Continuous phase modulation receiver design with artificial neural network

The aim of this study is to develop neural network based receiver structures for constant envelope continuous phase modulation (CPM) systems. A feedforward network computation with these back-propagation neural networks was used for this purpose. We present the simulation results of the binary system outputs for the inphase and quadrature components.

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