Skip to the main content

Original scientific paper

https://doi.org/10.25027/ag.33.1.4

Machine learning approach to predict the dot gain of flexographic prints

Soumen Basak orcid id orcid.org/0000-0002-2613-7617 ; Jadavpur University, Salt Lake Campus, B-73-80, Plot No. 8, Kolkata – 700106, West Bengal, India *
Saritha P. C. ; Jadavpur University, Salt Lake Campus, B-73-80, Plot No. 8, Kolkata – 700106, West Bengal, India
Alenrex Maity orcid id orcid.org/0000-0002-6630-3587 ; Jadavpur University, Salt Lake Campus, B-73-80, Plot No. 8, Kolkata – 700106, West Bengal, India

* Corresponding author.


Full text: english pdf 890 Kb

page 34-43

downloads: 322

cite


Abstract

The computational learning theory and dynamic programming approach of machine learning techniques made it astutely applicable to the various bids such as developing algorithms, understanding patterns, studying observations, forecasting data etc. The algorithms have the features to construct a framework of trained input dataset to deliver sensible and dynamic data driven predictions and judgements. These contrasting peculiarities of the machine learning techniques can be made useful with the various fields of printing technology in a revolutionized manner. Considering these aspects, this work is focussed on to integrating the machine learning possibilities with flexographic print quality evaluation. This paper established a machine learning algorithm in Python to evaluate the flexographic print quality as dot gain as the output response. The data analysis and performance evaluation are done using the

Keywords

flexography, dot gain, machine learning, python, linear regression, decision tree, random forest regressor.

Hrčak ID:

329696

URI

https://hrcak.srce.hr/329696

Publication date:

31.3.2025.

Visits: 614 *