Daily streamflow forecasting using simplified rule-based fuzzy logic system
View/ Open
Date
2005-12Author
Mohd Shafiek, Yaacob, Dr.
Hishamuddin, Jamaluddin
Sobri, Harun
Metadata
Show full item recordAbstract
In this study, a simplified fuzzy logic system with uniform partitions in the input space is proposed for forecasting the daily
streamflow of four river systems in Malaysia. The proposed simplified fuzzy logic system was calibrated (trained) using backpropagation
(BP) and recursive prediction error (RPE) algorithms. For each catchment, the calibration data set consisted of
three consecutive years of daily rainfall and streamflow records. Verifications of the calibrated models were done using the data
set of the following year. The performances of the simplified fuzzy logic system and the normal fuzzy logic system are compared,
with each model having the same number of adjustable parameters. The results are also compared with the auto-regressive with
exogenous input model. This study has shown that the proposed RPE algorithm performed better than the more popular BP
algorithm. The results show that all the simplified fuzzy logic system models registered better performance measures for the
calibration data sets. However, variable results were obtained for the predictions of the verification data sets.
URI
http://www.myiem.org.my/content/iem_journal_2005-176.aspxhttp://dspace.unimap.edu.my/123456789/13555
Collections
- IEM Journal [310]