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Published in: Advances in Manufacturing 2/2021

20-04-2021

Multi-verse optimizer based parameters decision with considering tool life in dry hobbing process

Authors: Heng-Xin Ni, Chun-Ping Yan, Shen-Fu Ni, Huan Shu, Yu Zhang

Published in: Advances in Manufacturing | Issue 2/2021

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Abstract

Dry hobbing has received extensive attention for its environmentally friendly processing pattern. Due to the absence of lubricants, hobbing process is highly dependent on process parameters combination since using unreasonable parameters tends to affect the machining performance. Besides, the consideration of tool life is frequently ignored in gear hobbing. Thus, to settle the above issues, a multi-objective parameters decision approach considering tool life is developed. Firstly, detailed quantitative analysis between process parameters and hobbing performance, i.e., machining time, production cost and tool life is introduced. Secondly, a multi-objective parameters decision-making model is constructed in search for optimum cutting parameters (cutting velocity v, axial feed rate \(f_{{\text{a}}}\)) and hob parameters (hob diameter d0, threads z0). Thirdly, a novel algorithm named multi-objective multi-verse optimizer (MOMVO) is utilized to solve the presented model. A case study is exhibited to show the feasibility and reliability of the proposed approach. The results reveal that (i) a balance can be achieved among machining time, production cost and tool life via appropriate process parameters determination; (ii) optimizing cutting parameters and hob parameters simultaneously contributes to optimal objectives; (iii) considering tool life provides usage precautions support and process parameters guidance for practical machining.

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Metadata
Title
Multi-verse optimizer based parameters decision with considering tool life in dry hobbing process
Authors
Heng-Xin Ni
Chun-Ping Yan
Shen-Fu Ni
Huan Shu
Yu Zhang
Publication date
20-04-2021
Publisher
Shanghai University
Published in
Advances in Manufacturing / Issue 2/2021
Print ISSN: 2095-3127
Electronic ISSN: 2195-3597
DOI
https://doi.org/10.1007/s40436-021-00349-y

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