论文标题

用于多余量表的机器学习桥接和材料的动态模拟

Machine Learning for Multi-fidelity Scale Bridging and Dynamical Simulations of Materials

论文作者

Batra, Rohit, Sankaranarayanan, Subramanian

论文摘要

分子动力学(MD)是一种强大而流行的工具,用于了解纳米和介质尺度上材料的动力学演变。 MD有各种各样的口味,从高保真度中,尽管计算昂贵的AB-Initio MD到相对较低的保真度,但具有更高效率的经典MD,例如原子和粗粒模型。材料科学家已经独立使用了这些不同的MD口味,以实现材料发现和设计方面的突破。各种MD风味之间存在着重要的鸿沟,每种口味具有不同的忠诚度。 DFT或AB-Initio MD的准确性通常高于经典原子模拟的准确性,该模拟高于粗粒模型。多保真规模桥接结合了AB-Initio MD与效率的经典MD的准确性和灵活性是一个长期目标。 Big-Data Analytics的出现使可以部署以实现这一目标的最前沿强大的机器学习方法。在这里,我们提供了关于多保真量表桥梁的挑战的观点,并追踪导致使用机器学习算法和数据科学来解决这一巨大挑战的发展。

Molecular dynamics (MD) is a powerful and popular tool for understanding the dynamical evolution of materials at the nano and mesoscopic scales. There are various flavors of MD ranging from the high fidelity albeit computationally expensive ab-initio MD to relatively lower fidelity but much more efficient classical MD such as atomistic and coarse-grained models. Each of these different flavors of MD have been independently used by materials scientists to bring about breakthroughs in materials discovery and design. A significant gulf exists between the various MD flavors, each having varying levels of fidelity. The accuracy of DFT or ab-initio MD is generally much higher than that of classical atomistic simulations which is higher than that of coarse-grained models. Multi-fidelity scale bridging to combine the accuracy and flexibility of ab-initio MD with efficiency classical MD has been a longstanding goal. The advent of big-data analytics has brought to the forefront powerful machine learning methods that can be deployed to achieve this goal. Here, we provide our perspective on the challenges in multi-fidelity scale bridging and trace the developments leading up to the use of machine learning algorithms and data-science towards addressing this grand challenge.

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