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Perspectives on Errors-In-Variables Estimation for Dynamic Systems

In: Total Least Squares and Errors-in-Variables Modeling

Author

Listed:
  • Torsten Söderström

    (Uppsala University, Department of Systems and Control, Information Technology)

  • Umberto Soverini

    (University of Bologna, Department of Electronics, Information Science and Systems)

  • Kaushik Mahata

    (Uppsala University, Department of Systems and Control, Information Technology)

Abstract

The paper gives an overview of various methods for identifying dynamic errors-in-variables systems. Several approaches are classified by how the original information in time-series data of the noisy input and output measurements is condensed before further processing. For some methods, such as instrumental variable estimators, the information is condensed into a nonsymmetric covariance matrix as a first step before further processing. In a second class of methods, where a symmetric covariance matrix is used instead, the Frisch scheme and other bias-compensation approaches appear. When dealing with the estimation problem in the frequency domain, a milder data reduction typically takes place by first computing spectral estimators of the noisy input-output data. Finally, it is also possible to apply maximum likelihood and prediction error approaches using the original time-domain data in a direct fashion. This alternative will often require quite high computational complexity but yield good statistical efficiency.

Suggested Citation

  • Torsten Söderström & Umberto Soverini & Kaushik Mahata, 2002. "Perspectives on Errors-In-Variables Estimation for Dynamic Systems," Springer Books, in: Sabine Van Huffel & Philippe Lemmerling (ed.), Total Least Squares and Errors-in-Variables Modeling, pages 271-280, Springer.
  • Handle: RePEc:spr:sprchp:978-94-017-3552-0_24
    DOI: 10.1007/978-94-017-3552-0_24
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