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Digital simulation of an arbitrary stationary stochastic process by spectral representation

机译:频谱表示法对任意平稳随机过程的数字仿真

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In this paper we present a straightforward, efficient, and computationally fast method for creating a large number of discrete samples with an arbitrary given probability density function and a specified spectral content. The method relies on initially transforming a white noise sample set of random Gaussian distributed numbers into a corresponding set with the desired spectral distribution, after which this colored Gaussian probability distribution is transformed via an inverse transform into the desired probability distribution. In contrast to previous work, where the analyses were limited to auto regressive and or iterative techniques to obtain satisfactory results, we find that a single application of the inverse transform method yields satisfactory results for a wide class of arbitrary probability distributions. Although a single application of the inverse transform technique does not conserve the power spectra exactly, it yields highly accurate numerical results for a wide range of probability distributions and target power spectra that are sufficient for system simulation purposes and can thus be regarded as an accurate engineering approximation, which can be used for wide range of practical applications. A sufficiency condition is presented regarding the range of parameter values where a single application of the inverse transform method yields satisfactory agreement between the simulated and target power spectra, and a series of examples relevant for the optics community are presented and discussed. Outside this parameter range the agreement gracefully degrades but does not distort in shape. Although we demonstrate the method here focusing on stationary random processes, we see no reason why the method could not be extended to simulate non-stationary random processes.
机译:在本文中,我们提出了一种简单,有效且计算快速的方法,用于创建具有任意给定概率密度函数和指定频谱含量的大量离散样本。该方法依赖于首先将随机高斯分布数的白噪声样本集转换为具有所需频谱分布的对应集,然后将该彩色高斯概率分布通过逆变换转换为所需概率分布。与以前的工作相反,在以前的工作中,分析仅限于自回归和/或迭代技术以获得满意的结果,我们发现,逆变换方法的单个应用程序可针对广泛的任意概率分布类别产生令人满意的结果。尽管单次使用逆变换技术不能精确保存功率谱,但它针对各种概率分布和目标功率谱产生了非常精确的数值结果,这些结果足以满足系统仿真的需要,因此可以视为一种精确的工程近似,可用于广泛的实际应用。提出了有关参数值范围的充分条件,其中一次应用逆变换方法会在模拟功率谱和目标功率谱之间产生令人满意的一致性,并给出并讨论了与光学社区相关的一系列示例。在此参数范围之外,一致性会适当降低,但形状不会变形。尽管我们在这里展示了针对平稳随机过程的方法,但是我们看不出没有任何理由不能将该方法扩展为模拟非平稳随机过程。

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