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1/f SPECTRA AS A CONSEQUENCE OF THE RANDOMNESS OF VARIANCE

机译:1 / F光谱作为方差随机性

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It is a general conviction that any measured noise be stochastically continuous and weak stationary. Therefore, standard noise analysis uses the substitution of ensemble averages by time averages, and it considers likewise the autocorrelation function and the sample spectrum as an unbiased and complete characterization of the measured process. However, randomly distributed discontinuities make the constant variance turn into a random one. This contradicts the standard suppositions. We consider the random walk as a typical non-continuous process and derive the influence of the 'variance of variance' on the measured spectrum. In contrast to the standard analysis, sums of squares are no longer proportional to the chi-square-distribution, but to a distribution with a larger variance. When decomposing the data into fixed and random variance components, it can be shown that, despite independent increments, the random variance component produces a positive and time dependent expectation of the covariance. This is the source of the typically shaped non-zero autocorrelation function and the 1/f spectrum. The expectation of the autocorrelation at any given time difference is the product of the random variance component and a factor, which depends only on the total number of data and on the number of sampling intervals between the associated pairs of data. Consequently, the 1/f spectrum is no longer to be understood within the meaning of Parseval' s theorem. The larger the ratio of the random to the fixed variance component, the higher the 1/f increase onset frequency. 'Almost smooth' processes yield an 'almost white' spectrum, larger variance of increments generates a 1/f spectrum over a larger range of frequencies, and if the quotient between random and fixed variance components approaches 1, the 1/f spectrum will appear to extend over the full range of frequencies.
机译:通常定罪,任何测量的噪音都是随机连续和弱静止的。因此,标准噪声分析使用时间平均值替换集合平均值,并且同样认为自相关函数和样本谱作为测量过程的无偏见和完整表征。然而,随机分布的不连续性使得恒定方差变成随机的方差。这与标准假设相矛盾。我们认为随机步行作为典型的非连续过程,并导出“方差方差”对测量光谱的影响。与标准分析相反,正方形的总和不再与Chi-Square分布成比例,而是与具有较大方差的分布。当数据分解成固定和随机方差分量时,可以示出,尽管是独立的增量,随机方差分量产生了对协方差的正和时间依赖性期望。这是通常成形的非零自相关函数和1 / F光谱的源。在任何给定的时间差的期望在任何给定的时间差都是随机方差分量的乘积和一个因子,这仅取决于数据总数和相关联的数据对之间的采样间隔的数量。因此,在Parseval定理的含义内不再理解1 / f频谱。随机与固定方差分量的比率越大,1 / f增加起始频率越高。 “几乎顺利”过程产生“几乎白”频谱,较大的增量方差在更大范围内产生1 / f频谱,如果随机和固定方差分量之间的商,则会出现1 / F频谱延长全方位的频率。

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