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Implicit Material Modelling Using Artificial Intelligence techniques

机译:采用人工智能技术的隐含材料建模

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Simulation of forming operations, particularly using the finite element method, is clearly dependent on the accuracy of the constitutive models. In the last years, several methodologies were developed to improve the accuracy of constitutive models through parameter identification and calibration methodologies. However, independently of the efficacy of the calibration methods, the accuracy of a constitutive model is always constrained to its predefined mathematical formulation. Today, artificial intelligence (AI), such as Machine-learning (ML) techniques, can be used to overpass these limitations. However, their use in the reproduction of material behaviour was not fully explored. This work proposes to model the behaviour of a metal material using ML techniques and use them in forming simulations. In this preliminary work, the ML model is defined by an artificial neural network and trained using a virtual material, whose behaviour is reproduced by a classical Chaboche-type elastoviscoplasticity model. This procedure allows evaluating the ML competence at least to replace classical models. Different ML topologies and optimization techniques are used to train the model. Then, the ML model is introduced into a finite element analysis (FEA) code, as a user subroutine, and its attainment in more complex strain states is evaluated. The replacement of classical formulations by AI techniques for the material behavior definition is analysed and discussed.
机译:形成操作的模拟,特别是使用有限元方法,显着取决于本构模型的准确性。在过去几年中,开发了几种方法,通过参数识别和校准方法提高了本构模型的准确性。然而,独立于校准方法的功效,构成模型的准确性总是被限制在其预定义的数学制剂中。如今,人工智能(AI),如机器学习(ML)技术,可用于超越这些限制。但是,它们在重复材料行为的繁殖中的使用并未完全探索。这项工作提出使用ML技术模拟金属材料的行为,并在形成模拟中使用它们。在该初步工作中,ML模型由人工神经网络定义并使用虚拟材料训练,其行为由经典Chaboche型Elastoviscoplicity模型再现。此过程允许至少评估ML竞争力以替换经典模型。不同的ML拓扑和优化技术用于训练模型。然后,将ML模型引入有限元分析(FEA)代码,作为用户子程序,评估其在更复杂的应变状态中的达到。分析并讨论了通过用于材料行为定义的AI技术替代经典制剂。

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