Spatio-temporally extended nonlinear systems often exhibit a remarkable complexity in space and time. In many cases, extensive datasets of such systems are difficult to obtain, yet needed for a range of applications. Here, we present a method to generate synthetic time series or fields that reproduce statistical multi-scale features of complex systems. The method is based on a hierarchical refinement employing transition probability density functions (PDFs) from one scale to another. We address the case in which such PDFs can be obtained from experimental measurements or simulations and then used to generate arbitrarily large synthetic datasets. The validity of our approach is demonstrated at the example of an experimental dataset of high R...
The probabilistic reformulation of the multifractal model [1] is obtained directly from the structur...
As effective representations of complex systems, complex networks have attracted scholarly attention...
Scaling properties are among the most important quantifiers of complexity in many real systems, incl...
A new method is proposed which allows a reconstruction of time series based on higher order multisca...
This book focuses on a central question in the field of complex systems: Given a fluctuating (in tim...
The multiscale phenomenon widely exists in nonlinear complex systems. One efficient way to character...
Multi-scale systems, involving complex interacting processes that occur over a range of temporal and...
Turbulent fluid flows in atmospheric and oceanic sciences are characterized by strongly transient fe...
When the complete understanding of a complex system is not available, as, e. g., for systems conside...
The correct modeling of turbulent and transient flow is still a major task for computational fluid d...
Many real world systems consist of multiple parts and processes that nonlinearly interact with each ...
International audienceComplex systems often involve random fluctuations for which self-similar prope...
Simulating the turbulence effect on ground telescope observations is of fundamental importance for t...
The temporal evolution of real world systems can mathematically be described by dynamical systems. G...
We present a simple stochastic algorithm for generating multiplicative processes with multiscaling b...
The probabilistic reformulation of the multifractal model [1] is obtained directly from the structur...
As effective representations of complex systems, complex networks have attracted scholarly attention...
Scaling properties are among the most important quantifiers of complexity in many real systems, incl...
A new method is proposed which allows a reconstruction of time series based on higher order multisca...
This book focuses on a central question in the field of complex systems: Given a fluctuating (in tim...
The multiscale phenomenon widely exists in nonlinear complex systems. One efficient way to character...
Multi-scale systems, involving complex interacting processes that occur over a range of temporal and...
Turbulent fluid flows in atmospheric and oceanic sciences are characterized by strongly transient fe...
When the complete understanding of a complex system is not available, as, e. g., for systems conside...
The correct modeling of turbulent and transient flow is still a major task for computational fluid d...
Many real world systems consist of multiple parts and processes that nonlinearly interact with each ...
International audienceComplex systems often involve random fluctuations for which self-similar prope...
Simulating the turbulence effect on ground telescope observations is of fundamental importance for t...
The temporal evolution of real world systems can mathematically be described by dynamical systems. G...
We present a simple stochastic algorithm for generating multiplicative processes with multiscaling b...
The probabilistic reformulation of the multifractal model [1] is obtained directly from the structur...
As effective representations of complex systems, complex networks have attracted scholarly attention...
Scaling properties are among the most important quantifiers of complexity in many real systems, incl...