In this paper we develop a modern approach to solar cycle forecasting, based on the mathematical theory of nonlinear dynamics. We start from the design of a static curve fitting model for the experimental yearly sunspot number series, over a time scale of 306 years, starting from year 1700 and we establish a least-squares optimal pulse shape of a solar cycle. The cycle-to-cycle evolution of the parameters of the cycle shape displays different patterns, such as a Gleissberg cycle and a strong anomaly in the cycle evolution during the Dalton minimum. In a second step, we extract a chaotic mapping for the successive values of one of the key model parameters – the rate of the exponential growth-decrease of the solar activity duri...
Sunspot numbers WN display quasi-periodical variations that undergo regime changes. These irregulari...
Waiting-time distributions allow us to distinguish at least three different types of dynamical syste...
We analyze the monthly sunspot number (SSN) data from January 1749 to June 2013. We use the Average ...
The problem of prediction of a given time series is examined on the basis of recent nonlinear dynam...
In the past, it has been postulated that the irregular dynamics of the solar cycle may embed a low o...
In this work we predict the maximum amplitude, its time of occurrence, and the total length of Solar...
Context. Generally, there are two procedures for solar cycle predictions: the empirical methods – s...
This paper presents numerical techniques for constructing nonlinear predictive models to forecast so...
Context. The study of solar activity over long time intervals using proxies. Aims. The peri...
Daily sunspot number data for the northern and southern solar hemispheres from 22 cycle maximum to ...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Mathematics, 2001.Includes bibliogr...
Nonlinear time series analysis was developed to study chaotic systems. Its utility was investigated ...
We analyze the yearly mean sunspot-number data covering the period 1700 to 2012. We show that the ye...
Abstract In this work we predict the maximum amplitude, its time of oc-currence, and the total lengt...
Abstract A Bayesian method for forecasting solar cycles is presented. The approach com-bines a Fokke...
Sunspot numbers WN display quasi-periodical variations that undergo regime changes. These irregulari...
Waiting-time distributions allow us to distinguish at least three different types of dynamical syste...
We analyze the monthly sunspot number (SSN) data from January 1749 to June 2013. We use the Average ...
The problem of prediction of a given time series is examined on the basis of recent nonlinear dynam...
In the past, it has been postulated that the irregular dynamics of the solar cycle may embed a low o...
In this work we predict the maximum amplitude, its time of occurrence, and the total length of Solar...
Context. Generally, there are two procedures for solar cycle predictions: the empirical methods – s...
This paper presents numerical techniques for constructing nonlinear predictive models to forecast so...
Context. The study of solar activity over long time intervals using proxies. Aims. The peri...
Daily sunspot number data for the northern and southern solar hemispheres from 22 cycle maximum to ...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Mathematics, 2001.Includes bibliogr...
Nonlinear time series analysis was developed to study chaotic systems. Its utility was investigated ...
We analyze the yearly mean sunspot-number data covering the period 1700 to 2012. We show that the ye...
Abstract In this work we predict the maximum amplitude, its time of oc-currence, and the total lengt...
Abstract A Bayesian method for forecasting solar cycles is presented. The approach com-bines a Fokke...
Sunspot numbers WN display quasi-periodical variations that undergo regime changes. These irregulari...
Waiting-time distributions allow us to distinguish at least three different types of dynamical syste...
We analyze the monthly sunspot number (SSN) data from January 1749 to June 2013. We use the Average ...