Enhancing machining process efficiency through genetic algorithm-driven optimization: a user interface creation

Investigation of the optimization of machining processes for oil-hardened nitric steel material, aiming to understand the productivity and quality is carried out. Utilizing an orthogonal array design with three-level three-factor input parameters, the study assesses material removal rates (MRR) and...

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Published inInternational journal on interactive design and manufacturing Vol. 19; no. 5; pp. 3825 - 3837
Main Authors Abraham, Maria Jackson, Neelakandan, Baskar, Mustafa, Umar, Ganesan, Balaji, Gopalan, Kirthika
Format Journal Article
LanguageEnglish
Published Paris Springer Paris 01.05.2025
Springer Nature B.V
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ISSN1955-2513
1955-2505
DOI10.1007/s12008-024-02023-6

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Summary:Investigation of the optimization of machining processes for oil-hardened nitric steel material, aiming to understand the productivity and quality is carried out. Utilizing an orthogonal array design with three-level three-factor input parameters, the study assesses material removal rates (MRR) and surface finish quality. A regression model is developed using Taguchi design techniques and ANOVA for MRR with 0.059 P-value and for Surface roughness with 0.062 P-value validates the regression and the significant parameters. Further optimization is conducted using genetic algorithms. The optimization data are validated using scanning electron microscope (SEM) images for MRR and surface roughness individually. Leveraging the capabilities of MATLAB and LabVIEW, a user-friendly interface is designed and validated using the class function Object () [native code] node and core wrapper design of the Laboratory Virtual Instrument Engineering Workbench (LabVIEW). The objective is to create a software tool that enhances machining processes, addressing the needs of various industries. This research aims to develop a mathematical model incorporating statistical techniques to predict machining processes tailored to specific machine-material combinations. Graphical Abstract Article highlights A framework for user interface to predict the best machining conditions for chosen outputs by the combination of machines and material is created. The experimental machining data were converted into regression equations and then into .m files using MATLAB. Based on the existing knowledge, a suitable method for optimizing (Genetic Algorithm) the machining process is chosen and the results obtained in a user friendly interface.
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ISSN:1955-2513
1955-2505
DOI:10.1007/s12008-024-02023-6