Comparison of neural network, Gaussian regression, support vector machine, long short-term memory, multi-gene genetic programming, and M5 Trees methods for solving civil engineering problems
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- @Article{UNCUOGLU:2022:asoc,
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author = "Erdal Uncuoglu and Hatice Citakoglu and
Levent Latifoglu and Savas Bayram and Mustafa Laman and
Mucella Ilkentapar and A. Alper Oner",
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title = "Comparison of neural network, Gaussian regression,
support vector machine, long short-term memory,
multi-gene genetic programming, and M5 Trees methods
for solving civil engineering problems",
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journal = "Applied Soft Computing",
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volume = "129",
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pages = "109623",
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year = "2022",
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ISSN = "1568-4946",
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DOI = "doi:10.1016/j.asoc.2022.109623",
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URL = "https://www.sciencedirect.com/science/article/pii/S156849462200672X",
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keywords = "genetic algorithms, genetic programming, Machine
learning methods, Construction cost, Laterally loaded
pile, Evaporation, Artificial neural network,
Multi-gene genetic programming, M5Tree",
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abstract = "In this study, it was investigated that how machine
learning (ML) methods show performance in different
problems having different characteristics. Six ML
approaches including Artificial neural networks (ANN),
gaussian process regression (GPR), support vector
machine regression (SVMR), long short-term memory
(LSTM), multi-gene genetic programming (MGGP) and M5
model tree (M5Tree) were used to analyze three
independent civil engineering problems belonging to
construction management, geotechnical engineering, and
hydrological engineering sub-disciplines. Mean absolute
percentage error (MAPE), root mean square error (RMSE),
coefficient of determination (R2), relative root means
square error (RRMSE), Nash-Sutcliffe efficiency (NSE),
Kling-Gupta efficiency (KGE), and overall index of
model performance (OI) criteria were used to evaluate
the performances of the models. Besides performance
criteria, the relative performances of the six ML
models were assessed using Taylor diagram, Violin
diagram and One-Tailed Wilcoxon Signed-Rank Test. For
each of the problem considered in this study, the
effectiveness of the input parameters on the output
parameter has been defined using the Relief Method and
Correlation Coefficient. The results show that ANN and
MGGP models yielded the most successful estimations for
three different problems considered. The best
prediction was achieved by MGGP model for hydrological
engineering problem. For the construction management,
geotechnical engineering problems, the best results
were obtained using the ANN model. All models were
reliable to solve the geotechnical engineering and
hydrological engineering problems while LSTM and SVMR
models are not reliable to solve the construction
management problem. The most and least effective input
parameters on output parameter were contract cost (CC)
and work definition number (WDN) for the managerial
data set. On the other hand, the most and least
effective input parameters on the output parameters for
the experimental and natural data sets have been
obtained as width of the pile (B), rotation degree (R)
and minimum temperature (Tmin), streamflow (Q) data,
respectively. The number of data and data selection
have a significant effect on the homogeneity of the
data set and its representativeness of the problem. The
error values obtained in test stage are affected from
this condition. The equations to calculate the outputs
of each of the problem considered were obtained using
MGGP and M5Tree models",
- }
Genetic Programming entries for
Erdal Uncuoglu
Hatice Citakoglu
Levent Latifoglu
Savas Bayram
Mustafa Laman
Mucella Ilkentapar
A Alper Oner
Citations