|  |  Adaptive Input Estimation 
  Anders Ahlén
 and
  Mikael Sternad
 
  IFAC Symposium ACASP 89: Adaptive
Systems in Control and Signal Processing,
Glasgow, UK, pp 631-636, April 1989.
 
In Pdf 
 
 
Outline: 
The paper studies the problem of estimating the input signal
to a scalar discrete-time linear system 
The system is known, while the noise 
and input spectra are unknown. (This problem differs from 
that of  blind deconvolution, where the system is unknown.)
 Abstract: 
An adaptive algorithm for estimating the input to a linear system
is presented. This explicit self-tuning filter is based on the
identification of an ARMA innovations model. From that model,
input and measurement noise descriptions
are decomposed.
Main tools in the algorithm are the solution of two
linear systems of equations.
 
The basic algorithm can be used for input signals
described by ARMA models and moving average
measurement noise.
An extension of the algorithm involves the use of
on-line model reduction and spectral factorization.
Simulation experiments illustrate the filtering performance. 
   
  Related publications:
 
 Paper 
in IEEE Trans. ASSP 1989 on the design of linear scalar 
deconvolution estimators. Later  Conference paper 
in SPIE'91 on adaptive deconvolution.
 Paper  in Automatica 1990,
where the identifiability conditions are derived.
 
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