Continuous-time LMS adaptive recursive filters
- 1 July 1991
- journal article
- Published by Institute of Electrical and Electronics Engineers (IEEE) in IEEE Transactions on Circuits and Systems
- Vol. 38 (7) , 769-778
- https://doi.org/10.1109/31.135748
Abstract
This paper presents an approach for implementing continuous-time adaptive recursive filters. The resulting filters should be capable of operating on much higher signal frequen- cies than their digital counterparts since no sampling is required. With respect to imple- mentation problems, the effects of DC offsets is investigated and formulae derived so that these effects can be estimated and reduced. As well, it is shown that the DC offset perfor- mance is strongly affected by the choice of structure for the adaptive filter .Finally, experi- mental results from a discrete prototype are given where accurate adaptation is observed and DC offset effects are compared to theoretical predictions.Keywords
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