We study the multifractal properties of water level with a high-frequency and massive time series using wavelet methods (estimation of Hurst exponents, multiscale diagram, and wavelet leaders for multifractal analysis (WLMF)) and multifractal detrended fluctuation analysis (MF-DFA). The dataset contains more than two million records from 10 observation sites at a northern China river. The multiscale behaviour is observed in this time series, which indicates the multifractality. This multifractality is detected via multiscale diagram. Then we focus on the multifractal analysis using MF-DFA and WLMF. The two methods give the same conclusion that at most sites the records satisfy the generalized binomial multifractal model, which is robust for...
Conference PaperIn this paper, we develop a new multiscale modeling framework for characterizing pos...
International audienceThe multifractal (MF) framework relates the scaling properties of turbulence t...
Hydrological fields are known to exhibit extreme variability over wide range of spatio-temporal scal...
Hydrology and more generally sciences involved in water resources management, researches and technol...
Scaling and multifractal properties of the hydrological processes of the Yangtze River basin were ex...
Multifractal detrended fluctuation analysis (MFDFA) can provide information about inner regularity, ...
We study temporal correlations and multifractal properties of long river discharge records from 41 h...
Multifractal detrended fluctuation analysis (MFDFA) method can examine higher-dimensional fractal an...
[Notes_IRSTEA]Ouvrage électronique [Departement_IRSTEA]RE [TR1_IRSTEA]RIE / TRANSFEAUThis book provi...
We present the application of a deterministic fractal geometric approach—the so-called fractal-multi...
In order to determine objectively the fractal behaviour of a time series, and to facilitate potentia...
The multifractal framework relates the scaling properties of turbulence to its local regularity prop...
Journal PaperIn this paper, we develop a new multiscale modeling framework for characterizing positi...
[Departement_IRSTEA]RE [TR1_IRSTEA]RIE / TRANSFEAUNational audienceExtremes and multifractals in hyd...
The joint multifractal analysis is usually conducted in two different variables for their cross-corr...
Conference PaperIn this paper, we develop a new multiscale modeling framework for characterizing pos...
International audienceThe multifractal (MF) framework relates the scaling properties of turbulence t...
Hydrological fields are known to exhibit extreme variability over wide range of spatio-temporal scal...
Hydrology and more generally sciences involved in water resources management, researches and technol...
Scaling and multifractal properties of the hydrological processes of the Yangtze River basin were ex...
Multifractal detrended fluctuation analysis (MFDFA) can provide information about inner regularity, ...
We study temporal correlations and multifractal properties of long river discharge records from 41 h...
Multifractal detrended fluctuation analysis (MFDFA) method can examine higher-dimensional fractal an...
[Notes_IRSTEA]Ouvrage électronique [Departement_IRSTEA]RE [TR1_IRSTEA]RIE / TRANSFEAUThis book provi...
We present the application of a deterministic fractal geometric approach—the so-called fractal-multi...
In order to determine objectively the fractal behaviour of a time series, and to facilitate potentia...
The multifractal framework relates the scaling properties of turbulence to its local regularity prop...
Journal PaperIn this paper, we develop a new multiscale modeling framework for characterizing positi...
[Departement_IRSTEA]RE [TR1_IRSTEA]RIE / TRANSFEAUNational audienceExtremes and multifractals in hyd...
The joint multifractal analysis is usually conducted in two different variables for their cross-corr...
Conference PaperIn this paper, we develop a new multiscale modeling framework for characterizing pos...
International audienceThe multifractal (MF) framework relates the scaling properties of turbulence t...
Hydrological fields are known to exhibit extreme variability over wide range of spatio-temporal scal...