Sequential methods for synthetic realisation of random processes have a number of advantages compared with spectral methods. In this article, the determination of optimal autoregressive (AR) models for reproducing a predefined target autocovariance function of a random process is addressed. To this end, a novel formulation of the problem is developed. This formulation is linear and generalises the well-known Yule-Walker (Y-W) equations and a recent approach based on restricted AR models (Krenk-Moller approach, K-M). Two main features characterise the introduced formulation: (i) flexibility in the choice for the autocovariance equations employed in the model determination, and (ii) flexibility in the definition of the AR model scheme. Both features were exploited by a genetic algorithm to obtain optimal AR models for the particular case of synthetic generation of homogeneous stationary isotropic turbulence time series. The obtained models improved those obtained with the Y-W and K-M approaches for the same model parsimony in terms of the global fitting of the target autocovariance function. Implications for the reproduced spectra are also discussed. The formulation for the multivariate case is also presented, highlighting the causes behind some computational bottlenecks.
翻译:与光谱方法相比,合成随机过程的相继实现方法具有若干优势。在本条中,确定了用于复制随机过程预定目标自动变异功能的最佳自动递减模型(AR)模型,为此,制定了问题的新配方。这种配方是线性,概括了著名的Yule-Walker(Y-W)等式和基于限制的AR模型(Krenk-Moller 方法,K-M)的最新方法(Krenk-Moller 方法,K-M)。两种主要特征是所采用公式的特点:(一) 模型确定中使用的自动递减方程选择的灵活性,以及(二) AR模型模型计划定义的灵活性。两种特征都由基因算法加以利用,以获得最佳的AR模型,用于合成生成同质定态静脉波波时间序列(Y-W和K-M方法)的特定情况。获得的模型改进了同一模型在目标自动变异函数的全球匹配性方面所获得的模型。对再现的光谱功能的影响。对再现的光谱模型的一些影响,也用于说明各种变动的计算。