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Artificial Neural Network-Based Constitutive Relationship of Inconel 718 Superalloy Construction and Its Application in Accuracy Improvement of Numerical Simulation

机译:基于人工神经网络的基于神经网络的Inconel 718超合金结构的组成关系及其在数值模拟的准确性提高中的应用

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The application of accurate constitutive relationship in finite element simulation would significantly contribute to accurate simulation results, which play critical roles in process design and optimization. In this investigation, the true stress-strain data of an Inconel 718 superalloy were obtained from a series of isothermal compression tests conducted in a wide temperature range of 1153–1353 K and strain rate range of 0.01–10 s ?1 on a Gleeble 3500 testing machine (DSI, St. Paul, DE, USA). Then the constitutive relationship was modeled by an optimally-constructed and well-trained back-propagation artificial neural network (ANN). The evaluation of the ANN model revealed that it has admirable performance in characterizing and predicting the flow behaviors of Inconel 718 superalloy. Consequently, the developed ANN model was used to predict abundant stress-strain data beyond the limited experimental conditions and construct the continuous mapping relationship for temperature, strain rate, strain and stress. Finally, the constructed ANN was implanted in a finite element solver though the interface of “URPFLO” subroutine to simulate the isothermal compression tests. The results show that the integration of finite element method with ANN model can significantly promote the accuracy improvement of numerical simulations for hot forming processes.
机译:有限元模拟中精确本构关系的应用将显着促进准确的仿真结果,这在过程设计和优化中起着关键作用。在该研究中,从1153-1353k和0.01-10s'1的宽温度范围内进行的一系列等温压缩试验,在GLEEBLE 3500上的宽温度范围内进行的一系列等温压缩试验获得了Inconel 718超合金的真正应力 - 应变数据。测试机(DSI,圣保罗,DE,USA)。然后通过最佳地构造和训练有于良好的后传播人工神经网络(ANN)来建模本构关系。 ANN模型的评价显示,它具有令人钦佩的性能在表征和预测Inconel 718超合金的流动性方面。因此,开发的ANN模型用于预测超出有限实验条件的丰富应力数据,并构建温度,应变率,应变和应力的连续映射关系。最后,在有限元求解器中植入构造的ANN,但是“URPFLO”子程序的界面以模拟等温压缩测试的界面。结果表明,随着ANN模型的有限元方法的集成可以显着促进热成型过程数值模拟的准确性改进。

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