Optimization of machining by the milling cutter

Author:

Usubamatov Ryspek1ORCID,Bayalieva Cholpon,Kapayeva Sarken,Sartov Tashtanbay

Affiliation:

1. Kyrgyz State Technical University named after Iskhak Razzakov: Kyrgyz State Technical University after I Razzakov

Abstract

Abstract Optimization of the machining modes for machine tools by the criterion of the maximum productivity rate is considered mainly for the turning processes. Increasing machining modes has limits that depend on the tool life and show in the change in the productivity rate. The machining processes by the milling tool have a specificity that is expressed by the short-cycled cutting processes of the cutters. The cutting process by the milling tool differs from the turning process by the single cutter. The optimization of the milling machining process by the criterion of the maximal productivity rate also differs. The research paper considers a mathematical model for optimal cutting speed for a milling tool by the criterion of the maximal productivity rate.

Publisher

Research Square Platform LLC

Reference17 articles.

1. Schmitz TL, Smith KS (2009) Machining Dynamics, Springer, LCC

2. Kalpakjian S, Schmid SR (2009) Manufacturing Engineering & Technology, 6th edn. Prentice-Hall

3. Rao RV (2011) Advanced Modeling and Optimization of Manufacturing Processes, 1st edn. Springer Series in Advanced Manufacturing

4. Usubamatov R (2018) Productivity Theory for Industrial Engineering. Taylor & Francis, London, New York, Boca Raton

5. A review of optimization techniques in metal cutting processes;Mukherjee I;Computers and Industrial Engineering,2006

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1. Milling Tool Wear Estimation Using Machine Learning with Feature Extraction Approach;2024 MIT Art, Design and Technology School of Computing International Conference (MITADTSoCiCon);2024-04-25

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