Publication:
Forecasting high waters at Venice Lagoon using chaotic time series analisys and nonlinear neural netwoks

Loading...
Thumbnail Image
Identifiers
Publication date
2000
Defense date
Advisors
Tutors
Journal Title
Journal ISSN
Volume Title
Publisher
IWA Publishing
Impact
Google Scholar
Export
Research Projects
Organizational Units
Journal Issue
Abstract
Time series analysis using nonlinear dynamics systems theory and multilayer neural networks models have been applied to the time sequence of water level data recorded every hour at 'Punta della Salute' from Venice Lagoon during the years 1980-1994. The first method is based on the reconstruction of the state space attractor using time delay embedding vectors and on the characterisation of invariant properties which define its dynamics. The results suggest the existence of a low dimensional chaotic attractor with a Lyapunov dimension, DL, of around 6.6 and a predictability between 8 and 13 hours ahead. Furthermore, once the attractor has been reconstructed it is possible to make predictions by mapping local-neighbourhood to local-neighbourhood in the reconstructed phase space. To compare the prediction results with another nonlinear method, two nonlinear autoregressive models (NAR) based on multilayer feedforward neural networks have been developed. From the study, it can be observed that nonlinear forecasting produces adequate results for the 'normal' dynamic behaviour of the water level of Venice Lagoon, outperforming linear algorithms, however, both methods fail to forecast the 'high water' phenomenon more than 2-3 hours ahead.
Description
Keywords
Forecasting, Nonlinear neural networks, Time series analysis
Bibliographic citation
Journal of hydroinformatics, 2000, vol. 2, n.1, p. 61- 84