Song Kim, Joan Adrià Ruiz De Azua, Hyuk Park, Jae-Hyun Kim
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Design of 4D-8PSK-TCM with Hybrid T-Algorithm based on Deep Learning
The consultative committee for space data system recommended the 4-dimension 8-ary phase shift keying trellis coded modulation (4D-8PSK-TCM). The 4D-8PSK-TCM has the advantage of low decoding latency over iterative error correction codes. The T-algorithm, which makes feasible to eliminate unnecessary additions and comparisons, can be applided to the 4D-8PSK-TCM to lower the decoding complexity. In this paper, we design the 4D-8PSK-TCM simulator with Hybrid T-algorithm based on deep learning to lower decoding complexity. The deep neural network predicts threshold of branch metric and path metric. Simulation results validate that the designed 4D-8PSK-TCM has lower complexity than the ideal 4D-8PSK-TCM while it maintain bit error rate performance of the ideal 4D-8PSK-TCM.