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Application of RSM and ANN to predict the tensile strength of Friction Stir Welded A319 cast aluminium alloy

机译:RSM和ANN在搅拌摩擦焊接A319铸造铝合金拉伸强度预测中的应用。

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摘要

Fusion welding of A319 aluminium cast alloys will lead to many problems such as porosity, micro-fissuring and hot cracking. However, Friction Stir Welding (FSW) can be used to weld these cast alloys without the above-mentioned defects. The FSW process parameters such as tool rotational speed, welding speed and axial force play a major role in deciding the weld quality. The experiments were conducted based on three factors, three-level and Central-Composite-Face-centred (CCF) design with full replications technique. Models were developed to predict tensile strength of FSW A319 alloy using Response Surface Methodology (RSM) and Artificial Neural Network (ANN). The results obtained through RSM were compared with ANN. It is found that the error rate predicted by the artificial network is smaller than predicted by the RSM.
机译:A319铝铸造合金的熔焊会导致许多问题,例如孔隙率,微裂纹和热裂纹。但是,可以使用摩擦搅拌焊(FSW)来焊接这些铸造合金而没有上述缺陷。 FSW工艺参数(例如工具转速,焊接速度和轴向力)在决定焊接质量方面起着重要作用。实验是基于三个因素进行的,这三个因素是采用完全复制技术的三级设计和中央复合面心(CCF)设计。使用响应表面方法(RSM)和人工神经网络(ANN)开发了模型来预测FSW A319合金的拉伸强度。将通过RSM获得的结果与ANN进行比较。发现人工网络预测的误码率小于RSM预测的误码率。

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