, torch angle, and the distance between the laser and the welding torch. The model combines single hidden layer back propagation artificial neural networks (ANN) with Bayesian regularization for prediction and quasi-Newton search algorithm for optimization. In this method, training and prediction performance of different ANN architectures are initially tested, and the architecture with the best performance is further used for optimization. Finally, the best ANN architecture is found to show much better prediction capability compared to a regression model developed from the experimental data.
机译:本文提出了一种人工神经网络优化混合模型,以预测和优化用于5005 Al-Mg合金的CO_2 LASER-MIG混合焊接的熔深。输入的焊接参数为功率,距工件表面的焦距,焊炬角度以及激光与焊炬之间的距离。该模型将单隐层反向传播人工神经网络(ANN)与贝叶斯正则化相结合进行预测,并将拟牛顿搜索算法进行优化。在这种方法中,首先测试了不同ANN架构的训练和预测性能,然后将具有最佳性能的架构进一步用于优化。最后,与从实验数据开发的回归模型相比,发现最佳的ANN架构显示出更好的预测能力。

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