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arxiv: 1812.00449 · v1 · pith:YIQMC5T3new · submitted 2018-12-02 · 📡 eess.SP

Design and Implementation of a Neural Network Aided Self-Interference Cancellation Scheme for Full-Duplex Radios

classification 📡 eess.SP
keywords self-interferencecancellationcancellerhardwarenetworkneuralfull-dupleximplementation
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In-band full-duplex systems are able to transmit and receive information simultaneously on the same frequency band. Due to the strong self-interference caused by the transmitter to its own receiver, the use of non-linear digital self-interference cancellation is essential. In this work, we present a hardware architecture for a neural network based non-linear self-interference canceller and we compare it with our own hardware implementation of a conventional polynomial based canceller. We show that, for the same cancellation performance, the neural network canceller has a significantly higher throughput and requires fewer hardware resources.

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