|
Optimal Differentiation based on Stochastic Signal Models
Bengt Carlsson,
Anders Ahlén
and
Mikael Sternad
IEEE Transactions on Signal Processing,
vol SP-39, pp 341-353, February 1991.
© 1991 IEEE.
Paper available In Pdf.
- Outline:
-
A filter which estimates the derivative of a signal is designed
as a compromise between good differentiation and a
low noise sensitivity. The paper discusses the systematic
model-bases design of realizable differentiating filters,
based on continuous-time or discrete-time models describing the
spectral
properties of signals and noise.
- Abstract:
-
The problem of estimating the time derivative of a signal
from sampled measurements is addressed.
The measurements may be corrupted by coloured noise.
A key idea is to use stochastic models of
the signal to be differentiated and of the measurement
noise. Two approaches are suggested. The first is based
on a continuous-time stochastic process as model of the
signal. The second approach uses a discrete-time ARMA
model of the signal and a discrete-time approximation of the
derivative operator. The introduction of this approximation
normally causes a small performance degradation, compared
to the first approach. There exists an optimal (signal
dependent) derivative approximation, for which
the performance degradation vanishes.
Digital differentiators
are presented in a shift operator polynomial form.
They minimize the mean square estimation error. In both
approaches, they are calculated from a
linear polynomial equation and a polynomial spectral
factorization. (The first approach also requires
sampling of the continuous-time model.) Estimators can
be designed for prediction, filtering and smoothing problems.
Unstable signal and noise models can be handled. The three
obstacles to perfect differentiation, namely a
finite smoothing lag, measurement noise and aliasing effects
due to sampling, are discussed.
- Related publications:
-
Related paper
in IEEE Trans. SP 1992.
Paper
in IEEE Trans. ASSP 1989, on the design of deconvolution
estimators and differentiators.
Paper
in Automatica 1993, which in Section 5 outlines a robustification
against model errors.
Book chapter
(Academic Press 1994) on the polynomial approach to Wiener
filter design.
|
Research
on polynomial methods
|
Main
entry in list of publications
|
Personal use of this material is permitted.
However, permission to reprint/republish this material for
advertising or promotional purposes or for creating new
collective works for resale or redistribution to servers or lists,
or to reuse any copyrighted component of this work in other works
must be obtained from the IEEE.
|