Exploiting Two Intelligent Models to Predict Water Level: A field study of Urmia lake, Iran
Created by W.Langdon from
gp-bibliography.bib Revision:1.8051
- @Article{Kavehkar:2011:waset,
-
author = "Shahab Kavehkar and Mohammad Ali Ghorbani and
Valeriy Khokhlov and Afshin Ashrafzadeh and Sabereh Darbandi",
-
title = "Exploiting Two Intelligent Models to Predict Water
Level: A field study of Urmia lake, Iran",
-
journal = "International Science Index",
-
year = "2011",
-
volume = "5",
-
number = "3",
-
pages = "731--735",
-
keywords = "genetic algorithms, genetic programming, water-level
variation, forecasting, artificial neural networks,
comparative analysis.",
-
ISSN = "1307-6892",
-
publisher = "World Academy of Science, Engineering and Technology",
-
bibsource = "http://waset.org/Publications",
-
oai = "oai:CiteSeerX.psu:10.1.1.308.8359",
-
URL = "http://citeseerx.ist.psu.edu/viewdoc/summary?doi=10.1.1.308.8359",
-
URL = "http://www.waset.org/journals/waset/v51/v51-164.pdf",
-
URL = "http://waset.org/publications/15288",
-
URL = "http://waset.org/Publications?p=51",
-
size = "5 pages",
-
abstract = "Water level forecasting using records of past time
series is of importance in water resources engineering
and management. For example, water level affects
groundwater tables in low-lying coastal areas, as well
as hydrological regimes of some coastal rivers. Then, a
reliable prediction of sea-level variations is required
in coastal engineering and hydrologic studies. During
the past two decades, the approaches based on the
Genetic Programming (GP) and Artificial Neural Networks
(ANN) were developed. In the present study, the GP is
used to forecast daily water level variations for a set
of time intervals using observed water levels. The
measurements from a single tide gauge at Urmia Lake,
Northwest Iran, were used to train and validate the GP
approach for the period from January 1997 to July 2008.
Statistics, the root mean square error and correlation
coefficient, are used to verify model by comparing with
a corresponding outputs from Artificial Neural Network
model. The results show that both these artificial
intelligence methodologies are satisfactory and can be
considered as alternatives to the conventional harmonic
analysis.",
-
notes = "International Science Index 51, 2011",
- }
Genetic Programming entries for
Shahab Kavehkar
Mohammad Ali Ghorbani
Valeriy Khokhlov
Afshin Ashrafzadeh
Sabereh Darbandi
Citations