数据驱动的随机平均

IF 2.6 4区 工程技术 Q2 MECHANICS Journal of Applied Mechanics-Transactions of the Asme Pub Date : 2023-07-31 DOI:10.1115/1.4063065
Junyin Li, Zhanchao Huang, Yong Wang, Zhilong Huang, W. Zhu
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引用次数: 0

摘要

随机平均作为一种有效的降维技术,在随机动力学和控制中具有重要意义。然而,由于其对控制方程的依赖性和数学运算的复杂性,它在工业和工程领域的实际应用受到了严重阻碍。在此,开发了一种数据驱动的方法,称为数据驱动随机平均,仅使用从原始高维动力系统捕获的随机状态数据来自动发现低维随机微分方程。该方法包括两个连续步骤,即提取隐藏在快速变化状态数据中的所有缓慢变化过程,并通过其数学定义识别漂移和扩散系数。它自动化了尺寸缩减,特别适用于控制方程和激励数据不可用的情况。通过几个纯高斯白噪声激励或组合激励的数值或实验例子,说明了它的应用、有效性以及与基于理论的随机平均的比较。
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Data-Driven Stochastic Averaging
Stochastic averaging, as an effective technique for dimension reduction, is of great significance in stochastic dynamics and control. However, its practical applications in industrial and engineering fields are severely hindered by its dependence on governing equations and the complexity of mathematical operations. Herein, a data-driven method, named data-driven stochastic averaging, is developed to automatically discover the low-dimensional stochastic differential equations using only the random state data captured from the original high-dimensional dynamical systems. This method includes two successive steps, i.e., extracting all slowly-varying processes hidden in fast-varying state data and identifying drift and diffusion coefficients by their mathematical definitions. It automates dimension reduction and is especially suitable for cases with unavailable governing equations and excitation data. Its application, efficacy and comparison with theory-based stochastic averaging are illustrated through several examples, numerical or experimental, with pure Gaussian white noise excitation or combined excitations.
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来源期刊
CiteScore
4.80
自引率
3.80%
发文量
95
审稿时长
5.8 months
期刊介绍: All areas of theoretical and applied mechanics including, but not limited to: Aerodynamics; Aeroelasticity; Biomechanics; Boundary layers; Composite materials; Computational mechanics; Constitutive modeling of materials; Dynamics; Elasticity; Experimental mechanics; Flow and fracture; Heat transport in fluid flows; Hydraulics; Impact; Internal flow; Mechanical properties of materials; Mechanics of shocks; Micromechanics; Nanomechanics; Plasticity; Stress analysis; Structures; Thermodynamics of materials and in flowing fluids; Thermo-mechanics; Turbulence; Vibration; Wave propagation
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