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首页> 外文期刊>Fractals: An interdisciplinary journal on the complex geometry of nature >ERROR ASSESSMENT IN MODELING WITH FRACTAL BROWNIAN MOTIONS
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ERROR ASSESSMENT IN MODELING WITH FRACTAL BROWNIAN MOTIONS

机译:分形布朗运动建模中的误差评估

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摘要

To model a given time series F(t) with fractal Brownian motions (fBms), it is necessary to have appropriate error assessment for related quantities. Usually the fractal dimension D is derived from the Hurst exponent H via the relation D = 2-H, and the Hurst exponent can be evaluated by analyzing the dependence of the rescaled range <|F(t+ τ)-F(t)|> on the time span τ. For fBms, the error of the rescaled range not only depends on data sampling but also varies with H due to the presence of long term memory. This error for a given time series then can not be assessed without knowing the fractal dimension. We carry out extensive numerical simulations to explore the error of rescaled range of fBms and find that for 0 < H < 0.5, |F(t + τ) - F(t)| can be treated as independent for time spans without overlap; for 0.5 < H < 1, the long term memory makes |F(t + τ) -F(t)| correlated and an approximate method is given to evaluate the error of <|F(t + τ) - F(t)|> The error and fractal dimension can then be determined self-consistently in the modeling of a time series with fBms.
机译:要使用分形布朗运动(fBms)对给定的时间序列F(t)建模,必须对相关量进行适当的误差评估。通常,分形维数D是从Hurst指数H通过关系D = 2-H得出的,并且Hurst指数可以通过分析重标范围<| F(t +τ)-F(t)|>的依赖性来评估。在时间跨度τ上。对于fBms,重新缩放范围的误差不仅取决于数据采样,而且由于存在长期存储器而随H的变化而变化。在不知道分形维数的情况下,无法评估给定时间序列的误差。我们进行了广泛的数值模拟,以探究fBms重标范围的误差,发现对于0 的误差,然后可以在使用fBms建模时间序列时自洽地确定误差和分形维数。

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