EURASIP Journal on Advances in Signal Processing (Sep 2004)

Use of Time-Frequency Analysis and Neural Networks for Mode Identification in a Wireless Software-Defined Radio Approach

  • Matteo Gandetto,
  • Marco Guainazzo,
  • Carlo S. Regazzoni

DOI
https://doi.org/10.1155/S1687617204407057
Journal volume & issue
Vol. 2004, no. 12
pp. 1778 – 1790

Abstract

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The use of time-frequency distributions is proposed as a nonlinear signal processing technique that is combined with a pattern recognition approach to identify superimposed transmission modes in a reconfigurable wireless terminal based on software-defined radio techniques. In particular, a software-defined radio receiver is described aiming at the identification of two coexistent communication modes: frequency hopping code division multiple access and direct sequence code division multiple access. As a case study, two standards, based on the previous modes and operating in the same band (industrial, scientific, and medical), are considered: IEEE WLAN 802.11b (direct sequence) and Bluetooth (frequency hopping). Neural classifiers are used to obtain identification results. A comparison between two different neural classifiers is made in terms of relative error frequency.

Keywords