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首页> 外文期刊>Frontiers in Materials >On-the-Fly Adaptivity for Nonlinear Twoscale Simulations Using Artificial Neural Networks and Reduced Order Modeling
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On-the-Fly Adaptivity for Nonlinear Twoscale Simulations Using Artificial Neural Networks and Reduced Order Modeling

机译:使用人工神经网络的非线性双尺度模拟的现行适应性,减少阶阶型

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摘要

A multi-fidelity surrogate model for highly nonlinear multiscale problems is proposed. It is based on the introduction of two different surrogate models and an adaptive on-the-fly switching. The two concurrent surrogates are built incrementally starting from a moderate set of evaluations of the full order model. Therefore, a reduced order model (ROM) is generated. Using a hybrid ROM-preconditioned FE solver additional effective stress-strain data is simulated while the number of samples is kept to a moderate level by using a dedicated and physics-guided sampling technique. Machine learning (ML) is subsequently used to build the second surrogate by means of artificial neural networks (ANN). Different ANN architectures are explored and the features used as inputs of the ANN are fine tuned in order to improve the overall quality of the ML model. Additional ML surrogates for the stress errors are generated. Therefore, conservative design guidelines for error surrogates are presented by adapting the loss functions of the ANN training in pure regression or pure classification settings. The error surrogates can be used as quality indicators in order to adaptively select the appropriate—i.e. efficient yet accurate—surrogate. Two strategies for the on-the-fly switching are investigated and a practicable and robust algorithm is proposed that eliminates relevant technical difficulties attributed to model switching. The provided algorithms and ANN design guidelines can easily be adopted for different problem settings and, thereby, they enable generalization of the used machine learning techniques for a wide range of applications. The resulting hybrid surrogate is employed in challenging multilevel FE simulations for a three-phase composite with pseudo-plastic micro-constituents. Numerical examples highlight the performance of the proposed approach.
机译:提出了一种用于高度非线性多尺度问题的多保真代理模型。它是基于引入两种不同的代理模型和自适应的动作开关。这两个并发代理是从完整订单模型的中等评估开始逐步构建的。因此,生成减少的订单模型(ROM)。使用混合ROM - 预处理FE求解器求额外的有效应力 - 应变数据,同时采用专用和物理引导的采样技术将样品的数量保持在适度级别。随后用于通过人工神经网络(ANN)构建第二代替换机器学习(ML)。探索了不同的ANN架构,用作ANN的输入的功能是微调的,以提高ML模型的整体质量。产生压力误差的额外ML替代物。因此,通过调整纯回归或纯分类设置的ANN培训的损失函数来提出保守设计指南。误差代理可以用作质量指标,以便自适应地选择合适的-E.E。高效但准确的代理人。调查了两种用于动作开关的策略,提出了一种可行和强大的算法,以消除归因于模型切换的相关技术难点。对于不同的问题设置,可以轻松采用提供的算法和ANN设计指南,从而可以实现用于广泛应用的二手机器学习技术的泛化。所得到的杂交替代物用于用伪塑料微量成分的三相复合材料具有挑战性的多级FE模拟。数值示例突出了所提出的方法的性能。

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