4.3 Article

L1 Adaptive Fractional Control Optimized by Genetic Algorithms with Application to Polyarticulated Robotic Systems

期刊

MATHEMATICAL PROBLEMS IN ENGINEERING
卷 2021, 期 -, 页码 -

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HINDAWI LTD
DOI: 10.1155/2021/5579541

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  1. Ministry of Higher Education, Tunisia
  2. Clinical Investigation Center of the Hospitalo-Center of Sfax (CIC), Tunisia
  3. Association de Sauvegarde des Handicapes Moteurs, Sfax (ASHMS), Tunisia
  4. Control and Energy Management Laboratory, University of Sfax, Tunisia
  5. Digital Research Center of Sfax (CRNS), Tunisia

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A novel L-1 adaptive control approach is proposed in this paper, which guarantees desired control performance by optimizing filter parameters using genetic algorithms. Simulation results demonstrate the efficiency of this control method compared to classical L-1 adaptive control in nominal cases and in the presence of noise.
Recently, an adaptive control approach has been proposed. This approach, named L-1 adaptive control, involves the insertion of a low-pass filter at the input of the Model Reference Adaptive Control (MRAC). This controller has been designed to overcome several limitations of classical adaptive controllers such as (i) the initialization of estimated parameters, (ii) the stability problems with high adaptation gains, and (iii) the appropriate parameter excitation. In this paper, a new design of the filter is presented, used for L-1 adaptive control, for which the desired performances are guaranteed (appropriate values of the control during start-up, a high filtering of noises, a reduced time lag, and a reduced energy consumption). Parameters of the new proposed filter have been optimised by genetic algorithms. The proposed L-1 adaptive fractional control is applied to a polyarticulated robotic system. Simulation results show the efficiency of the proposed control approach with respect to the classical L-1 adaptive control in the nominal case and in the presence of a multiplicative noise.

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