A New Approach to Determining the Network Fractality with Application to Robot-Laser-Hardened Surfaces of Materials
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- @Article{babic:2023:FaF,
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author = "Matej Babic and Dragan Marinkovic",
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title = "A New Approach to Determining the Network Fractality
with Application to {Robot-Laser-Hardened} Surfaces of
Materials",
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journal = "Fractal and Fractional",
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year = "2023",
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volume = "7",
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number = "10",
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pages = "Article No. 710",
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keywords = "genetic algorithms, genetic programming",
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ISSN = "2504-3110",
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URL = "https://www.mdpi.com/2504-3110/7/10/710",
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DOI = "doi:10.3390/fractalfract7100710",
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abstract = "A new method to determine a fractal network in chaotic
systems is presented together with its application to
the microstructure recognition of robot-laser-hardened
(RLH) steels under various angles of a laser beam. The
method is based on fractal geometry. An experimental
investigation was conducted by investigating the effect
of several process parameters on the final
microstructures of material that has been heat-treated.
The influences of the surface temperature, laser speed,
and different orientation angles of the laser beam on
the microstructural geometry of the treated surfaces
were considered. The fractal network of the
microstructures of robot-laser-hardened specimens was
used to describe how the geometry was changed during
the heat treatment of materials. In order to predict
the fractal network of robot-laser-hardened specimens,
we used a method based on intelligent systems, namely
genetic programming (GP) and a convolutional neural
network (CNN). The proposed GP model achieved a
prediction accuracy of 98.4percent, while the proposed
CNN model reached 96.5percent. The performed analyses
demonstrate that the angles of the robot laser cell
have a noticeable effect on the final microstructures.
The specimen laser-hardened under the conditions of 4
mm/s, 1000 ?C, and an impact angle of the laser beam
equal to 75? presented the maximum fractal network. The
minimum fractal network was observed for the specimen
before the robot-laser-hardening process.",
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notes = "also known as \cite{fractalfract7100710}",
- }
Genetic Programming entries for
Matej Babic
Dragan Marinkovic
Citations