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Development of neural network models for the prediction of solidification mode, weld bead geometry and sensitisation in austenitic stainless steels

机译:神经网络模型的开发,用于预测奥氏体不锈钢的凝固模式,焊缝几何形状和敏化度

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摘要

Quantitative models describing the effect of weld composition on the solidification mode, ferrite content and process parameters on the weld bead geometry are necessary in order to design composition of the welding consumable to ensure primary ferritic solidification mode, proper ferrite content and to ensure right choice of process parameters to achieve good bead geometry. A quantitative model on sensitisation behaviour of austenitic stainless steels is also necessary to optimise the composition of the austenitic stainless steel and to limit the strain on the material in order to enhance the resistance to sensitisation. The present paper discuss the development of quantitative models using artificial neural networks to correlate weld metal composition with solidification mode, process parameter with weld bead geometry and time for sensitisation with composition, strain in the material before welding and the temperature of exposure in austenitic stainless steels.
机译:描述焊接成分对凝固方式,铁素体含量和工艺参数对焊缝几何形状的影响的定量模型是必要的,以便设计焊接材料的成分,以确保主要的铁素体凝固方式,合适的铁素体含量并确保正确选择工艺参数以实现良好的磁珠几何形状。奥氏体不锈钢敏化行为的定量模型对于优化奥氏体不锈钢的成分并限制材料上的应变以增强抗敏性也是必要的。本文讨论了使用人工神经网络将焊接金属成分与凝固模式,工艺参数与焊缝几何形状以及敏化时间与成分,焊接前材料中的应变以及奥氏体不锈钢的暴露温度相关联的定量模型的开发。 。

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