The International Arab Journal of Information Technology (IAJIT)

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Multiuser Detection with Neural Network MAI Detector in CDMA Systems for AWGN and

In this study, the performance of the proposed rece iver with the neural network Multiple Access Interference (MAI) detector is compared with the matched filter bank ( classical receiver), neural network that detects user's signal and single user bound for Additive White Gaussian Noise (AWGN) and Rayleigh fading asynchronous channels by computer simulations. There are a lot of study in the literature that com pare the neural network receiver and other methods. These neural network receivers detect the user bits after the matched fi lter. In this study, MAI is detected after the matched filter with the proposed neural network receiver and then user bits are obta ined by subtracting MAI from the matched filter out put. The proposed receiver with the neural network MAI detector has got better Bit Error Rate (BER) performance than th e neural network that detects user`s signal in AWGN and Rayleigh fading a synchronous channels for Signal Noise Ratio (SNR) simulations, and in AWGN asynchronous channels for the number of users simulations, although both have the same complexity. However, both have almost same BER performance in AWGN and Raylei gh fading asynchronous channels for Near Far Ratio (NFR) simulations, and in Rayleigh fading asynchronous ch annels for the number of users simulations.


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