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Seasonal reservoir inflow forecasting with...
Conference

Seasonal reservoir inflow forecasting with low-frequency climatic indices: a comparison of data-driven methods

Abstract

This paper investigates the potential of using data-driven methods, namely Bayesian neural networks (BNN), recurrent multi-layer perceptrons (RMLP), time-lagged feed-forward networks (TLFN), and conventional multi-layer perceptrons (MLP) to forecast seasonal reservoir inflows of the Churchill Falls watershed in northeastern Canada. A climate variability indicator (the El Niño-Southern Oscillation, ENSO) is used as additional information to …

Authors

MULUYE GY; COULIBALY P

Volume

52

Pagination

pp. 508-522

Publisher

Taylor & Francis

Publication Date

June 2007

DOI

10.1623/hysj.52.3.508

Conference proceedings

Hydrological Sciences Journal

Issue

3

ISSN

0262-6667