Multifractal detrended fluctuation analysis based on fractal fitting: The long-range correlation detection method for highway volume data

Physica A: Statistical Mechanics and its Applications(2016)

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Abstract
In this paper, we investigate the traffic time series for volume data observed on the Guangshen highway. We introduce a multifractal detrended fluctuation analysis based on fractal fitting (MFDFA-FF), which is one of the most effective methods to detect long-range correlations of time series. Through effective detecting of long-range correlations, highway volume can be predicted more accurately. In order to get a better detrend effect, we use fractal fitting to replace polynomial fitting in detrend process, the result shows that fractal fitting can get a better detrend effect than polynomial fitting and the MFDFA-FF method can achieve a more accurate research result. Then we introduce the Legendre spectrum to detect the multifractal property characterized by the long-range correlation and multifractality of Guangshen highway volume data.
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Key words
Fractal interpolation,Fractal fitting,MFDFA-FF,Legendre spectrum,Long-range correlation
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