Prediction of Mechanical Properties as a Function of Welding Variables in Robotic Gas Metal Arc Welding of Duplex Stainless Steels SAF 2205 Welds Through Artificial Neural Networks

IF 1.5 Q4 MATERIALS SCIENCE, MULTIDISCIPLINARY Advances in Materials Science Pub Date : 2021-09-01 DOI:10.2478/adms-2021-0019
C. Payares-Asprino
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引用次数: 5

Abstract

Abstract Dual-phase duplex stainless steel (DSS) has shown outstanding strength. Joining DSS alloy is challenging due to the formation of embrittling precipitates and metallurgical changes during the welding process. Generally, the quality of a weld joint is strongly influenced by the welding conditions. Mathematical models were developed to achieve high-quality welds and predict the ideal bead geometry to achieve optimal mechanical properties. Artificial neural networks are computational models used to address complex nonlinear relationships between input and output variables. It is one of the powerful modeling techniques, based on a statistical approach, presently practiced in engineering for complex relationships that are difficult to explain with physical models. For this study robotic GMAW welding process manufactured the duplex stainless steel welds at different welding conditions. Two tensile specimens were manufactured from each welded plate, resulting in 14 tensile specimens. This research focuses on predicting the yield strength, tensile stress, elongation, and fracture location of duplex stainless steel SAF 2205 welds using back-propagation neural networks. The predicted values of tensile strength were later on compared with experimental values obtained through the tensile test. The results indicate <2% of error between observed and predicted values of mechanical properties when using the neural network model. In addition, it was observed that the tensile strength values of the welds were higher than the base metal and that this increased when increasing the arc current. The welds’ yield strength and elongation values are lower than the base metal by 6%, ~ 9.75%, respectively. The yield strength and elongation decrease might be due to microstructural changes when arc energy increases during the welding.
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基于人工神经网络的SAF 2205双相不锈钢气体保护弧焊机器人力学性能随焊接变量的预测
摘要双相双相不锈钢(DSS)具有优异的强度。由于DSS合金在焊接过程中会产生脆性析出物和金相变化,因此连接DSS合金具有挑战性。一般来说,焊接条件对焊接接头的质量有很大影响。建立数学模型,以实现高质量的焊缝,并预测理想的焊缝几何形状,以实现最佳的力学性能。人工神经网络是用于处理输入和输出变量之间复杂非线性关系的计算模型。它是基于统计方法的强大建模技术之一,目前在工程中用于难以用物理模型解释的复杂关系。本文研究了不同焊接条件下双相不锈钢的机器人GMAW焊接工艺。每个焊接板制作两个拉伸试样,得到14个拉伸试样。本研究的重点是利用反向传播神经网络预测双相不锈钢SAF 2205焊缝的屈服强度、拉伸应力、伸长率和断口位置。随后将拉伸强度预测值与拉伸试验所得的实验值进行了比较。结果表明,神经网络模型的力学性能实测值与预测值误差小于2%。此外,观察到焊缝的抗拉强度值高于母材,并且随着电弧电流的增加而增加。焊缝的屈服强度和伸长率分别比母材低6%和9.75%。焊接过程中,随着电弧能量的增加,屈服强度和伸长率的降低可能是由于微观组织的变化所致。
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Advances in Materials Science
Advances in Materials Science MATERIALS SCIENCE, MULTIDISCIPLINARY-
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