Real-time prediction of temperature field during welding by data-mechanism driving

IF 6.1 1区 工程技术 Q1 ENGINEERING, MANUFACTURING
Wenhua Jiao , Da Zhao , Shipin Yang , Xiaowei Xu , Xiang Zhang , Lijuan Li , Huabin Chen
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引用次数: 0

Abstract

The temperature field during welding (TFW) is a crucial factor that significantly influences the weld seam's shape and overall performance. The accurate prediction of the TFW is crucial for optimizing welding process parameters and achieving high-precision control during welding. This study proposes a real-time prediction method for the TFW, driven by a combination of data and physical mechanisms. By defining the heat transfer mechanisms, welding methods, material properties, and process parameters, TFW finite element simulation data is obtained for training a data-driven neural network. Real-time images of the welding pool are used to extract the weld pool surface width (WPSW) by image processing techniques, and a Long Short-Term Memory model is employed to extract heat source (HS) parameters from the continuously changing WPSW. The HS function is updated using real-time welding current, arc voltage, and HS parameters to calculate the real-time heat flux density at various locations in the welded workpiece. Finally, the DeepONet neural operator model predicts the temperature values at these locations by solving for the real-time heat flux density, thereby achieving TFW prediction. This method has high flexibility and real-time performance, which provides an effective and practical solution for real-time monitoring of the TFW, and lays a foundation for the high-precision control during welding.
通过数据机制驱动实时预测焊接过程中的温度场
焊接过程中的温度场(TFW)是影响焊缝形状和整体性能的关键因素。准确预测 TFW 对于优化焊接工艺参数和实现焊接过程的高精度控制至关重要。本研究提出了一种结合数据和物理机制的 TFW 实时预测方法。通过定义传热机制、焊接方法、材料特性和工艺参数,获得 TFW 有限元模拟数据,用于训练数据驱动的神经网络。焊接熔池的实时图像通过图像处理技术提取焊接熔池表面宽度(WPSW),并采用长短期记忆模型从持续变化的 WPSW 中提取热源(HS)参数。利用实时焊接电流、电弧电压和热源参数更新热源函数,以计算焊接工件不同位置的实时热流密度。最后,DeepONet 神经算子模型通过求解实时热通量密度来预测这些位置的温度值,从而实现 TFW 预测。该方法具有较高的灵活性和实时性,为实时监测 TFW 提供了有效实用的解决方案,为焊接过程中的高精度控制奠定了基础。
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来源期刊
Journal of Manufacturing Processes
Journal of Manufacturing Processes ENGINEERING, MANUFACTURING-
CiteScore
10.20
自引率
11.30%
发文量
833
审稿时长
50 days
期刊介绍: The aim of the Journal of Manufacturing Processes (JMP) is to exchange current and future directions of manufacturing processes research, development and implementation, and to publish archival scholarly literature with a view to advancing state-of-the-art manufacturing processes and encouraging innovation for developing new and efficient processes. The journal will also publish from other research communities for rapid communication of innovative new concepts. Special-topic issues on emerging technologies and invited papers will also be published.
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