Failure Determination and Failure Region Location Algorithm of TBM Cutter Head based on SVDD

Authors

  • Jiacan Xu
  • Shiyu Xing
  • Binbin Hu
  • Peng Zhou

DOI:

https://doi.org/10.54097/jid.v3i1.8472

Keywords:

Tunnel Boring Machine (TBM), Cutting Tool System, Pattern Recognition

Abstract

In the TBM system, the tool system failure is an important factor affecting its driving efficiency. In order to improve the maintenance efficiency of the tool system, this paper designed the failure simulation test platform of the TBM tool system, and according to the force changes of the cutter head when the hob fails in different areas, proposed the tool system failure region location diagnosis algorithm based on SVDD, in order to judge the failure state of the cutter head system and locate the failure region. Experimental results show that the cutter head failure determination and failure region location algorithm proposed in this paper can effectively identify the cutter head region where the failure hob is located.

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References

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Published

15-05-2023

Issue

Section

Articles

How to Cite

Xu, J., Xing, S., Hu, B., & Zhou, P. (2023). Failure Determination and Failure Region Location Algorithm of TBM Cutter Head based on SVDD. Journal of Innovation and Development, 3(1), 165-167. https://doi.org/10.54097/jid.v3i1.8472