A Pareto-optimal moving average multigene genetic programming model for daily streamflow prediction
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- @Article{DanandehMehr:2017:JH,
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author = "Ali {Danandeh Mehr} and Ercan Kahya",
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title = "A Pareto-optimal moving average multigene genetic
programming model for daily streamflow prediction",
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journal = "Journal of Hydrology",
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volume = "549",
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pages = "603--615",
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year = "2017",
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ISSN = "0022-1694",
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DOI = "doi:10.1016/j.jhydrol.2017.04.045",
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URL = "http://www.sciencedirect.com/science/article/pii/S0022169417302664",
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abstract = "Genetic programming (GP) is able to systematically
explore alternative model structures of different
accuracy and complexity from observed input and output
data. The effectiveness of GP in hydrological system
identification has been recognized in recent studies.
However, selecting a parsimonious (accurate and simple)
model from such alternatives still remains a question.
This paper proposes a Pareto-optimal moving average
multigene genetic programming (MA-MGGP) approach to
develop a parsimonious model for single-station
streamflow prediction. The three main components of the
approach that take us from observed data to a validated
model are: (1) data pre-processing, (2) system
identification and (3) system simplification. The data
pre-processing ingredient uses a simple moving average
filter to diminish the lagged prediction effect of
stand-alone data-driven models. The multigene
ingredient of the model tends to identify the
underlying nonlinear system with expressions simpler
than classical monolithic GP and, eventually
simplification component exploits Pareto front plot to
select a parsimonious model through an interactive
complexity-efficiency trade-off. The approach was
tested using the daily streamflow records from a
station on Senoz Stream, Turkey. Comparing to the
efficiency results of stand-alone GP, MGGP, and
conventional multi linear regression prediction models
as benchmarks, the proposed Pareto-optimal MA-MGGP
model put forward a parsimonious solution, which has a
noteworthy importance of being applied in practice. In
addition, the approach allows the user to enter human
insight into the problem to examine evolved models and
pick the best performing programs out for further
analysis.",
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keywords = "genetic algorithms, genetic programming, Streamflow
prediction, Pareto-optimal, Hydrological modelling",
- }
Genetic Programming entries for
Ali Danandeh Mehr
Ercan Kahya
Citations