A soft computing fusion for river flow time series forecasting
Version 2 2024-06-06, 07:48Version 2 2024-06-06, 07:48
Version 1 2018-05-22, 12:42Version 1 2018-05-22, 12:42
conference contribution
posted on 2024-06-06, 07:48authored byT Nguyen, ND Nguyen, S Nahavandi, SM Salaken, A Khatami
In forecasting, the challenge of predicting river flows in time series was amongst the earliest to attract scientific interests. A broad range of mathematical approaches, from simple linear to complex non-linear methods, have been proposed in the literature for this kind of modeling. This paper introduces a hybrid method based on a soft computing fusion for river flow time series forecasting. For the experimental results reported here, this approach consistently outperformed traditional modeling methods. Findings from this specific research promise utility in the water resources and environment sector management where soft computing methods can be applied to various studies for which time series data are available.
History
Pagination
1-7
Location
Rio de Janeiro, Brazil
Start date
2018-07-08
End date
2018-07-13
ISBN-13
9781509060207
Language
eng
Publication classification
E1.1 Full written paper - refereed
Copyright notice
2018, IEEE
Title of proceedings
FUZZ-IEEE 2018 : IEEE International Conference on Fuzzy Systems
Event
Fuzzy Systems. Conference (2018 : Rio de Janeiro, Brazil)