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Comparison of different forms of the multi-layer feed-forward neural network method used for river flow forecast combination
Date Issued
2002-10
Date Available
2010-07-30T13:53:54Z
Abstract
The multi-layer feed-forward neural network (MLFFNN) is applied in the context of river flow forecast combination, where a number of rainfall-runoff models are used simultaneously to produce an overall combined river flow forecast. The operation of the MLFFNN depends on the neuron transfer function, which is non-linear. These models, each having a different structure to simulate the perceived mechanisms of the runoff process, utilise the information carrying capacity of the model calibration data indifferent ways. Hence, in a discharge forecast combination procedure, the discharge forecasts of each model provide a source of information different from that of the other models used in the combination. In the present work, the significance of the choice of the transfer function type in the overall performance of the MLFFNN, when used in the river flow forecast combination context is critically investigated. Five neuron transfer functions are used in this investigation, namely, the logistic function, the bipolar function, the hyperbolic function, the arctan function and the scaled arctan function. The results indicate that the logistic function yields the best model forecast combination performance.
Sponsorship
Not applicable
Type of Material
Journal Article
Publisher
European Geosciences Union
Journal
Hydrology and Earth System Sciences
Volume
6
Issue
4
Start Page
671
End Page
684
Copyright (Published Version)
2002 author(s)
Subject – LCSH
Streamflow--Forecasting
Neural networks (Computer science)
Runoff--Computer programs
Web versions
Language
English
Status of Item
Peer reviewed
ISSN
1812-2108
This item is made available under a Creative Commons License
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8 corrected.pdf
Size
683.3 KB
Format
Adobe PDF
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54d7226418cf94acbc4afd867e7829a9
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