Using the Cumulative Function Method to Transform non-Gaussian Random Processes, Signals and Noise in the Differentiating Systems

V. M. Artyushenko, V. I. Volovach
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Abstract

It is shown that one of commonly used approximate methods is the description of non-Gaussian processes, signals and noise as a finite sequence of elements or cumulant functions. In this case, if a large number of terms of the sequence is used, an acceptable error of the description can be obtained. The analysis of characteristics of the non-Gaussian random process by the method of cumulant functions for a linear system is carried out. Here, the random process is given by a set of cumulant functions, whereas the linear system is described by a certain differentiation operator. It is shown that the stationarity of the input process determines the stationarity of the output process. The values of a cumulant function of the second order for a given process at the output of a linear system are determined. We also determined cumulant functions of derivatives of random processes. It is shown that cumulant functions at the output of the linear system can be determined by using a transition function of the linear system. The characteristics of the non-Gaussian random process for an ideal linear filter are analyzed by the method of cumulant functions. Expressions for cumulant functions of two-moment probability density functions at the output of the filter and expressions describing the spectra of the above-mentioned cumulant functions are obtained. The characteristics of the nonGaussian random process for the nonlinear differentiating system are analyzed by the method of cumulant functions. The expressions for determining the spectra of cumulant functions of the first four orders are given. The dependence graphs of normalized spectra of cumulant functions for the analyzed nonlinear system are obtained. Each of the spectra contains both low-frequency and high-frequency components.
用累积函数法变换微分系统中的非高斯随机过程、信号和噪声
结果表明,常用的近似方法之一是将非高斯过程、信号和噪声描述为有限单元序列或累积函数。在这种情况下,如果使用大量的序列项,则可以获得可接受的描述误差。用累积函数法分析了线性系统的非高斯随机过程的特性。在这里,随机过程由一组累积函数给出,而线性系统由某个微分算子描述。结果表明,输入过程的平稳性决定了输出过程的平稳性。在线性系统的输出处,确定给定过程的二阶累积函数的值。我们还确定了随机过程导数的累积函数。结果表明,利用线性系统的过渡函数可以确定线性系统输出处的累积函数。用累积函数法分析了理想线性滤波器的非高斯随机过程的特性。得到了滤波器输出端的二矩概率密度函数的累积函数表达式和描述上述累积函数谱的表达式。用累积函数的方法分析了非线性微分系统的非高斯随机过程的特性。给出了确定前四阶累积函数谱的表达式。得到了所分析的非线性系统的累积函数归一化谱的依赖图。每个光谱都包含低频和高频成分。
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