Approximate multifractal correlation and products of universal multifractal fields, with application to rainfall data
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Published:2020-03-19
Issue:1
Volume:27
Page:133-145
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ISSN:1607-7946
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Container-title:Nonlinear Processes in Geophysics
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language:en
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Short-container-title:Nonlin. Processes Geophys.
Author:
Gires AugusteORCID, Tchiguirinskaia Ioulia, Schertzer DanielORCID
Abstract
Abstract. Universal multifractals (UMs) have been widely used to simulate and characterize, with the help of only two physically meaningful parameters,
geophysical fields that are extremely variable across a wide range of scales. Such a framework relies on the assumption that the underlying field is generated
through a multiplicative cascade process. Derived analysis techniques have been extended to study correlations between two fields not only at
a single scale and for a single statistical moment as with the covariance, but across scales and for all moments. Such a framework of joint multifractal
analysis is used here as a starting point to develop and test an approach enabling correlations between UM fields to be analysed and approximately simulated. First, the behaviour of two fields consisting of renormalized multiplicative power law combinations of two UM fields is studied. It appears that in
the general case the resulting fields can be well approximated by UM fields with known parameters. Limits of this approximation will be quantified
and discussed. Techniques to retrieve the UM parameters of the underlying fields as well as the exponents of the combination have been developed and
successfully tested on numerical simulations. In a second step tentative correlation indicators are suggested. Finally the suggested approach is implemented to study correlation across scales of detailed rainfall data collected with the help of disdrometers
of the Fresnel platform of Ecole des Ponts ParisTech (see available data at https://hmco.enpc.fr/portfolio-archive/taranis-observatory/, last access: 12 March 2020). More precisely, four
quantities are used: the rain rate (R), the liquid water content (LWC) and the total drop concentration (Nt) along with the mass weighed
diameter (Dm), which are commonly used to characterize the drop size distribution. Correlations across scales are quantified. Their relative
strength (very strong between R and LWC, strong between DSD features and R or LWC, almost null between Nt and Dm) is discussed.
Publisher
Copernicus GmbH
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