We present an analysis of the predictability for several regions on the attractor of the Lorenz-63 system, a simple nonlinear model which mimics some features of the atmosphere, like its chaotic behaviour and the presence of preferred states or "regimes". In this framework, through a forecasting activity on the attractor, a multilayer perceptron shows its ability to recognise different values of predictability in various zones of the attractor, if compared with other estimations of local predictability, like the growth rates of the so called "bred vectors". Furthermore, following recent studies on the impact of weak imposed forcings on the Lorenz model, as a toy simulation of increased anthropogenic forcings on the climate system, we analyse the changes of predictability for a new scenario by neural network forecasting. Therefore, even if the present paper must be considered as a preliminary attempt at the use of neural networks for predictability assessments, this activity shows good results and opens perspectives of further improvements and applications.

Can we estimate atmospheric predictability by performance of neural network forecasting? The toy case studies of unforced and forced Lorenz models

Pasini A;
2005

Abstract

We present an analysis of the predictability for several regions on the attractor of the Lorenz-63 system, a simple nonlinear model which mimics some features of the atmosphere, like its chaotic behaviour and the presence of preferred states or "regimes". In this framework, through a forecasting activity on the attractor, a multilayer perceptron shows its ability to recognise different values of predictability in various zones of the attractor, if compared with other estimations of local predictability, like the growth rates of the so called "bred vectors". Furthermore, following recent studies on the impact of weak imposed forcings on the Lorenz model, as a toy simulation of increased anthropogenic forcings on the climate system, we analyse the changes of predictability for a new scenario by neural network forecasting. Therefore, even if the present paper must be considered as a preliminary attempt at the use of neural networks for predictability assessments, this activity shows good results and opens perspectives of further improvements and applications.
2005
Istituto sull'Inquinamento Atmosferico - IIA
Inglese
Proceedings of the CIMSA - 2005 IEEE International Conference on Computational Intelligence for Measurement Systems and Applications
CIMSA 2005 - IEEE International Conference on Computational Intelligence for Instrumentation, Measurement Systems and Applications
69
74
6
0-7803-9025-3
IEEE, Institute of electrical and electronics engineers
New York
STATI UNITI D'AMERICA
Sì, ma tipo non specificato
20-22 July 2005
Giardini Naxos, Italy
neural networks
predictability
Lorenz model
bred vectors
2
none
Pasini, A; Pelino, V
273
info:eu-repo/semantics/conferenceObject
04 Contributo in convegno::04.01 Contributo in Atti di convegno
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/80771
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