Proposal and experimental verification of a temperature distribution model for the FSW process

Montoya A. Sara, Medina M. Urbano A., Tejada O. Juan C, Hoyos P. Elizabeth, Montoya G. Yesid, Alvarez Z. Hernán D.
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Abstract

The Friction Stir Welding (FSW) process is relatively new compared to traditional welding methods. Although it does not bring the material to its melting point, it does generate a sufficient amount of heat flow that influences the quality of the weld and the process efficiency. Several researchers have sought ways of knowing the heat dissipated by friction and the temperatures that are generated, some of them through simulations with high computational cost and in a non-predictive way or by direct measurements through the instrumentation of the tool. This work proposes a phenomenological-based semi-physical model (PBSM) that estimates the temperature distribution in an Aluminum AA5052 alloy workpiece using the FSW process. The model is compared with real-time in situ measurements. The results showed that the model has a good agreement with real data allowing its use in a previous published whole model of the FSW process. The cited complete model is control-oriented, able to use in any model-based control structure.
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FSW过程温度分布模型的提出与实验验证
与传统的焊接方法相比,搅拌摩擦焊是一种较新的焊接工艺。虽然它不能使材料达到熔点,但它确实产生足够的热流,影响焊接质量和工艺效率。一些研究人员已经找到了了解摩擦散热量和产生温度的方法,其中一些方法是通过高计算成本的模拟和非预测方式,或者通过工具的仪器直接测量。本研究提出了一种基于现象学的半物理模型(PBSM),该模型使用FSW工艺估计AA5052铝合金工件的温度分布。将该模型与现场实时测量结果进行了比较。结果表明,该模型与实际数据吻合较好,可用于已发表的FSW过程整体模型。所引用的完整模型是面向控制的,可用于任何基于模型的控制结构。
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