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Improving daily stochastic streamflow prediction: comparison of novel hybrid data-mining algorithms

Authors :
Wei Sun
Khabat Khosravi
Ali Golkarian
Amir Mosavi
Zaher Mundher Yaseen
Rahim Barzegar
Martijn J. Booij
Multidisciplinary Water Management
Source :
Hydrological sciences journal, 66(9), 1457-1474. Taylor & Francis
Publication Year :
2021

Abstract

In the current paper, the efficiency of three new standalone data-mining algorithms [M5 Prime (M5P), Random Forest (RF), M5Rule (M5R)] and six novel hybrid algorithms of bagging (BA-M5P, BA-RF and BA-M5R) and Attribute Selected Classifier (ASC-M5P, ASC-RF and ASC-M5R) for streamflow prediction were assessed and compared with an autoregressive integrated moving average (ARIMA) model as a benchmark. The models used precipitation (P) and streamflow (Q) data from the period 1979–2012 for training and validation (70% and 30% of data, respectively). Different input combinations were prepared using both P and Q with different lag times. The best input combination proved to be that in which all of the the data were used (i.e. R and Q – with lag times). Overall, employing Q with different lag times proved to be more effective than using only P as input for streamflow prediction. Although all models showed very good predictive power, BA-M5P outperformed the other models.

Details

Language :
English
ISSN :
02626667
Volume :
66
Issue :
9
Database :
OpenAIRE
Journal :
Hydrological sciences journal
Accession number :
edsair.doi.dedup.....c452096da56ea2f43445411ca1f0952f