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Predictive Self-Tuning Control by Parameter Bounding and Worst-Case Design

In: Bounding Approaches to System Identification

Author

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  • S. M. Veres

    (University of Birmingham, School of Electronic and Electrical Engineering)

  • J. P. Norton

    (University of Birmingham, School of Electronic and Electrical Engineering)

Abstract

The computation of bounds on the parameters of a plant model allows worst-case control synthesis, taking account of the uncertainty in the model. This chapter introduces such a control scheme: predictive bounding control. The scheme contrasts with existing self-tuning control methods which base control synthesis on a nominal plant model. Parameter bounding also permits detection of abrupt plant changes, and adaptive tracking of time-varying plant characteristics by suitable choice of bounds on plant-model output error and plant-parameter increments. Estimation and control are closely integrated, and the control computation can compromise between reducing the model uncertainty and reducing predicted output error. Simulation examples show the excellent performance of predictive bounding control.

Suggested Citation

  • S. M. Veres & J. P. Norton, 1996. "Predictive Self-Tuning Control by Parameter Bounding and Worst-Case Design," Springer Books, in: Mario Milanese & John Norton & Hélène Piet-Lahanier & Éric Walter (ed.), Bounding Approaches to System Identification, chapter 25, pages 409-439, Springer.
  • Handle: RePEc:spr:sprchp:978-1-4757-9545-5_25
    DOI: 10.1007/978-1-4757-9545-5_25
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