Sparse LMS for system identification
University of Michigan–Ann Arbor · Tsinghua University
Abstract
We propose a new approach to adaptive system identification when the system model is sparse. The approach applies ℓ 1 relaxation, common in compressive sensing, to improve the performance of LMS-type adaptive methods. This results in two new algorithms, the zero-attracting LMS (ZA-LMS) and the reweighted zero-attracting LMS (RZA-LMS). The ZA-LMS is derived via combining a ℓ 1 norm penalty on the coefficients into the quadratic LMS cost function, which generates a zero attractor in the LMS iteration. The zero attractor promotes sparsity in taps during the filtering process, and therefore accelerates convergence when identifying sparse systems. We prove that the ZA-LMS can achieve lower mean square error than…
Citation impact
- FWCI
- 27.44
- Percentile
- 100%
- References
- 16
Authors
3Topics & keywords
- Least mean squares filter
- Computer science
- Attractor
- Adaptive filter
- Convergence (economics)
- Rate of convergence
- System identification
- Algorithm