Title :
Wideband blind signal classification on a battery budget
Author :
Harjani, Ramesh ; Cabric, Danijela ; Markovic, Dejan ; Sadler, Brian M. ; Palani, Rakesh K. ; Saha, Anindya ; Shin, Hundo ; Rebeiz, Eric ; Basir-Kazeruni, Sina ; Fang-Li Yuan
Author_Institution :
Dept. of Electr. & Comput. Eng., Univ. of Minnesota, Minneapolis, MN, USA
fDate :
10/1/2015 12:00:00 AM
Abstract :
A wideband signal sensor is an essential component to enable cognitive radio and dynamic spectrum access techniques, providing real-time detection and modulation classification in a wideband environment of interest. The problem is challenging, requiring a processing suite incorporating detection, estimation, and classification, with stringent power objectives to enable widespread use in untethered battery powered devices. This article provides an overview of an integrated system-on-chip extremely low-power solution, including a wideband mixed-signal front-end, an algorithm suite that incorporates a blind hierarchical modulation classifier, and an ASIC implementation that employs dynamic voltage-frequency scaling and parallel processing that achieves measured energy efficiency ranging between 11.9 GOPS/mW and 13.6 GOPS/mW for full channel feature extraction, resulting in power consumption of 20.1-22.6 mW depending on the number of signals and signal bandwidth. The system bandwidth is selectable at 5, 50, and 500 MHz; in the 500 MHz case an efficient analog 8-point FFT channelizer relaxes the A/D requirement. The sensor can blindly detect and process up to 32 concurrent non-overlapping signals, with a variety of signal characteristics including single- vs. multi-carrier discrimination, carrier detection and estimation, and modulation classification.
Keywords :
application specific integrated circuits; cognitive radio; fast Fourier transforms; modulation; power aware computing; signal classification; battery budget; blind hierarchical modulation classifier; cognitive radio; dynamic spectrum access techniques; dynamic voltage-frequency scaling; full channel feature extraction; integrated system-on-chip; modulation classification; parallel processing; real-time detection; wideband blind signal classification; wideband mixed-signal front-end; wideband signal sensor; Batteries; Feature extraction; Frequency estimation; Frequency modulation; Integrated circuits; Noise measurement; OFDM; Wideband;
Journal_Title :
Communications Magazine, IEEE
DOI :
10.1109/MCOM.2015.7295481