Research and Optimisation of Key Issues in the Milling Process of Difficult-to-Machine Materials
DOI:
https://doi.org/10.6911/WSRJ.202511_11(11).0006Keywords:
Difficult-to-machine materials, Milling, Analytical processingAbstract
This paper systematically analyses the machining performance and mechanisms of difficult-to-machine materials such as austenitic stainless steel, titanium alloys, and pure metals during milling processes. It addresses issues including low cutting efficiency, rapid tool wear, and challenges in ensuring machining accuracy. By analysing material properties and machining challenges, this paper focuses on comprehensive process improvement measures encompassing tool selection, geometric parameter optimisation, cutting parameter setting, and cooling strategies. Aimed at providing theoretical foundations and practical guidance for the efficient and precision milling of the aforementioned typical difficult-to-machine materials.
Downloads
References
[1] Xiao Biao, Xu Baode, Peng Shixin, et al. Study on Machining Knowledge Modeling of Complex Thin-Walled Parts Based on Knowledge Graph [J]. Aeronautical Manufacturing Technology, 2024, 67(11):76-86.
[2] Cai Heng, Zhang Xinhe. Analysis of the Influence of Machining Processes on Component Processing Accuracy [J]. Chinese Science and Technology Journal Database (Abstract Edition) Engineering Technology, 2025(1):026-029.
[3] Sun Yanjing. The Impact of Mechanical Processing Technology on the Precision of Hardware Parts and Control Methods [J]. Hardware, 2025, 53(2):88-90.
[4] Li Jianxun. An Investigation into the Relationship between Machining Processes and Machining Accuracy [J]. Chinese Science and Technology Journal Database (Abstract Edition) Engineering Technology, 2024(3):0025-0029.
[5] Zhang Fenfen. The Influence of Machining Processes on Component Accuracy and Control Measures [J]. Papermaking Equipment & Materials, 2024, 53(2):115-117.
[6] Li Jingqi. The Influence of Machining Processes on Component Machining Accuracy [J]. Chinese Science and Technology Journal Database (Citation Edition) Engineering Technology, 2024(3):0021-0024.
[7] Liu Jinfeng, Zhao Peng, Zhou Honggen, et al. Digital twin-driven machining process evaluation method [J]. Computer Integrated Manufacturing Systems, 2019, 25(6):1600-1610.
[8] Lu Changguo. Research on machining technology of marine drum gear coupling [J]. Ship Science and Technology, 2018, 40(9X):205-207.
[9] Xu Nianfu, Weng Xiuqi, Gao Mei, et al. Mechanical Processing Technology Analysis and Boring Fixture Design for Open Nut [J]. Coal Mine Machinery, l.018, 39(2):76-77.
[10] Bai Feixian, Wang Yongchao, Wei Yu, et al. Evaluation of Machining Process Based on Grey Relation Analysis and Analytic Hierarchy Process [J]. Modular Machine Tool & Automatic Manufacturing Technique, 2018(8):174-176,180.
[11] Wu Guoliang, Advanced Milling Techniques and Practical Examples Nanjing: Jiangsu Science and Technology Press, 2005.11.
[12] Liang Bingwen, Selected Machining Techniques and Tips, Beijing: China Machine Press, 2005.1.
Downloads
Published
Issue
Section
License
Copyright (c) 2025 World Scientific Research Journal

This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.




