Sensors (Jul 2025)

Improved Adaptive Sliding Mode Control Using Quasi-Convex Functions and Neural Network-Assisted Time-Delay Estimation for Robotic Manipulators

  • Jin Woong Lee,
  • Jae Min Rho,
  • Sun Gene Park,
  • Hyuk Mo An,
  • Minhyuk Kim,
  • Seok Young Lee

DOI
https://doi.org/10.3390/s25144252
Journal volume & issue
Vol. 25, no. 14
p. 4252

Abstract

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This study presents an adaptive sliding mode control strategy tailored for robotic manipulators, featuring a quasi-convex function-based control gain and a time-delay estimation (TDE) enhanced by neural networks. To compensate for TDE errors, the proposed method utilizes both the previous TDE error and radial basis function neural networks with a weight update law that includes damping terms to prevent divergence. Additionally, a continuous gain function that is quasi-convex function dependent on the magnitude of the sliding variable is proposed to replace the traditional switching control gain. This continuous function-based gain has effectiveness in suppressing chattering phenomenon while guaranteeing the stability of the robotic manipulator in terms of uniform ultimate boundedness, which is demonstrated through both simulation and experiment results.

Keywords