Urmia Lake level forecasting using Brain Emotional Learning (BEL)
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- @InProceedings{MahdiHadi:2013:ICCKE,
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author = "Reza {Mahdi Hadi} and Saeid Shokri and Peyman Ayubi",
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booktitle = "3th International eConference on Computer and
Knowledge Engineering (ICCKE 2013)",
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title = "{Urmia Lake} level forecasting using Brain Emotional
Learning (BEL)",
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year = "2013",
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month = oct,
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pages = "246--251",
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keywords = "genetic algorithms, genetic programming, brain
emotional learning, forecasting, water level, time
series",
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DOI = "doi:10.1109/ICCKE.2013.6682804",
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abstract = "This paper has tried to focus on a new approach for
water level forecasting of Urmia Lake by using records
of past time series and emotional learning. Water level
forecasting is important in water resources engineering
and management and efficient management of water
resources for use. During the past two decades, the
approaches artificial intelligence based on the Genetic
Programming (GP), Artificial Neural Networks (ANN),
fuzzy logic, neuro-fuzzy and statistical method for
example ARIMA and recently, chaos theory have been
developed. Time series the measurements from tide gauge
at Urmia Lake, were used to train emotional learning
approach for the period from March 1965 to February
2011. The research indicates that there is a non-linear
and complex relationship between water input and
variables, therefore anticipation seems to be more
difficult to implement it with conventional tools of
time series prediction. Simulation results prove that
the applied method has prominent capability in
forecasting time series. In this paper, various
criterion including Mean Absolute Error (MAE), Mean
Absolute Percentage Error (MAPE), Root Mean Squared
Error (RMSE) have been used.",
-
notes = "Also known as \cite{6682804}",
- }
Genetic Programming entries for
Reza Mahdi Hadi
Saeid Shokri
Peyman Ayubi
Citations