Published January 1, 1998 | Version v1
Journal article Open

State-space prediction model for chaotic time series

Description

A simple method for predicting the continuation of scalar chaotic time series ahead in time is proposed. The false nearest neighbors technique in connection with the time-delayed embedding is employed so as to reconstruct the state space. A local forecasting model based upon the time evolution of the topological neighboring in the reconstructed phase space is suggested. A moving root-mean-square error is utilized in order to monitor the error along the prediction horizon. The model is tested for the convection amplitude of the Lorenz model; The results indicate that for approximately 100 cycles of the training data, the prediction follows the actual continuation very closely about six cycles. The proposed model, like other state-space forecasting models, captures the long-term behavior of the system due to the use of spatial neighbors in the state space.

Files

bib-90642a1a-09c4-404e-b24c-faf2e0ae04d8.txt

Files (137 Bytes)

Name Size Download all
md5:73fb5639b7bdd2836417367fa56804dc
137 Bytes Preview Download