• Title of article

    Analyzing exact fractal time series: evaluating dispersional analysis and rescaled range methods

  • Author/Authors

    David C. Caccia، نويسنده , , Donald Percival، نويسنده , , Michael J. Cannon، نويسنده , , Gary Raymond، نويسنده , , James B. Bassingthwaighte، نويسنده ,

  • Issue Information
    روزنامه با شماره پیاپی سال 1997
  • Pages
    24
  • From page
    609
  • To page
    632
  • Abstract
    Precise reference signals are required to evaluate methods for characterizing a fractal time series. Here we use fGp (fractional Gaussian process) to generate exact fractional Gaussian noise (fGn) reference signals for one-dimensional time series. The average autocorrelation of multiple realizations of fGn converges to the theoretically expected autocorrelation. Two methods, commonly used to generate fractal time series, an approximate spectral synthesis (SSM) method and the successive random addition (SRA) method, do not give the correct correlation structures and should be abandoned. Time series from fGp were used to test how well several versions of rescaled range analysis (R/S) and dispersional analysis (Disp) estimate the Hurst coefficient (0 < H < 1.0). Disp is unbiased for H < 0.9 and series length N 1024, but underestimates H when H> 0.9 R/S-detrended overestimates H for time series with H < 0.7 and underestimates H for H> 0.7. Estimates of from all versions of Disp usually have lower bias and variance than those from R/S. All versions of dispersional analysis, Disp, now tested on fGp, are better than we previously thought and are recommended for evaluating time series as long-memory processes
  • Journal title
    Physica A Statistical Mechanics and its Applications
  • Serial Year
    1997
  • Journal title
    Physica A Statistical Mechanics and its Applications
  • Record number

    864975