Volume 1 Issue 2
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Wuyang SUN, Dinghua ZHANG, Ming LUO. Machining process monitoring and application: a review[J]. Journal of Advanced Manufacturing Science and Technology , 2021, 1(2): 2021001. doi: 10.51393/j.jamst.2021001
Citation: Wuyang SUN, Dinghua ZHANG, Ming LUO. Machining process monitoring and application: a review[J]. Journal of Advanced Manufacturing Science and Technology , 2021, 1(2): 2021001. doi: 10.51393/j.jamst.2021001

Machining process monitoring and application: a review

doi: 10.51393/j.jamst.2021001
Funds:

This study was supported by the National Natural Science Foundation of China (No. 52022082).

  • Received Date: 2021-01-02
  • Rev Recd Date: 2021-01-15
  • Available Online: 2021-02-22
  • Publish Date: 2021-04-10
  • Machining data have been increasingly crucial with the development of modern manufacturing strategies, and the explosive growth of data amount revolutionizes how to collect and analyze data. In machining process, anomalies such as machining chatter and tool wear occur frequently, which strongly affect the process by reducing accuracy and quality as well as increasing the time and cost. As a typical type of machining data, signals acquired in real time by advanced sensor techniques are widely embraced to detect those anomalies. This paper reviews the recent development and applications of process monitoring technologies in machining processes, and typical application scenarios in machining processes are discussed with the latest literatures and current research issues. Potential future trends of process data monitoring and analysis for intelligent machining are put forward at the end of the paper.

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