DocumentCode :
3717569
Title :
Two-variable numeric function approximation using least-squares-based regression
Author :
Jochen Rust;Nils Heidmann;Steffen Paul
Author_Institution :
Institute of Electrodynamics and Microelectronics (ITEM.me), University of Bremen, Germany
fYear :
2015
Firstpage :
1
Lastpage :
4
Abstract :
Automated design of two-variable numeric functions can be realized efficiently by extending well-known multiplier-less linear function approximation techniques; the arithmetic signal processing effort is minimized by the utilization of a non-uniform piecewise segmentation scheme. However, as common state-of-the-art approaches only consider unpretentious coefficient estimation techniques, such as gradient superposition, this results in large multiplexer-trees for segmentation that, consequently, are restricting the total performance. In this paper a least-squares-based estimation of multiplier-less linear coefficients is introduced that minimizes the number of segments by using a least-squares-based coefficient estimation. The evaluation indicates a reduction of the segmentation effort by nearly 31% on average. Logical and physical CMOS synthesis is performed and the results are compared to actual references highlighting our work high performance approach for the hardware-based calculation of two-variable numeric functions.
Keywords :
"Function approximation","Hardware","Signal processing","Approximation algorithms","Parameter extraction","Throughput"
Publisher :
ieee
Conference_Titel :
Nordic Circuits and Systems Conference (NORCAS): NORCHIP & International Symposium on System-on-Chip (SoC), 2015
Type :
conf
DOI :
10.1109/NORCHIP.2015.7364413
Filename :
7364413
Link To Document :
بازگشت