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首页> 外文期刊>Neural computing & applications >Prediction and optimization of depth of penetration for stainless steel gas tungsten arc welded plates using artificial neural networks and simulated annealing algorithm
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Prediction and optimization of depth of penetration for stainless steel gas tungsten arc welded plates using artificial neural networks and simulated annealing algorithm

机译:人工神经网络和模拟退火算法预测和优化不锈钢气体保护钨极电弧焊深熔深度

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摘要

The quality of a weld joint is highly influenced by depth of penetration. Hence, accurate prediction and maximization of depth of penetration is highly essential to ensure a good-quality joint. This paper highlights the development of neural network model for predicting depth of penetration and optimizing the process parameters for maximizing depth of penetration using simulated annealing algorithm. The process parameters chosen for the study are welding current, welding speed, gas flow rate and welding gun angle. The chosen output parameter was depth of penetration. The experiments were conducted based on design of experiments using fractional factorial with 125 runs. Using the experimental data, feed-forward backpropagation neural network model was developed and trained using Levenberg-Marquardt algorithm. It was found that ANN model based on network 4-15-1 predicted depth of penetration more accurately. A mathematical model was also developed correlating the process parameters with depth of penetration for doing optimization. A source code was developed in MAT-LAB to do the optimization. The optimized process parameters gave a value of 3.778 mm for depth of penetration.
机译:焊接接头的质量在很大程度上取决于熔深。因此,准确的预测和最大深度的渗透对于确保高质量的接头至关重要。本文着重介绍了神经网络模型的发展,该模型可使用模拟退火算法预测渗透深度并优化工艺参数以最大化渗透深度。研究中选择的工艺参数为焊接电流,焊接速度,气体流速和焊枪角度。选择的输出参数是穿透深度。基于使用分数阶乘进行125次运行的实验设计,进行了实验。利用实验数据,使用Levenberg-Marquardt算法开发并训练了前馈反向传播神经网络模型。发现基于网络4-15-1的ANN模型可以更准确地预测渗透深度。还开发了数学模型,将过程参数与渗透深度相关联以进行优化。在MAT-LAB中开发了源代码来进行优化。优化的工艺参数得出的穿透深度值为3.778毫米。

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