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首页> 外文期刊>Journal of Sound and Vibration >Variance-reduced weak Monte Carlo simulations of stochastically driven oscillators of engineering interest
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Variance-reduced weak Monte Carlo simulations of stochastically driven oscillators of engineering interest

机译:随机变量驱动的具有工程学意义的振荡器的方差减小的弱蒙特卡罗模拟

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Analytical solutions of nonlinear and higher-dimensional stochastically driven oscillators are rarely possible and this leaves the direct Monte Carlo simulation of the governing stochastic differential equations (SDEs) as the only tool to obtain the required numerical solution. Engineers, in particular, are mostly interested in weak numerical solutions, which provide a faster and simpler computational framework to obtain the statistical expectations (moments) of the response functions. The numerical integration tools considered in this study are weak versions of stochastic Euler and stochastic Newmark methods. A well-known limitation of a Monte Carlo approach is however the requirement of a large ensemble size in order to arrive at convergent estimates of the statistical quantities of interest. Presently, a simple form of a variance reduction strategy is proposed such that the ensemble size may be significantly reduced without affecting the accuracy of the predicted expectations of any function of the response vector process provided that the function can be adequately represented through a power-series approximation. The basis of the variance reduction strategy is to appropriately augment the governing system equations and then weakly replace the stochastic forcing function (which is typically a filtered white noise process) through a set of variance-reduced functions. In the process, the additional computational cost due to system augmentation is far smaller than the accrued advantages due to a drastically reduced ensemble size. Indeed, we show that the proposed method appears to work satisfactorily even in the special case of the ensemble size being just 1. The variance reduction scheme is first illustrated through applications to a nonlinear Duffing equation driven by additive and multiplicative white noise processes- a problem for which exact stationary solutions are known. This is followed up with applications of the strategy to a few higher-dimensional systems, i.e., 2- and 3-dof nonlinear oscillators under additive white noises. (c) 2007 Elsevier Ltd. All rights reserved.
机译:非线性和高维随机驱动振荡器的解析解几乎是不可能的,这使控制随机微分方程(SDE)的直接蒙特卡罗模拟成为获得所需数值解的唯一工具。工程师尤其对弱数值解感兴趣,弱数值解提供了更快,更简单的计算框架来获得响应函数的统计期望(矩)。本研究中考虑的数值积分工具是随机欧拉方法和随机Newmark方法的弱版本。然而,蒙特卡洛方法的一个众所周知的局限是需要大的集合体,以便得出感兴趣的统计量的收敛估计。当前,提出了一种简单形式的方差减少策略,使得可以显着减小集合大小,而不会影响响应矢量过程的任何函数的预测期望的准确性,条件是该函数可以通过幂级数充分表示近似。方差减少策略的基础是适当地扩充控制系统方程,然后通过一组方差减少函数来弱替换随机强迫函数(通常是经过滤波的白噪声过程)。在此过程中,由于系统扩充而导致的额外计算成本远远小于由于整体尺寸大大减小而产生的优势。确实,我们表明,即使在整体大小仅为1的特殊情况下,所提出的方法仍能令人满意地工作。方差减少方案首先通过应用由加法和乘法白噪声过程驱动的非线性Duffing方程进行了说明-一个问题确切的固定解是已知的。随后将该策略应用于一些高维系统,即在加性白噪声下的2-dof和3-dof非线性振荡器。 (c)2007 Elsevier Ltd.保留所有权利。

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