2013
DOI: 10.1007/s12665-013-2702-7
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A comparative study of artificial neural networks, Bayesian neural networks and adaptive neuro-fuzzy inference system in groundwater level prediction

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Cited by 93 publications
(33 citation statements)
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“…Artificial neural network (ANN) is a well-known branch of soft computing (Alavi et al 2010). This technique has been successfully employed to solve problems in civil engineering field (e.g., Kayadelen et al 2009;Günaydın 2009;Kolay et al 2010;Das et al 2010;Yilmaz 2010a, b; Akgun and Türk 2010; Kaunda et al 2010;Das et al 2011a, b, c;Mert et al 2011;Mollahasani et al 2011;Yilmaz et al 2012;Sattari et al 2012;Tasdemir et al 2013;Seker 2012, 2013;Isik and Ozden 2013;Alkhasawneh et al 2014;Wu et al 2013;Maiti and Tiwari 2014;Park et al 2013;Ceryan et al 2013;Manouchehrian et al 2014). Besides, ANN has been used to predict the bearing capacity of shallow foundations resting on soil layers (Soleimanbeigi and Hataf 2005;Padmini et al 2008;Kuo et al 2009;Kalinli et al 2011).…”
Section: Introductionmentioning
confidence: 99%
“…Artificial neural network (ANN) is a well-known branch of soft computing (Alavi et al 2010). This technique has been successfully employed to solve problems in civil engineering field (e.g., Kayadelen et al 2009;Günaydın 2009;Kolay et al 2010;Das et al 2010;Yilmaz 2010a, b; Akgun and Türk 2010; Kaunda et al 2010;Das et al 2011a, b, c;Mert et al 2011;Mollahasani et al 2011;Yilmaz et al 2012;Sattari et al 2012;Tasdemir et al 2013;Seker 2012, 2013;Isik and Ozden 2013;Alkhasawneh et al 2014;Wu et al 2013;Maiti and Tiwari 2014;Park et al 2013;Ceryan et al 2013;Manouchehrian et al 2014). Besides, ANN has been used to predict the bearing capacity of shallow foundations resting on soil layers (Soleimanbeigi and Hataf 2005;Padmini et al 2008;Kuo et al 2009;Kalinli et al 2011).…”
Section: Introductionmentioning
confidence: 99%
“…Another advantage of SCG is that it does not involve any user-dependent parameters. The SCG method has been used to solve problems in different research domains such as prediction of groundwater level [51] and telemarketing success [52].…”
Section: Model Building and Validationmentioning
confidence: 99%
“…Recently, many successful applications of ANFIS in the field of water resources were reported. For example, [18] applied the ANFIS model to modeling groundwater level fluctuation using hydro meteorological data (precipitation and temperature). They compared the results from the ANFIS model with multiple layer perceptron optimized by two different approach i.e.…”
Section: Introductionmentioning
confidence: 99%