Composite adaptive control of belt polishing force for aero-engine blade

Pengbing Zhao, Yaoyao Shi

Research output: Contribution to journalArticlepeer-review

33 Scopus citations

Abstract

The existing methods for blade polishing mainly focus on robot polishing and manual grinding. Due to the difficulty in high-precision control of the polishing force, the blade surface precision is very low in robot polishing, in particular, quality of the inlet and exhaust edges can not satisfy the processing requirements. Manual grinding has low efficiency, high labor intensity and unstable processing quality, moreover, the polished surface is vulnerable to burn, and the surface precision and integrity are difficult to ensure. In order to further improve the profile accuracy and surface quality, a pneumatic flexible polishing force-exerting mechanism is designed and a dual-mode switching composite adaptive control (DSCAC) strategy is proposed, which combines Bang-Bang control and model reference adaptive control based on fuzzy neural network (MRACFNN) together. By the mode decision-making mechanism, Bang-Bang control is used to track the control command signal quickly when the actual polishing force is far away from the target value, and MRACFNN is utilized in smaller error ranges to improve the system robustness and control precision. Based on the mathematical model of the force-exerting mechanism, simulation analysis is implemented on DSCAC. Simulation results show that the output polishing force can better track the given signal. Finally, the blade polishing experiments are carried out on the designed polishing equipment. Experimental results show that DSCAC can effectively mitigate the influence of gas compressibility, valve dead-time effect, valve nonlinear flow, cylinder friction, measurement noise and other interference on the control precision of polishing force, which has high control precision, strong robustness, strong anti-interference ability and other advantages compared with MRACFNN. The proposed research achieves high-precision control of the polishing force, effectively improves the blade machining precision and surface consistency, and significantly reduces the surface roughness.

Original languageEnglish
Pages (from-to)988-996
Number of pages9
JournalChinese Journal of Mechanical Engineering (English Edition)
Volume26
Issue number5
DOIs
StatePublished - Sep 2013

Keywords

  • Bang-Bang control
  • Blade
  • Fuzzy neural network
  • Model reference adaptive control
  • Polishing force

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