Department of Mechanical Engineering, University of Michigan, Ann Arbor, MI, USA.
Philos Trans A Math Phys Eng Sci. 2022 Aug 8;380(2229):20210213. doi: 10.1098/rsta.2021.0213. Epub 2022 Jun 20.
In recent years, we have witnessed a significant shift toward ever-more complex and ever-larger-scale systems in the majority of the grand societal challenges tackled in applied sciences. The need to comprehend and predict the dynamics of complex systems have spurred developments in large-scale simulations and a multitude of methods across several disciplines. The goals of understanding and prediction in complex dynamical systems, however, have been hindered by high dimensionality, complexity and chaotic behaviours. Recent advances in data-driven techniques and machine-learning approaches have revolutionized how we model and analyse complex systems. The integration of these techniques with dynamical systems theory opens up opportunities to tackle previously unattainable challenges in modelling and prediction of dynamical systems. While data-driven prediction methods have made great strides in recent years, it is still necessary to develop new techniques to improve their applicability to a wider range of complex systems in science and engineering. This focus issue shares recent developments in the field of complex dynamical systems with emphasis on data-driven, data-assisted and artificial intelligence-based discovery of dynamical systems. This article is part of the theme issue 'Data-driven prediction in dynamical systems'.
近年来,在应用科学中应对大多数重大社会挑战时,我们见证了向更加复杂和大规模系统的重大转变。理解和预测复杂系统的动态的需求推动了大规模模拟以及跨多个学科的多种方法的发展。然而,理解和预测复杂动力系统的目标受到了高维性、复杂性和混沌行为的阻碍。近年来,数据驱动技术和机器学习方法的进步彻底改变了我们对复杂系统进行建模和分析的方式。这些技术与动力系统理论的集成为解决建模和预测动力系统方面以前无法实现的挑战提供了机会。虽然近年来数据驱动的预测方法已经取得了很大的进展,但仍需要开发新技术来提高它们在科学和工程中更广泛的复杂系统中的适用性。本期特刊分享了复杂动力系统领域的最新进展,重点介绍了基于数据驱动、数据辅助和人工智能的动力系统发现。本文是“动力系统中的数据驱动预测”主题特刊的一部分。