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  5. Artificial Neural Networks: What Can They Learn about Color Laser Marking?
 
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Artificial Neural Networks: What Can They Learn about Color Laser Marking?

Journal
2018 IX National Conference with International Participation (ELECTRONICA)
Date Issued
2018
Author(s)
Pavels Cacivkins
Rezekne Academy of Technologies 
Lazov, Lyubomir 
Rezekne Academy of Technologies 
Teirumnieks, Edmunds 
Rezekne Academy of Technologies 
Martins Sperga
Rezekne Academy of Technologies 
Ingus Dilevka
Rezekne Academy of Technologies 
Artis Vitins
Rezekne Academy of Technologies 
DOI
10.1109/electronica.2018.8439192
Abstract
Color laser marking paves the way for many useful applications in modern industry - traceability, anticounterfeiting, etc. Laser marking of materials is an inherently difficult problem with no clear functional relationship between many technological parameters on the input and the results of processing on the output. Some processes cannot be well defined without the use of examples.
In this paper we discuss the novel method of training artificial neural networks using real experimental color laser marking data for prediction of results. We conclude the paper by discussing the other potential applications of proposed solution in the field of laser materials processing.
Subjects
  • artificial neural net...

  • color laser marking

  • laser materials proce...

  • machine learning

File(s)
 Artificial Neural Networks What Can They Learn about Color Laser Marking.pdf (317.29 KB)
Scopus© citations
1
Acquisition Date
Jan 12, 2024
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