Computational intelligent techniques for predicting optical behavior of different materials
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gp-bibliography.bib Revision:1.8414
- @Article{Mohamed:2024:optik,
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author = "R. A. Mohamed and M. M. El-Nahass and
M. Y. El-Bakry and El-Sayed A. El-Dahshan and E. H. Aamer and
D. M. Habashy",
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title = "Computational intelligent techniques for predicting
optical behavior of different materials",
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journal = "Optik",
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year = "2024",
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volume = "313",
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pages = "171986",
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month = oct,
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keywords = "genetic algorithms, genetic programming, Artificial
neural network, ANN, Refractive index, Energy gap,
Optical properties",
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ISSN = "0030-4026",
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URL = "
https://www.sciencedirect.com/science/article/pii/S0030402624003851",
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DOI = "
doi:10.1016/j.ijleo.2024.171986",
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abstract = "The current research introduces a comparison study of
the use of artificial neural networks (ANN) and genetic
programming (GP) for predicting the optical behaviour
of different materials. The experimental data for a
variety of materials, including semiconductors,
insulators, oxides, and halides are extracted and used
in ANN and GP as inputs. Simulation and prediction
processes are carried out based on ANN and GP
techniques. The most important aim presented in the
current research is to obtain two equations of n as a
function of Eg by the two based on ANN and GP models.
The first numerical equation is obtained based on the
ANN model exhibiting mean squared error (MSE) does not
exceed 10-1. The second nonlinear equation is obtained
based on the GP model with an acceptable fitness value.
The estimated results based on the proposed approaches
ANN and GP presented a great match with their targets.
It demonstrated that the trained results including
simulated and predicted results based on ANN and GP
introduce excellent fitting compared with alike results
obtained based on the conventional theoretical
techniques. The mean absolute percentage error values
prove that the ANN model is significantly more accurate
than the GP model. Since lower error values suggest
better prediction, hence it is clear that ANN performed
better than GP. The equation derived by the ANN model
is used to predict the refractive index for binary and
ternary compounds. The values of the refractive index
have been predicted for materials for which
measurements have been made practically as a test step
to ensure the accuracy of the results obtained through
the deduced mathematical equations. Then, the
application of these equations was generalised to
materials that were not measured experimentally. A
detailed discussion of the modelling results is
introduced and proved that ANN and GP models are
effective and successful tools for predicting the
refractive index for different types of materials",
- }
Genetic Programming entries for
R A Mohamed
M M El-Nahass
Mahmoud Y El-Bakry
El-Sayed A El-Dahshan
E H Aamer
D M Habashy
Citations