Title :
Finite-precision error analysis of QRD-RLS and STAR-RLS adaptive filters
Author :
Raghunath, Kalavai J. ; Parhi, Keshab K.
Author_Institution :
Lucent Technol., AT&T Bell Labs., Murray Hill, NJ, USA
fDate :
5/1/1997 12:00:00 AM
Abstract :
The QR decomposition-based recursive least-squares (RLS) adaptive filtering (QRD-RLS) algorithm is suitable for VLSI implementation since it has good numerical properties and can be mapped onto a systolic array. A new fine-grain pipelinable STAR-RLS algorithm was developed. The pipelined STAR-RLS algorithm (PSTAR-RLS) is useful for high-speed applications. The stability of QRD-RLS, STAR-RLS, and PSTAR-RLS has been proved, but the performance of these algorithms in finite-precision arithmetic has not yet been analyzed. The authors determine expressions for the degradation in the performance of these algorithms due to finite precision. By exploiting the steady-state properties of these algorithms, simple expressions are obtained that depend only on known parameters. This analysis can be used to compare the algorithms and to decide the wordlength to be used in an implementation. Since floating- or fixed-point arithmetic representations may be used in practice, both representations are considered. The results show that the three algorithms have about the same finite-precision performance, with PSTAR-RLS performing better than STAR-RLS, which does better than QRD-RLS. These algorithms can be implemented with as few as 8 bits for the fractional part, depending on the filter size and the forgetting factor used. The theoretical expressions are found to be in good agreement with the simulation results
Keywords :
adaptive filters; adaptive signal processing; digital arithmetic; error analysis; filtering theory; floating point arithmetic; least squares approximations; pipeline arithmetic; recursive estimation; systolic arrays; PSTAR-RLS; QR decomposition based recursive least squares; QRD-RLS adaptive filters; STAR-RLS adaptive filters; VLSI implementation; adaptive filtering algorithm; algorithm performance; filter size; finite-precision arithmetic; finite-precision error analysis; finite-precision performance; fixed-point arithmetic representation; floating-point arithmetic representation; forgetting factor; high-speed applications; pipelined STAR-RLS algorithm; simulation results; stability; steady-state properties; systolic algorithms; systolic array; wordlength; Adaptive filters; Algorithm design and analysis; Arithmetic; Error analysis; Filtering algorithms; Performance analysis; Resonance light scattering; Stability analysis; Systolic arrays; Very large scale integration;
Journal_Title :
Signal Processing, IEEE Transactions on