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General Multi-Fidelity Framework for Training Artificial Neural Networks With Computational Models

机译:具有计算模型的人工神经网络的一般多保真框架

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Training of artificial neural networks (ANNs) relies on the availability of training data. If ANNs have to be trained to predict or control the behavior of complex physical systems, often not enough real-word training data are available, for example, because experiments or measurements are too expensive, time-consuming or dangerous. In this case, generating training data by way of realistic computational simulations is a viable and often the only promising alternative. Doing so can, however, be associated with a significant and often even prohibitive computational cost, which forms a serious bottleneck for the application of machine learning to complex physical systems. To overcome this problem, we propose in this paper a both systematic and general approach. It uses cheap low-fidelity computational models to start the training of the ANN and gradually switches to higher-fidelity training data as the training of the ANN progresses. We demonstrate the benefits of this strategy using examples from structural and materials mechanics. We demonstrate that in these examples the multi-fidelity strategy introduced herein can reduce the total computational cost – compared to simple brute-force training of ANNs – by a half up to one order of magnitude. This multi-fidelity strategy can thus be hoped to become a powerful and versatile tool for the future combination of computational simulations and artificial intelligence, in particular in areas such as structural and materials mechanics.
机译:人工神经网络(ANNS)的培训依赖于培训数据的可用性。如果必须培训ANNS以预测或控制复杂物理系统的行为,则通常不提供足够的实际训练数据,例如,因为实验或测量太昂贵,耗时或危险。在这种情况下,通过现实的计算模拟产生培训数据是可行性的,通常是唯一有前途的替代方案。然而,这样做可以与显着且通常甚至是欠富有的计算成本相关联,这形成了一个严重的瓶颈,用于将机器学习应用于复杂的物理系统。为了克服这个问题,我们提出了本文的系统和一般方法。它采用廉价的低保真计算模型开始培训ANN,逐渐转换为高保真培训数据,因为江纳的培训进行了进展。我们展示了使用结构和材料力学的示例的这种策略的益处。我们证明,在这些示例中,本文介绍的多保真策略可以减少总计算成本 - 与ANN的简单蛮力训练相比 - 一定程度的一半。因此,这种多保真策略可以成为未来计算模拟和人工智能的结合的强大和多功能的工具,特别是在诸如结构和材料力学等领域。

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