The random sequence of inter-event times of a level-crossing is a statistical tool that can be used to investigate time series from complex phenomena. Typical features of observed series as the skewed distribution and long range correlations are modeled using non linear transformations applied to Gaussian ARMA processes. We investigate the distribution of the inter-event times of the level-crossing events in ARMA processes in function of the probability corresponding to the level. For Gaussian ARMA processes we establish a representation of this indicator, prove its symmetry and that it is invariant with respect to the application of a non linear monotonic transformation. Using simulated series we provide evidence that th...
When performing a time series analysis of continuous data, for example from climate or environmental...
none3siWe address the problem of defining early-warning indicators of critical transitions. To this ...
We study the problem of short term wind speed prediction, which is a critical factor for effective w...
International audienceIn this paper, non-homogeneous Markov-Switching Autoregressive (MS-AR) models ...
The aim of this thesis is to find prediction for non-linear transformation of time series. First, un...
An approach to modelling and residual analysis of nonlinear autoregressive time series in exponentia...
Under certain conditions the first order geometric auto regressive (AR) process has statistical pr...
We study the statistics of the horizontal component of atmospheric boundary layer wind speed and int...
We introduce a novel way to extract information from turbulent datasets by applying an Auto Regressi...
AbstractThe aim of this note is to study the properties of some nonstationary autoregressive-moving ...
In this paper, we propose a non-parametric structural approach in order to define new pertinent crit...
This paper presents a non-homogeneous Markov Chain (MC) model for generation of wind speed (WS) and ...
Autoregressive-moving-average (ARMA) models are mathematical models of the persistence, or autocorre...
This study provides a comprehensive overview of changes in the autoregressive-moving- average model ...
Data traffic sequences from two campus FDDI rings, an Ethernet, two entry/exit points of the NSFNET...
When performing a time series analysis of continuous data, for example from climate or environmental...
none3siWe address the problem of defining early-warning indicators of critical transitions. To this ...
We study the problem of short term wind speed prediction, which is a critical factor for effective w...
International audienceIn this paper, non-homogeneous Markov-Switching Autoregressive (MS-AR) models ...
The aim of this thesis is to find prediction for non-linear transformation of time series. First, un...
An approach to modelling and residual analysis of nonlinear autoregressive time series in exponentia...
Under certain conditions the first order geometric auto regressive (AR) process has statistical pr...
We study the statistics of the horizontal component of atmospheric boundary layer wind speed and int...
We introduce a novel way to extract information from turbulent datasets by applying an Auto Regressi...
AbstractThe aim of this note is to study the properties of some nonstationary autoregressive-moving ...
In this paper, we propose a non-parametric structural approach in order to define new pertinent crit...
This paper presents a non-homogeneous Markov Chain (MC) model for generation of wind speed (WS) and ...
Autoregressive-moving-average (ARMA) models are mathematical models of the persistence, or autocorre...
This study provides a comprehensive overview of changes in the autoregressive-moving- average model ...
Data traffic sequences from two campus FDDI rings, an Ethernet, two entry/exit points of the NSFNET...
When performing a time series analysis of continuous data, for example from climate or environmental...
none3siWe address the problem of defining early-warning indicators of critical transitions. To this ...
We study the problem of short term wind speed prediction, which is a critical factor for effective w...