高振荡系统的高阶相位平均

W. Bauer, C. Cotter, B. Wingate
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引用次数: 2

摘要

介绍了非线性振荡系统的一种高阶相位平均方法。相位平均是一种从动态中过滤快速运动的技术,同时仍然考虑到它们对慢动态的影响。相位平均对于推导简化模型是有用的,因为可以采取更大的时间步长,可以更有效地进行数值求解。最近,Haut和Wingate(2014)引入了并行计算有限窗口数值相位平均值的思想,作为并行实时算法的粗传播算子的基础。在这个贡献中,我们提供了一个高阶相位平均的框架,旨在更好地近似非平均系统,同时仍然过滤快速运动。而基本相位平均法假定解与相位变化无关,而高阶方法则在方程投影到的基上展开相位依赖性。在这个新的框架中,原始的数值相平均公式作为这个展开式的最低阶版本出现。我们在相位为k次多项式的函数上的新投影对相位平均公式进行了高阶修正。我们在描述Lynch(2002)摆动弹簧动力学的ODE上说明了这种方法的性质。虽然是理想化的,但这个模型与地球物理流动有一个有趣的相似之处,因为它表现出一种缓慢的动力学,这种动力学是通过快速振荡之间的共振产生的。在这个例子中,我们也展示了有限平均窗口下,随着逼近阶数的增加,非平均(精确)解的收敛性。在零阶时,我们的方法与标准相位平均一致,但在高阶时,它更准确,因为相位平均模型的解更准确地跟踪非平均方程的解。
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Higher order phase averaging for highly oscillatory systems
We introduce a higher order phase averaging method for nonlinear oscillatory systems. Phase averaging is a technique to filter fast motions from the dynamics whilst still accounting for their effect on the slow dynamics. Phase averaging is useful for deriving reduced models that can be solved numerically with more efficiency, since larger timesteps can be taken. Recently, Haut and Wingate (2014) introduced the idea of computing finite window numerical phase averages in parallel as the basis for a coarse propagator for a parallel-in-time algorithm. In this contribution, we provide a framework for higher order phase averages that aims to better approximate the unaveraged system whilst still filtering fast motions. Whilst the basic phase average assumes that the solution independent of changes of phase, the higher order method expands the phase dependency in a basis which the equations are projected onto. In this new framework, the original numerical phase averaging formulation arises as the lowest order version of this expansion. Our new projection onto functions that are $k$th degree polynomials in the phase gives rise to higher order corrections to the phase averaging formulation. We illustrate the properties of this method on an ODE that describes the dynamics of a swinging spring due to Lynch (2002). Although idealized, this model shows an interesting analogy to geophysical flows as it exhibits a slow dynamics that arises through the resonance between fast oscillations. On this example, we show convergence to the non-averaged (exact) solution with increasing approximation order also for finite averaging windows. At zeroth order, our method coincides with a standard phase average, but at higher order it is more accurate in the sense that solutions of the phase averaged model track the solutions of the unaveraged equations more accurately.
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