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Journal article

A stepwise-cluster forecasting approach for monthly streamflows based on climate teleconnections

Abstract

In this study, a stepwise cluster forecasting (SCF) framework is proposed for monthly streamflow prediction in Xiangxi River, China. The developed SCF method can capture discrete and nonlinear relationships between explanatory and response variables. Cluster trees are generated through the SCF method to reflect complex relationships between independent (i.e. explanatory) and dependent (i.e. response) variables in the hydrologic system without determining specific linear/nonlinear functions. The developed SCF method is applied for monthly streamflow prediction in Xiangxi River based on the local meteorological records as well as some climate index. Comparison among SCF, multiple linear regression, generalized regression neural network, and least square support vector machine methods would be conducted. The results indicate that the SCF method would produce good predictions in both training and testing periods. Besides, the inherent probabilistic characteristics of the SCF predictions are further analyzed. The results obtained by SCF can presented as intervals, formulated by the minimum and maximum predictions as well as the 5 and 95 % percentile values of the predictions, which can reflect the variations in streamflow forecasts. Therefore, the developed SCF method can be applied for monthly streamflow prediction in various watersheds with complicated hydrologic processes.

Authors

Fan YR; Huang W; Huang GH; Li Z; Li YP; Wang XQ; Cheng GH; Jin L

Journal

Stochastic Environmental Research and Risk Assessment, Vol. 29, No. 6, pp. 1557–1569

Publisher

Springer Nature

Publication Date

August 31, 2015

DOI

10.1007/s00477-015-1048-y

ISSN

1436-3240

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