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Impacts of Burnishing Variables on the Quality Indicators in a Single Diamond Burnishing Operation

Le, M.-T. and Van, A.-L. and Nguyen, T.-T. (2023) Impacts of Burnishing Variables on the Quality Indicators in a Single Diamond Burnishing Operation. Strojniski Vestnik/Journal of Mechanical Engineering, 69 (3-4). pp. 155-168. ISSN 00392480

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Abstract

Diamond burnishing is an effective solution to finish a surface. The purpose of the current work is to optimize parameter inputs, including the spindle speed (S), depth of penetration (D), feed rate (f), and diameter of tool-tip (DT) for improving the Vickers hardness (VH) and decreasing the average roughness (Ra) of a new diamond burnishing process. A set of burnishing experiments is executed under a new cooling lubrication systemcomprising the minimum quantity lubrication and double vortex tubes. The Bayesian regularized feed-forward neural network (BRFFNN) models of the performances are proposed in terms of the inputs. The criteria importance through the inter-criteria correlation (CRITIC) method and non-dominated sorting genetic algorithm based on the grid partitioning (NSGA-G) are applied to compute the weights of responses and find optimality. The optimal outcomes of the S, D, f, and DT were 370 rpm, 0.10 mm, 0.04 mm/rev, and 8 mm, respectively. The improvements in the Ra and VH were 40.7 and 7.6 , respectively, as compared to the original parameters. An effective approach combining the BRFFNN, CRITIC, and NSGA-G can be widely utilized to deal with complicated optimization problems. The optimizing results can be employed to enhance the surface properties of the burnished surface. © 2023 The Authors. CC BY 4.0 Int. Licensee: SV-JME.

Item Type: Article
Divisions: Faculties > Faculty of Special Equipments
Identification Number: 10.5545/sv-jme.2022.303
Uncontrolled Keywords: Burnishing; Diamonds; Feedforward neural networks; Genetic algorithms; Surface roughness; Turning; Vortex flow, Average roughness; Bayesian; Bayesian regularization; Diamond burnishing; Effective solution; Feed forward neural net works; NSGA-G; Quality indicators; Single diamond burnishing; Vicker hardness, Vickers hardness
URI: http://eprints.lqdtu.edu.vn/id/eprint/10810

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