Title :
Neural network techniques for adaptive multiuser demodulation
Author :
Mitra, U. ; Poor, H. Vincent
Author_Institution :
Dept. of Electr. Eng., Ohio State Univ., Columbus, OH, USA
fDate :
12/1/1994 12:00:00 AM
Abstract :
Adaptive methods for performing multiuser demodulation in a direct-sequence spread-spectrum multiple-access (DS/SSMA) communication environment are investigated. In this scenario, the noise is characterized as being the sum of the interfering users´ signals and additive Gaussian noise. The optimal receiver for DS/SSMA systems has a complexity that is exponential in the number of users. This prohibitive complexity has spawned the area of research on suboptimal receivers with moderate complexity. Adaptive algorithms for detection allow for reception when the communication environment is either unknown or changing. Motivated by previous work with radial basis functions (RBF´s) for performing equalization, RBF networks that operate with knowledge of only a subset of the system parameters are studied. Although this form of detection has been previously studied (group detection) when the system parameters are known, in this work, neural network techniques are employed to adaptively determine unknown system parameters. This approach is further bolstered by the fact that the optimal detector in the synchronous case can be implemented by a RBF network when all of the system parameters are known. The RBF network´s performance (with estimated parameters) is compared with the optimal synchronous detector, the decorrelating detector and the single layer perceptron detector. Clustering techniques and adaptive least mean squares methods are investigated to determine the unknown system parameters. This work shows that the adaptive radial basis function network attains near optimal performance and is robust in realistic communication environments
Keywords :
Gaussian noise; adaptive signal detection; code division multiple access; demodulation; feedforward neural nets; pseudonoise codes; spread spectrum communication; DS/SSMA; RBF networks; adaptive algorithms; adaptive least mean squares methods; adaptive multiuser demodulation; additive Gaussian noise; clustering techniques; decorrelating detector; direct-sequence spread-spectrum multiple-access; equalization; group detection; interfering users signals; neural network techniques; optimal detector; optimal receiver; optimal synchronous detector; radial basis functions; single layer perceptron detector; suboptimal receivers; system parameters; Adaptive algorithm; Adaptive systems; Additive noise; Demodulation; Detectors; Gaussian noise; Neural networks; Radial basis function networks; Spread spectrum communication; Working environment noise;
Journal_Title :
Selected Areas in Communications, IEEE Journal on