论文标题

通过学习其有效动态的复杂系统的多尺度模拟

Multiscale Simulations of Complex Systems by Learning their Effective Dynamics

论文作者

Vlachas, Pantelis R., Arampatzis, Georgios, Uhler, Caroline, Koumoutsakos, Petros

论文摘要

复杂系统的预测模拟对于从天气预测到药物设计的应用至关重要。这些预测的真实性取决于它们捕获有效系统动态的能力。大规模平行的模拟通过解决所有时空尺度来预测系统动力学,通常是以防止实验的成本,而其发现可能不允许进行概括。另一方面,减少的订单模型是快速的,但受到系统动力学和/或启发式封闭的利用的经常线性化的限制。在这里,我们提出了一个新颖的系统框架,该框架桥接了大规模的模拟并减少了订单模型,以了解各种复杂系统的有效动态(LED)。该框架在非线性机器学习算法和用于建模复杂系统的方程式方法之间形成算法合金。 LED部署自动编码器以在细粒度和粗粒表示之间制定映射,并使用复发性神经网络发展潜在的空间动力学。该算法在基准问题上进行了验证,我们发现它的表现优于最终的状态,从可预测性和大规模模拟方面,就成本降低了订单模型。 LED适用于从化学到流体力学的系统,并将计算工作减少多达两个数量级,同时保持完整系统动力学的预测准确性。我们认为LED为复杂系统的准确预测提供了一种新颖的有效方式。

Predictive simulations of complex systems are essential for applications ranging from weather forecasting to drug design. The veracity of these predictions hinges on their capacity to capture the effective system dynamics. Massively parallel simulations predict the system dynamics by resolving all spatiotemporal scales, often at a cost that prevents experimentation while their findings may not allow for generalisation. On the other hand reduced order models are fast but limited by the frequently adopted linearization of the system dynamics and/or the utilization of heuristic closures. Here we present a novel systematic framework that bridges large scale simulations and reduced order models to Learn the Effective Dynamics (LED) of diverse complex systems. The framework forms algorithmic alloys between non-linear machine learning algorithms and the Equation-Free approach for modeling complex systems. LED deploys autoencoders to formulate a mapping between fine and coarse-grained representations and evolves the latent space dynamics using recurrent neural networks. The algorithm is validated on benchmark problems and we find that it outperforms state of the art reduced order models in terms of predictability and large scale simulations in terms of cost. LED is applicable to systems ranging from chemistry to fluid mechanics and reduces the computational effort by up to two orders of magnitude while maintaining the prediction accuracy of the full system dynamics. We argue that LED provides a novel potent modality for the accurate prediction of complex systems.

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