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Application Of Artificial Neural Network In Predicting The Weld Quality Of A Tungsten Inert Gas Welded Mild Steel Pipe Joint

机译:人工神经网络在钨极惰性气体焊接低碳钢管接头焊接质量预测中的应用

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ABSTRACT: The weld quality of Tunston inert gas welded joint has been investigated to identify the most economical weld parameters that will bring about optimum properties. Artificial neural network, has been used in the prediction and optimization of the Tunston inert gas weld of mild steel pipes. Neural network model was generated using the Levenberg-Marquardt algorithm with feed ward back propagation learning rule. Results show that the generated neural network model was able to predict tensile and yield strength to a mean square error of 34.2.
机译:摘要:已对Tunston惰性气体焊接接头的焊接质量进行了研究,以确定最经济的焊接参数,这些参数可带来最佳性能。人工神经网络已被用于预测和优化低碳钢管的Tunston惰性气体保护焊。使用带有反馈前向传播学习规则的Levenberg-Marquardt算法生成神经网络模型。结果表明,所生成的神经网络模型能够预测拉伸强度和屈服强度,均方误差为34.2。

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