Title :
Neural network applications for jamming state information generator
Author :
Kwon, Hyuck M. ; Schaefer, Lawrence T.
Author_Institution :
Lockheed Eng. & Sci. Co., Houston, TX, USA
fDate :
9/1/1994 12:00:00 AM
Abstract :
A known jamming state information (JSI) scheme for a coded frequency-hopped M-ary frequency-shift-keying (FH/MFSK) system under partial-band noise jamming, plus additive white Gaussian noise, utilizes the maximum a posteriori (MAP) rule based on the total energy received in the M-tone signaling bands. It is assumed that the knowledge of partial-band noise jamming fraction is available to the JSI generator. Because this scheme reduces the M-dimensional information into one dimension, i.e., the total energy, the generated JSI may not be the best. In this paper, a neural network approach to the JSI generation is presented. The efficiency of the new JSI generator with known partial-band noise jamming fraction is compared with the MAP generator. The neural network scheme is then generalized to increase its robustness by allowing for an unknown partial-band noise jamming fraction. The neural network JSI generator with or even without knowledge of jamming fraction offers significantly better performance for a coded FH/MFSK communication system than the MAP JSI generator for high code rate
Keywords :
frequency agility; frequency shift keying; jamming; neural nets; spread spectrum communication; telecommunications computing; white noise; M-tone signaling bands; MAP generator; additive white Gaussian noise; coded FH/MFSK communication system; coded frequency-hopped M-ary; efficiency; frequency-shift-keying; jamming fraction; jamming state information generator; maximum a posteriori rule; neural network; partial-band noise jamming; Additive white noise; Communication systems; Frequency; Gaussian noise; Jamming; Multi-layer neural network; Neural networks; Noise generators; Noise robustness; Signal processing;
Journal_Title :
Neural Networks, IEEE Transactions on