Logo-jrhs
J Res Health Sci. 2014;14(1): 82-87.
PMID: 24402856
Scopus ID: 84952323448
  Abstract View: 256
  PDF Download: 67

Original Article

Prediction the Groundwater Level of Hamadan-Bahar Plain, West of Iran Using Support Vector Machines

Lily Tapak, Ali Reza Rahmani, Abbas Moghimbeigi*
*Corresponding Author: Email: moghimb@yahoo.com

Abstract

Background: Water is considered as the main source of life but water resources are limited and nonrenewable. Different factors have caused groundwater to decrease. Therefore, modeling and predicting groundwater level is of great importance.

Methods: Monthly groundwater level data of about 20 years (October 1991 to February 2012) from the Hamadan-Bahar Plain, west of Iran were used based on peizometric height related to hydrologic years. The support vector machine (SVM), a new nonlinear regression technique, was used to predict groundwater level. The performance of the SVM model was assessed by using criteria of R2, root mean square error (RMSE), means absolute error (MAE), means absolute percentage error (MAPE), correlation coefficient and efficiency coefficient (E) and was then compared with the classic time series model.

Results: The SVM model had greater R2 (=0.933), E (=0.950) and Correlation (=0.965). Moreover, SVM had lower RMSE (=0.120), MAPE (=0.140) and MAE (=0.124). There was no significant difference between the estimated values using two models and the observed value.

Conclusions: The SVM outperforms classic time series model in predicting groundwater level. Therefore using the SVM model is reasonable for modeling and predicting fluctuations of groundwater level in Hamadan-Bahar Plain.

First Name
Last Name
Email Address
Comments
Security code


Abstract View: 257

Your browser does not support the canvas element.


PDF Download: 67

Your browser does not support the canvas element.

Submitted: 24 Jul 2013
Revision: 27 Oct 2013
ePublished: 27 Oct 2013
EndNote EndNote

(Enw Format - Win & Mac)

BibTeX BibTeX

(Bib Format - Win & Mac)

Bookends Bookends

(Ris Format - Mac only)

EasyBib EasyBib

(Ris Format - Win & Mac)

Medlars Medlars

(Txt Format - Win & Mac)

Mendeley Web Mendeley Web
Mendeley Mendeley

(Ris Format - Win & Mac)

Papers Papers

(Ris Format - Win & Mac)

ProCite ProCite

(Ris Format - Win & Mac)

Reference Manager Reference Manager

(Ris Format - Win only)

Refworks Refworks

(Refworks Format - Win & Mac)

Zotero Zotero

(Ris Format - Firefox Plugin)