Digital Filter Design Using Semidefinite Programming
Abstract
Abstract
This thesis explores an optimization based approach to the design problem of digital
filters. We show how a digital filter in the form of a discrete linear time-invariant
causal system can be characterized by a non-negative trigonometric polynomial, which
in turn can be represented by a positive semidefinite matrix known as Gram matrix
representation. This allows us to utilize the framework of linear conic optimization,
especially semidefinite programming to obtain filters based on given specifications and
optimal with respect to some property of the filter. The optimization is carried out with
respect to minimizing the stopband energy as well as the passband ripple. We cover
both FIR and IIR filters. The model is implemented in MATLAB using the modelling
language CVX and solved using SeDuMi.
Degree
Student essay
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Date
2015-02-11Author
Samuelsson, Moa
Johansson, Jimmy
Samuelsson, Fabian
Language
eng