论文标题

使用神经网络对非线性流量法进行有效实施到ABAQUS明确的FEM代码

Efficient Implementation of Non-linear Flow Law Using Neural Network into the Abaqus Explicit FEM code

论文作者

Pantalé, Olivier, Mha, Pierre Tize, Tongne, Amèvi

论文摘要

机器学习技术越来越多地用于预测科学应用中的材料行为,并比常规数值方法具有显着优势。在这项工作中,将人工神经网络(ANN)模型用于有限元公式中,以定义金属材料的流量与塑性应变,塑性应变速率和温度的函数。首先,我们介绍了神经网络的一般结构,其运作和关注网络在没有事先学习的情况下推导的能力,即相对于模型输入的流量定律的衍生物。为了验证所提出模型的鲁棒性和准确性,我们就42CRMO4钢的Johnson-Cook行为定律的分析公式进行了比较和分析几个网络体系结构的性能。在第二部分中,在选择了带有$ 2 $隐藏层的人造神经网络体系结构之后,我们以Vuhard Subroutine的形式在Abaqus显式计算代码中介绍了该模型的实现。然后在两个测试用例的数值模拟中证明了所提出模型的预测能力:圆形条的颈部和泰勒冲击试验。获得的结果表明,ANN具有很高的能力,可以在有限的元素代码中替代约翰逊 - 奇异行为法的分析公式,同时与经典方法相比,在数值模拟时间方面保持竞争力。

Machine learning techniques are increasingly used to predict material behavior in scientific applications and offer a significant advantage over conventional numerical methods. In this work, an Artificial Neural Network (ANN) model is used in a finite element formulation to define the flow law of a metallic material as a function of plastic strain, plastic strain rate and temperature. First, we present the general structure of the neural network, its operation and focus on the ability of the network to deduce, without prior learning, the derivatives of the flow law with respect to the model inputs. In order to validate the robustness and accuracy of the proposed model, we compare and analyze the performance of several network architectures with respect to the analytical formulation of a Johnson-Cook behavior law for a 42CrMo4 steel. In a second part, after having selected an Artificial Neural Network architecture with $2$ hidden layers, we present the implementation of this model in the Abaqus Explicit computational code in the form of a VUHARD subroutine. The predictive capability of the proposed model is then demonstrated during the numerical simulation of two test cases: the necking of a circular bar and a Taylor impact test. The results obtained show a very high capability of the ANN to replace the analytical formulation of a Johnson-Cook behavior law in a finite element code, while remaining competitive in terms of numerical simulation time compared to a classical approach.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源