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CDC
2008
IEEE

Data-driven precompensator tuning for linear parameter varying systems

14 years 6 months ago
Data-driven precompensator tuning for linear parameter varying systems
— Methods for direct data-driven tuning of the parameters of precompensators for LPV systems are developed. Since the commutativity property is not always satisfied for LPV systems, previously proposed methods for LTI systems that use this property cannot be directly adapted. When the ideal precompensator giving perfect mean tracking exists in the proposed parameterisation of the precompensator, the LPV transfer operators do commute and an algorithm using only two experiments on the real system is proposed. It is shown that this algorithm gives consistent estimates of the ideal parameters despite the presence of stochastic disturbances. For the more general case, when the ideal precompensator does not belong to the set of parameterised precompensators, another technique is developed. This technique requires a number of experiments equal to twice the number of precompensator parameters and it is shown that the calculated parameters minimise the mean squared tracking error.
Mark Edward John Butcher, Alireza Karimi, Roland L
Added 29 May 2010
Updated 29 May 2010
Type Conference
Year 2008
Where CDC
Authors Mark Edward John Butcher, Alireza Karimi, Roland Longchamp
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