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H/sup /spl infin// bounds for least-squares estimators | IEEE Journals & Magazine | IEEE Xplore

H/sup /spl infin// bounds for least-squares estimators


Abstract:

We obtain upper and lower bounds for the H/sup /spl infin// norm of the Kalman filter and the recursive-least-squares (RLS) algorithm, with respect to prediction and filt...Show More

Abstract:

We obtain upper and lower bounds for the H/sup /spl infin// norm of the Kalman filter and the recursive-least-squares (RLS) algorithm, with respect to prediction and filtered errors. These bounds can be used to study the robustness properties of such estimators. One main conclusion is that, unlike H/sup /spl infin//-optimal estimators which do not allow for any amplification of the disturbances, the least-squares estimators do allow for such amplification. This fact can be especially pronounced in the prediction error case, whereas in the filtered error case the energy amplification is at most four. Moreover, it is shown that the H/sup /spl infin// norm for RLS is data dependent, whereas for least-mean-squares (LMS) algorithms and normalized LMS, the H/sup /spl infin// norm is simply unity.
Published in: IEEE Transactions on Automatic Control ( Volume: 46, Issue: 2, February 2001)
Page(s): 309 - 314
Date of Publication: 28 February 2001

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