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首页> 外文期刊>The Aeronautical Journal >Maximum entropy approach to the identification of stochastic reduced-order models of nonlinear dynamical systems
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Maximum entropy approach to the identification of stochastic reduced-order models of nonlinear dynamical systems

机译:基于最大熵的非线性动力学系统随机降阶模型辨识

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摘要

Data-driven methodologies based on the restoring force method have been developed over the past few decades for building predictive reduced-order models (ROMs) of nonlinear dynamical systems. These methodologies involve fitting a polynomial expansion of the restoring force in the dominant state variables to observed states of the system. ROMs obtained in this way are usually prone to errors and uncertainties due to the approximate nature of the polynomial expansion and experimental limitations. We develop in this article a stochastic methodology that endows these errors and uncertainties with a probabilistic structure in order to obtain a quantitative description of the proximity between the ROM and the system that it purports to represent. Specifically, we propose an entropy maximization procedure for constructing a multi-variate probability distribution for the coefficients of power-series expansions of restoring forces. An illustration in stochastic aeroelastic stability analysis is provided to demonstrate the proposed framework.
机译:在过去的几十年中,已经建立了基于恢复力方法的数据驱动方法,用于建立非线性动力学系统的预测降阶模型(ROM)。这些方法涉及将主导状态变量中恢复力的多项式展开拟合到系统的观察状态。由于多项式展开的近似性质和实验局限性,以这种方式获得的ROM通常容易出现错误和不确定性。我们在本文中开发了一种随机方法,使这些错误和不确定性具有概率结构,以便获得ROM与它所代表的系统之间的接近程度的定量描述。具体来说,我们提出了一种熵最大化程序,用于构造恢复力的幂级数膨胀系数的多元概率分布。提供了随机气动弹性稳定性分析的例证,以证明所提出的框架。

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