Prediction of ferrite number in stainless steel gas tungsten arc welded plates using artificial neural networks

R. Sudhakaran, P. S. Sivasakthivel
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引用次数: 4

Abstract

The quality of stainless steel weld is highly influenced by delta ferrite content expressed in terms of ferrite number. The quantity of delta ferrite content formed is controlled by the process parameters. This paper discusses the development of artificial neural network model for predicting the ferrite number in 202 grade stainless steel gas tungsten arc welded plates (GTAW). The process parameters chosen for study are welding gun angle, welding speed, plate length, welding current and shielding gas flow rate. The experiments were conducted based on design of experiments – fractional factorial with 125 runs. Using the experimental data, feed forward, back propagation neural models were developed and trained using Levenberg Marquardt algorithm. The training, learning, performance and transfer functions used are trainlm, learningdm, mean square error and tansig respectively. Five networks were developed with five neurons in the input layer, 1 neuron in the output layer and different nodes in the hidden layer. They are 5-3-1, 5-5-1, 5-10-1, 5-11-1 and 5-15-1. It was found that the artificial neural network (ANN) model based on network 5-5-1 predicted ferrite number more accurately than other networks. The prediction helps in identifying the recommended combination of process parameters to achieve a desired ferrite number in GTAW of stainless steel 202 grade plates.
应用人工神经网络预测不锈钢钨气弧焊板中的铁素体数
以铁素体数表示的δ铁素体含量对不锈钢焊缝质量有很大影响。形成的δ铁氧体含量由工艺参数控制。本文讨论了202级不锈钢气钨弧焊板铁素体数预测的人工神经网络模型的发展。研究的工艺参数为焊枪角度、焊接速度、焊板长度、焊接电流和保护气体流量。实验按实验设计——分数阶乘进行,共运行125次。利用实验数据,建立了前馈、反向传播神经网络模型,并采用Levenberg Marquardt算法进行训练。所使用的训练函数、学习函数、性能函数和传递函数分别为trainlm、learningdm、均方误差函数和tansig。构建了5个网络,其中输入层有5个神经元,输出层有1个神经元,隐藏层有不同的节点。它们是5-3-1,5-5-1,5-10-1,5-11-1和5-15-1。结果表明,基于网络5-5-1的人工神经网络(ANN)模型对铁氧体数的预测精度高于其他网络。该预测有助于确定推荐的工艺参数组合,以实现202不锈钢级板的GTAW中所需的铁素体数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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