Matches in SemOpenAlex for { <https://semopenalex.org/work/W1609200543> ?p ?o ?g. }
- W1609200543 endingPage "743" @default.
- W1609200543 startingPage "731" @default.
- W1609200543 abstract "Forecasting lake level at various horizons is reported here.SVM coupled with FA was used to forecast lake level.Results demonstrate the SVM-FA superiority. Forecasting lake level at various horizons is a critical issue in navigation, water resource planning and catchment management. In this article, multistep ahead predictive models of predicting daily lake levels for three prediction horizons were created. The models were developed using a novel method based on support vector machine (SVM) coupled with firefly algorithm (FA). The FA was applied to estimate the optimal SVM parameters. Daily water-level data from Urmia Lake in northwestern Iran were used to train, test and validate the used technique. The prediction results of the SVM-FA models were compared to the genetic programming (GP) and artificial neural networks (ANNs) models. The experimental results showed that an improvement in the predictive accuracy and capability of generalization can be achieved by the SVM-FA approach in comparison to the GP and ANN in 1 day ahead lake level forecast. Moreover, the findings indicated that the developed SVM-FA models can be used with confidence for further work on formulating a novel model of predictive strategy for lake level prediction." @default.
- W1609200543 created "2016-06-24" @default.
- W1609200543 creator A5034064114 @default.
- W1609200543 creator A5044658695 @default.
- W1609200543 creator A5065328445 @default.
- W1609200543 creator A5071435927 @default.
- W1609200543 creator A5075190563 @default.
- W1609200543 creator A5076204864 @default.
- W1609200543 creator A5086550972 @default.
- W1609200543 date "2015-11-01" @default.
- W1609200543 modified "2023-10-18" @default.
- W1609200543 title "A survey of water level fluctuation predicting in Urmia Lake using support vector machine with firefly algorithm" @default.
- W1609200543 cites W110181068 @default.
- W1609200543 cites W1523741643 @default.
- W1609200543 cites W1964791407 @default.
- W1609200543 cites W1966796394 @default.
- W1609200543 cites W1969316479 @default.
- W1609200543 cites W1970204203 @default.
- W1609200543 cites W1973870112 @default.
- W1609200543 cites W1975201621 @default.
- W1609200543 cites W1978057374 @default.
- W1609200543 cites W1986490585 @default.
- W1609200543 cites W1989931667 @default.
- W1609200543 cites W1992530282 @default.
- W1609200543 cites W1995351367 @default.
- W1609200543 cites W2004041476 @default.
- W1609200543 cites W2017686746 @default.
- W1609200543 cites W2018192341 @default.
- W1609200543 cites W2023272781 @default.
- W1609200543 cites W2024520223 @default.
- W1609200543 cites W2028684662 @default.
- W1609200543 cites W2031233894 @default.
- W1609200543 cites W2034099719 @default.
- W1609200543 cites W2035478691 @default.
- W1609200543 cites W2039556001 @default.
- W1609200543 cites W2039811647 @default.
- W1609200543 cites W2044587647 @default.
- W1609200543 cites W2054337296 @default.
- W1609200543 cites W2056986886 @default.
- W1609200543 cites W2066366061 @default.
- W1609200543 cites W2066496894 @default.
- W1609200543 cites W2071258353 @default.
- W1609200543 cites W2072697915 @default.
- W1609200543 cites W2078619499 @default.
- W1609200543 cites W2079059156 @default.
- W1609200543 cites W2082776647 @default.
- W1609200543 cites W2085789144 @default.
- W1609200543 cites W2092997181 @default.
- W1609200543 cites W2103238571 @default.
- W1609200543 cites W2118051273 @default.
- W1609200543 cites W2120304879 @default.
- W1609200543 cites W2127906599 @default.
- W1609200543 cites W2153272791 @default.
- W1609200543 cites W2156023754 @default.
- W1609200543 cites W2158001550 @default.
- W1609200543 cites W2166922785 @default.
- W1609200543 cites W2620355704 @default.
- W1609200543 cites W3017323153 @default.
- W1609200543 cites W3018770027 @default.
- W1609200543 cites W3122598275 @default.
- W1609200543 cites W3123096029 @default.
- W1609200543 cites W3123760665 @default.
- W1609200543 doi "https://doi.org/10.1016/j.amc.2015.08.085" @default.
- W1609200543 hasPublicationYear "2015" @default.
- W1609200543 type Work @default.
- W1609200543 sameAs 1609200543 @default.
- W1609200543 citedByCount "62" @default.
- W1609200543 countsByYear W16092005432016 @default.
- W1609200543 countsByYear W16092005432017 @default.
- W1609200543 countsByYear W16092005432018 @default.
- W1609200543 countsByYear W16092005432019 @default.
- W1609200543 countsByYear W16092005432020 @default.
- W1609200543 countsByYear W16092005432021 @default.
- W1609200543 countsByYear W16092005432022 @default.
- W1609200543 countsByYear W16092005432023 @default.
- W1609200543 crossrefType "journal-article" @default.
- W1609200543 hasAuthorship W1609200543A5034064114 @default.
- W1609200543 hasAuthorship W1609200543A5044658695 @default.
- W1609200543 hasAuthorship W1609200543A5065328445 @default.
- W1609200543 hasAuthorship W1609200543A5071435927 @default.
- W1609200543 hasAuthorship W1609200543A5075190563 @default.
- W1609200543 hasAuthorship W1609200543A5076204864 @default.
- W1609200543 hasAuthorship W1609200543A5086550972 @default.
- W1609200543 hasConcept C107477482 @default.
- W1609200543 hasConcept C11413529 @default.
- W1609200543 hasConcept C12267149 @default.
- W1609200543 hasConcept C154945302 @default.
- W1609200543 hasConcept C154982244 @default.
- W1609200543 hasConcept C33923547 @default.
- W1609200543 hasConcept C41008148 @default.
- W1609200543 hasConcept C85617194 @default.
- W1609200543 hasConcept C86803240 @default.
- W1609200543 hasConcept C90856448 @default.
- W1609200543 hasConceptScore W1609200543C107477482 @default.
- W1609200543 hasConceptScore W1609200543C11413529 @default.
- W1609200543 hasConceptScore W1609200543C12267149 @default.
- W1609200543 hasConceptScore W1609200543C154945302 @default.
- W1609200543 hasConceptScore W1609200543C154982244 @default.