Inhalt des Dokuments
BibTex-ListeAlle
Zitatschlüssel | Zounemat_Kermani_2020 |
---|---|
Autor | Mohammad Zounemat-Kermani and Marzieh Fadaee and S Adarsh and Reinhard Hinkelmann |
Seiten | 012004 |
Jahr | 2020 |
DOI | 10.1088/1755-1315/491/1/012004 |
Journal | IOP Conference Series: Earth and Environmental Science |
Jahrgang | 491 |
Monat | jul |
Verlag | IOP Publishing |
Zusammenfassung | This study evaluates the performance of an integrated version of artificial neural network namely HS-ANN (which is a combination of neural network and heuristic harmony search algorithm) as an alternative approach to predict the sediment transport in terms of sediment volumetric concentration (Cv) in sewer pipe systems. To overcome the complexities of choosing the optimum number of the input variables and to consider the effective parameters of the model, the factor analysis technique is utilized. In addition to the HS-ANN model, an empirical equation, as well as a multiple linear regression model, are also considered. The mean square error (RMSE), mean absolute percentage error (MAPE), and Pearson correlation coefficients (PCC) are used for evaluating the accuracy of the applied models. As the comparisons demonstrate, the HS-ANN model (PCC = 0.97) is more accurate than the existing empirical equation and MLR model and could be successfully employed in predicting sediment transport in sewer networks. |
Zurück [3]
004
parameter/minhilfe/?no_cache=1&tx_sibibtex_pi1%5Bdo
wnload_bibtex_uid%5D=9446284&tx_sibibtex_pi1%5Bcont
entelement%5D=tt_content%3A653676
parameter/minhilfe/
Zusatzinformationen / Extras
Direktzugang
Schnellnavigation zur Seite über Nummerneingabe
Hilfsfunktionen
Copyright TU Berlin 2008