Brief paper: Variance results for identification of cascade systems

  • Authors:
  • Bo Wahlberg;Håkan Hjalmarsson;Jonas Mårtensson

  • Affiliations:
  • Automatic Control Lab and ACCESS, School of Electrical Engineering, KTH, SE-100 44 Stockholm, Sweden;Automatic Control Lab and ACCESS, School of Electrical Engineering, KTH, SE-100 44 Stockholm, Sweden;Automatic Control Lab and ACCESS, School of Electrical Engineering, KTH, SE-100 44 Stockholm, Sweden

  • Venue:
  • Automatica (Journal of IFAC)
  • Year:
  • 2009

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Abstract

The objective of this contribution is to analyze statistical properties of estimated models of cascade systems. Models of such systems are important in for example cascade control applications. The aim is to present and analyze some fundamental limitations in the quality of an identified model of a cascade system under the condition that the true subsystems have certain common dynamics. The model quality is analyzed by studying the asymptotic (large data) covariance matrix of the Prediction Error Method parameter estimate. The analysis will focus on cascade systems with three subsystems. The main result is that if the true transfer functions of the first and second subsystem are identical, the output signal information from the second and third subsystems will not affect the asymptotic variance of the estimated model of the first subsystem. This result implies that for a cascade system with two subsystems, where the dynamics of the first subsystem is a factor of the dynamics of the second one, the output signal information from the second subsystem will not improve the asymptotic quality of the estimate of the first subsystem. The results are illustrated by some simple FIR examples.