IET Control Theory & Applications (Apr 2021)

Performance‐enhanced iterative learning control using a model‐free disturbance observer

  • Min Li,
  • Tingjian Yan,
  • Caohui Mao,
  • Long Wen,
  • Xinxin Zhang,
  • Tao Huang

DOI
https://doi.org/10.1049/cth2.12096
Journal volume & issue
Vol. 15, no. 7
pp. 978 – 988

Abstract

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Abstract This paper proposes a novel performance‐enhanced iterative learning control (ILC) scheme using a model‐free disturbance observer (DOB) to achieve high performance for precision motion systems that encounter non‐repetitive disturbances. As is well known, the performance of the standard ILC (SILC) is severely degraded by the non‐repetitive disturbances. By introducing DOB into SILC, this paper improves the robustness of the ILC system against non‐repetitive disturbances. In the proposed enhanced ILC (EILC), SILC aims at learning the feedforward signals for a specific reference, while DOB is to compensate for external disturbances. Little or no plant model knowledge is required for SILC. To maintain this advantage after introducing DOB, a model‐free design method for DOB is proposed to release the need for the plant model. Based only on a specific reference and the corresponding feedforward signals learned by SILC, the filter of DOB is optimized via an instrumental‐variable estimate method. Numerical simulation is performed to illustrate the effectiveness and enhanced performance of the proposed control approach.

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