论文标题

基于机器学习的可塑性模型,使用正交分解

A machine learning based plasticity model using proper orthogonal decomposition

论文作者

Huang, Dengpeng, Fuhg, Jan Niklas, Weißenfels, Christian, Wriggers, Peter

论文摘要

与经典数值方法相比,数据驱动的材料模型具有许多优势,例如直接利用实验数据以及在可用数据可用时提高预测性能的可能性。开发数据驱动材料模型的一种方法是使用机器学习工具。这些可以在离线训练以适应观察到的物质行为,然后应用于在线应用程序中。但是,学习和预测依赖历史的材料模型(例如可塑性)仍然具有挑战性。在这项工作中,为弹性和可塑性提出了基于机器学习的材料建模框架。基于机器学习的超弹性模型是通过Feed向前神经网络(FNN)直接开发的,而基于机器学习的可塑性模型是通过使用一种称为适当正交分解的新方法来开发的,称为正交分解馈送前向神经网络(PODFNN)。为了说明加载历史记录,建议累积的绝对应变是可塑性模型的历史变量。另外,根据可塑性序列的概念,从不同的负载解载路径中收集了可塑性的应变应力序列数据。通过POD,将多维应力序列解耦,从而导致独立的一维系数序列。在这种情况下,具有多个输出的神经网络被多个独立的神经网络取代,每个神经网络具有一维输出,从而导致训练时间较小和更好的训练性能。为了在有限元分析中应用基于机器学习的材料模型,切线矩阵是由自动符号分化工具ACEGEN得出的。通过使用2D和3D有限元分析的一系列数值示例研究了所提出模型的有效性和概括。

Data-driven material models have many advantages over classical numerical approaches, such as the direct utilization of experimental data and the possibility to improve performance of predictions when additional data is available. One approach to develop a data-driven material model is to use machine learning tools. These can be trained offline to fit an observed material behaviour and then be applied in online applications. However, learning and predicting history dependent material models, such as plasticity, is still challenging. In this work, a machine learning based material modelling framework is proposed for both elasticity and plasticity. The machine learning based hyperelasticity model is developed with the Feed forward Neural Network (FNN) directly whereas the machine learning based plasticity model is developed by using of a novel method called Proper Orthogonal Decomposition Feed forward Neural Network (PODFNN). In order to account for the loading history, the accumulated absolute strain is proposed to be the history variable of the plasticity model. Additionally, the strain-stress sequence data for plasticity is collected from different loading-unloading paths based on the concept of sequence for plasticity. By means of the POD, the multi-dimensional stress sequence is decoupled leading to independent one dimensional coefficient sequences. In this case, the neural network with multiple output is replaced by multiple independent neural networks each possessing a one-dimensional output, which leads to less training time and better training performance. To apply the machine learning based material model in finite element analysis, the tangent matrix is derived by the automatic symbolic differentiation tool AceGen. The effectiveness and generalization of the presented models are investigated by a series of numerical examples using both 2D and 3D finite element analysis.

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