A&A 377, 312-320 (2001)
DOI: 10.1051/0004-6361:20011068
Solar cycle forecasting: A nonlinear dynamics approach
S. SelloMathematical and Physical Models, Enel Research, Via Andrea Pisano 120, 56122 Pisa, Italy
(Received 1 June 2001 / Accepted 12 July 2001 )
Abstract
The problem of prediction of a given time series is examined on the basis
of recent nonlinear dynamics theories. Particular attention is devoted
to forecast the amplitude and phase of one of the most common solar
indicator activities, the international monthly smoothed sunspot number.
It is well known that the solar cycle is very difficult to predict due to
the intrinsic complexity of the related time behaviour and to the lack of
a successful quantitative theoretical model of the Sun's magnetic cycle.
Starting from a recent previous work, we checked the reliability and
accuracy of a forecasting model based on concepts of nonlinear dynamical
systems applied to experimental time series, such as embedding phase space,
Lyapunov spectrum, chaotic behaviour. The model is based on a local
hypothesis of the behaviour on embedding space, utilising an optimal
number of neighbour vectors to predict the future evolution.
The performances of this method for the current 23rd solar cycle
suggest its valuable insertion in the set of the so-called non-precursor statistical-
numerical prediction techniques.
The main task is to set up and to
compare a promising numerical nonlinear prediction technique, essentially
based on an inverse problem, with the most accurate prediction methods, like
the so-called "precursor methods" which appear now reasonably accurate in
predicting "long-term" Sun activity, with particular reference to "solar"
and "geomagnetic" precursor methods based on a solar dynamo theory.
Key words: Sun: activity -- Sun: magnetic fields
© ESO 2001
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