Next: Introduction
Effect of Trends on Detrended Fluctuation Analysis
Kun Hu,
Plamen Ch. Ivanov, Zhi Chen, Pedro Carpena, H. Eugene Stanley
Center for Polymer Studies and Department of Physics,
Boston University, Boston, MA 02215
Harvard Medical School, Beth Israel Deaconess Medical
Center, Boston, MA 02215
Departamento de Física Aplicada II, Universidad de
Málaga E-29071, Spain
Abstract:
Detrended fluctuation analysis (DFA) is a scaling analysis method
used to estimate long-range power-law correlation exponents in noisy
signals. Many noisy signals in real systems display trends, so that the
scaling results obtained from the DFA method become difficult to
analyze. We systematically study the effects of three types of trends --
linear, periodic, and power-law trends, and offer examples where these
trends are likely to occur in real data. We compare the difference
between the scaling results for artificially generated correlated noise
and correlated noise with a trend, and study how trends lead to the
appearance of crossovers in the scaling behavior. We find that
crossovers result from the competition between the scaling of the noise
and the ``apparent'' scaling of the trend. We study how the
characteristics of these crossovers depend on (i) the slope of the
linear trend; (ii) the amplitude and period of the periodic trend; (iii)
the amplitude and power of the power-law trend and (iv) the length as
well as the correlation properties of the noise. Surprisingly, we find
that the crossovers in the scaling of noisy signals with trends also
follow scaling laws -- i.e. long-range power-law dependence of the
position of the crossover on the parameters of the trends. We show that
the DFA result of noise with a trend can be exactly determined by the
superposition of the separate results of the DFA on the noise and on the
trend, assuming that the noise and the trend are not correlated. If this
superposition rule is not followed, this is an indication that the noise
and the superimposed trend are not independent, so that removing the
trend could lead to changes in the correlation properties of the noise.
In addition, we show how to use DFA appropriately to minimize the
effects of trends, and how to recognize if a crossover indicates indeed
a transition from one type to a different type of underlying
correlation, or the crossover is due to a trend without any transition
in the dynamical properties of the noise.
Next: Introduction
Zhi Chen 2002-08-28