Optimization of Machining Parameters in Turning for Different Hardness using Multi-Objective Genetic Algorithm

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Abstract

Surface finish and temperature rise are the crucial machining outcomes since it determines the quality of the machining and the tool life. During machining operations, choosing optimal machining parameters is critical since it affects the machining outcome. In this work, Multi-Objective Genetic Algorithm (MOGA) optimization is used to find the combination of machining parameters at different levels of hardness of 20, 36, and 43 to obtain minimum surface roughness and minimum cutting temperature in turning operation. Cutting depth, cutting speed, and feed rate are the machining variables that are used in the process of optimization. From the results, it shows that the minimum temperature rise is 243.333 °C with a surface roughness of 1.975 μm during machining of 20 hardness. It also observed that the hardness of the material significantly affects the surface roughness and temperature rise. The outcome shows that as the hardness of the material is increasing the temperature is increasing while the surface roughness is decreasing. This research also revealed that using a MOGA to optimize multi-objective replies produces positive outcomes.

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CITATION STYLE

APA

Mukri, M. M., Zolpakar, N. A., & Pathak, S. (2023). Optimization of Machining Parameters in Turning for Different Hardness using Multi-Objective Genetic Algorithm. Journal of Mechanical Engineering, 20(3), 25–48. https://doi.org/10.24191/jmeche.v20i3.23899

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