TUHH Open Research
Help
  • Log In
    New user? Click here to register.Have you forgotten your password?
  • English
  • Deutsch
  • Communities & Collections
  • Publications
  • Research Data
  • People
  • Institutions
  • Projects
  • Statistics
  1. Home
  2. TUHH
  3. Publication References
  4. Impact of EMD decomposition and random initialisation of weights in ANN hindcasting of daily stream flow series: An empirical examination
 
Options

Impact of EMD decomposition and random initialisation of weights in ANN hindcasting of daily stream flow series: An empirical examination

Publikationstyp
Journal Article
Date Issued
2011-09-06
Sprache
English
Author(s)
Napolitano, Giulia
Serinaldi, Francesco 
See, Linda
TORE-URI
https://hdl.handle.net/11420/62179
Journal
Journal of hydrology  
Volume
406
Issue
3-4
Start Page
199
End Page
214
Citation
Journal of Hydrology 403 (3-4): 199-214 (2011)
Publisher DOI
10.1016/j.jhydrol.2011.06.015
Scopus ID
2-s2.0-80051585160
Publisher
Elsevier
In this study, we explore three aspects which characterize artificial neural network (ANN) hindcasting of a daily stream flow time series: (1) the effects of preprocessing the data through a fully data-driven signal decomposition technique to perform ensemble modeling, (2) the impact of the random initialisation of the weights of ANNs on model performance in the context of ensemble and non-ensemble modeling frameworks, and (3) the importance of using a suitable set of performance measures and tests for the model assessment. To accomplish this task, a nonparametric technique called Empirical Mode Decomposition (EMD) is used to decompose the original signal into a number of intrinsic components, which are then trained individually by ANNs and combined to rebuild the discharge series. The ANN training is carried out with different sets of initial random weights that are drawn from a uniform distribution to assess the effect of the parameter uncertainty on the modeling results. A large number of performance indices and two formal tests are applied to the model predictions in order to provide a comprehensive assessment of the model performance. The results show that, in a typical ANN modeling procedure, the advantages of the signal preprocessing depend on the characteristics of the signal intrinsic modes highlighted by EMD analysis. When the signal is characterized by highly energetic high frequency components, the error propagation influences the results so that the ensemble algorithm introduces an improvement only in terms of some performance measures, and the uncertainty related to the random generation of the ANN initial weights may be significant. Therefore, the nature of the signal, the effect of the random initialisation of the weights on ANN model performance and the measures which are used for model assessment (and which extend beyond ANNs to other model types) need to be more carefully taken into account in the modeling procedures. © 2011 Elsevier B.V.
Subjects
Artificial neural networks
Discharge forecasting
Empirical Mode Decomposition
Uncertainty
DDC Class
551: Geology, Hydrology Meteorology
TUHH
Weiterführende Links
  • Contact
  • Send Feedback
  • Cookie settings
  • Privacy policy
  • Impress
DSpace Software

Built with DSpace-CRIS software - Extension maintained and optimized by 4Science
Design by effective webwork GmbH

  • Deutsche NationalbibliothekDeutsche Nationalbibliothek
  • ORCiD Member OrganizationORCiD Member Organization
  • DataCiteDataCite
  • Re3DataRe3Data
  • OpenDOAROpenDOAR
  • OpenAireOpenAire
  • BASE Bielefeld Academic Search EngineBASE Bielefeld Academic Search Engine
Feedback