Physics-informed machine-learning model of temperature evolution under solid phase processes

被引:0
作者
Ethan King
Yulan Li
Shenyang Hu
Eric Machorro
机构
[1] Pacific Northwest National Laboratory,
来源
Computational Mechanics | 2023年 / 72卷
关键词
Constitutive laws; Differential model; Materials processing; Thermomechanical; Machine learning;
D O I
暂无
中图分类号
学科分类号
摘要
We model temperature dynamics during Shear Assisted Proccess Extrusion (ShAPE), a solid phase process that plasticizes feedstock with a rotating tool and subsequently extrudes it into a consolidated tube, rod, or wire. Control of temperature is critical during ShAPE processing to avoid liquefaction, ensure smooth extrusion, and develop desired material properties in the extruded products. Accurate modeling of the complicated thermo-mechanical feedbacks between process inputs, material temperature, and heat generation presents a significant barrier to predictive modeling and process design. In particular, connecting micro-structural scale mechanisms of heat generation to macro-scale predictions of temperature can become computationally intractable. In this work we use a neural network (NN) model of heat generation to bridge this gap, by combining it with a simplified model of the temperature dynamics due to conduction and convection to capture the macro scale evolution of temperature. We inform the construction of the NN heat generation model using crystal plasticity simulations at the micro-structural scale to model the effects of process inputs on generation of heat. We achieved close fits of the temperature dynamics model to a diverse experimental data-set. Further, the relationships learned by the NN model between process inputs and heat generation showed qualitative agreement with those predicted by crystal plasticity simulations.
引用
收藏
页码:125 / 136
页数:11
相关论文
共 156 条
  • [1] Whalen S(2021)High speed manufacturing of aluminum alloy 7075 tubing by shear assisted processing and extrusion (shape) J Manuf Process 71 699-710
  • [2] Olszta M(2014)The effect of microstructure on mechanical properties of forged 6061 aluminum alloy Mater Trans 55 114-119
  • [3] Reza-E-Rabby M(2018)Shear assisted processing and extrusion (shape J Mater Eng Perform 27 1024-1544
  • [4] Roosendaal T(1997)) of az91e flake: a study of tooling features and processing effects Scripta Mater 36 69-75
  • [5] Wang T(2007)Effects of friction stir welding on microstructure of 7075 aluminum Sci Technol Weld Join 12 311-317
  • [6] Herling D(2014)Process response parameter relationships in aluminium alloy friction stir welds Steel Res Int 85 968-979
  • [7] Taysom BS(2002)Comparison of a fluid and a solid approach for the numerical simulation of friction stir welding with a non-cylindrical pin Int J Mach Tools Manuf 42 1549-1557
  • [8] Suffield S(2006)Three-dimensional modeling of the friction stir-welding process Sci Technol Weld Join 11 429-441
  • [9] Overman N(2006)CFD modelling of friction stir welding of thick plate 7449 aluminium alloy Sci Technol Weld Join 11 278-288
  • [10] Nakai M(2016)Steady state thermomechanical modelling of friction stir welding J Manuf Process 23 278-286