TY - JOUR T1 - GGD model of extrinsic information with dynamic parameter assignment for turbo decoder. JF - IEEE Transactions on wireless communications A1 - Fengfan Yang LA - English UL - https://tuklas.up.edu.ph/Record/UP-99796217609625035 AB - This letter proposes a strategy using a generalized Gaussian distribution (GGD) to characterize the extrinsic information generated from the constituent maximum a posteriori (MAP) decoders in order to improve the performance of an iterative turbo decoder for finite block lengths. A matching technique based on the measured moments and distance criterion is introduced to dynamically select the appropriate parameters of the GGD model for the extrinsic information in each iteration. The simulation results indicate that the proposed strategy can offer performance gain in medium block lengths over both additive white Gaussian noise and Rayleigh-fading channels. KW - Rayleigh-fading channel. KW - Additive white Gaussian noise channel. KW - Finite block length. KW - Generalized Gaussian distribution. KW - Iterative turbo decoder. KW - Matching technique. KW - Maximum a posteriori decoder. ER -