• Title of article

    Explicit output-feedback nonlinear predictive control based on black-box models

  • Author/Authors

    Grancharova، نويسنده , , Alexandra and Kocijan، نويسنده , , Ju? and Johansen، نويسنده , , Tor A.، نويسنده ,

  • Pages
    10
  • From page
    388
  • To page
    397
  • Abstract
    Nonlinear model predictive control (NMPC) algorithms are based on various nonlinear models. A number of on-line optimization approaches for output-feedback NMPC based on various black-box models can be found in the literature. However, NMPC involving on-line optimization is computationally very demanding. On the other hand, an explicit solution to the NMPC problem would allow efficient on-line computations as well as verifiability of the implementation. This paper applies an approximate multi-parametric nonlinear programming approach to explicitly solve output-feedback NMPC problems for constrained nonlinear systems described by black-box models. In particular, neural network models are used and the optimal regulation problem is considered. A dual-mode control strategy is employed in order to achieve an offset-free closed-loop response in the presence of bounded disturbances and/or model errors. The approach is applied to design an explicit NMPC for regulation of a pH maintaining system. The verification of the NMPC controller performance is based on simulation experiments.
  • Keywords
    Model predictive control , Dual-mode control , Neural network models , Multi-parametric nonlinear programming , Piecewise linear controllers
  • Journal title
    Astroparticle Physics
  • Record number

    2046989