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arxiv: 1905.10890 · v1 · pith:7VDMXVSAnew · submitted 2019-05-26 · 📡 eess.SP · cs.IT· math.IT

Deep-Neural-Network based Fall-back Mechanism in Interference-Aware Receiver Design

classification 📡 eess.SP cs.ITmath.IT
keywords fall-backmechanismslicdesigneircreceiverbetterdeep-neural-network
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In this letter, we consider designing a fall-back mechanism in an interference-aware receiver. Typically, there are two different manners of dealing with interference, known as enhanced interference-rejection-combining (eIRC) and symbol-level interference-cancellation (SLIC). Although SLIC performs better than eIRC, it has higher complexity and requires the knowledge of modulation-format (MF) of interference. Due to potential errors in MF detection, SLIC can run with a wrong MF and render limited gains. Therefore, designing a fall-back mechanism is of interest that only activates SLIC when the detected MF is reliable. Otherwise, a fall-back happens and the receiver turns to eIRC. Finding a closed-form expression of an optimal fall-back mechanism seems difficult, and we utilize deep-neural-network (DNN) to design it which is shown to be effective and performs better than a traditional Bayes-risk based design in terms of reducing error-rate and saving computational-cost.

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