2024
DOI: 10.1109/tmlcn.2024.3377174
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SICNN: Soft Interference Cancellation Inspired Neural Network Equalizers

Stefan Baumgartner,
Oliver Lang,
Mario Huemer

Abstract: In recent years data-driven machine learning approaches have been extensively studied to replace or enhance traditionally model-based processing in digital communication systems. In this work, we focus on equalization and propose a novel neural network (NN-)based approach, referred to as SICNN. SICNN is designed by deep unfolding a model-based iterative soft interference cancellation (SIC) method. It eliminates the main disadvantages of its model-based counterpart, which suffers from high computational complex… Show more

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