Title of article :
Improving the accuracy of K-nearest neighbour method in long-lead hydrological forecasting
Author/Authors :
Mohammad، Azmi نويسنده he commenced his PhD degree in the Department of Civil Engineering, Monash University , , Sarmadi، Fahimeh نويسنده she commenced her PhD degree at the School of Earth, Atmosphere, and Environment (EAE), Monash University, ,
Issue Information :
دوماهنامه با شماره پیاپی 0 سال 2016
Abstract :
The nonparametric regression method of K-Nearest Neighbour (K-NN) has
been used in a variety of eco-hydrological issues. In this study, some techniques were
presented to improve the accuracy of the K-NN method in forecasting accumulated 9-
month in
ow, from 1971 to 2001, of Zayandeh-rud dam in Iran, from winter to the end of the
following summer. The considered improving techniques consisted of: 1) selecting the best
data preprocessing functions, 2) selecting the best number of neighbours, 3) selecting the
best distance functions, 4) specifying the best weights of predictors at distance functions,
and 5) adding the ability of extrapolation to K-NN using a proposed method. Final results
showed that the use of the mentioned techniques had promoted the accuracy of K-NNʹs
forecast, meaningfully. The results of goodness-of-t criteria for the optimized K-NN in
comparison with a regular K-NN presented an increase by 31% in correlation coecient
(from 65% to 96%), a decrease from 31% to 8% in volume error, and nally a drop from
54% to 25% in the root mean square error.
Journal title :
Scientia Iranica(Transactions A: Civil Engineering)
Journal title :
Scientia Iranica(Transactions A: Civil Engineering)