IEEE Access (Jan 2020)

Identification Method of Modal Parameters of Machine Tools Under Periodic Cutting Excitation

  • Ling Yin,
  • Chunhui Li,
  • Chao Qin,
  • Yili Peng,
  • Jiarong Gu,
  • Fei Zhang,
  • Shuo Li,
  • Zhiqiang Song

DOI
https://doi.org/10.1109/ACCESS.2020.3006226
Journal volume & issue
Vol. 8
pp. 120850 – 120858

Abstract

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The dynamics of a machine tool have an important influence on the quality and efficiency of the machining process. In this paper, the modal parameters identification method of machine tools under normal cutting excitation is proposed based on the fact that the random components in the cutting force can provide an effective excitation. However, the generated cutting force during machining contains strong periodic components and does not satisfy the white noise assumption. Directly applying the operational modal analysis (OMA) method will face serious harmonic interference. Therefore, it is difficult to ensure the accuracy of the identified parameters. The cepstrum editing method is proposed to eliminate the periodic component. And the modal parameters are extracted from the remaining signal by using the OMA method. The experimental results show that the proposed method works well under normal cutting conditions.

Keywords