Hybrid-Layers Neural Network Architectures for Modeling the Self-Interference in Full-Duplex Systems
Mohamed Elsayed, Ahmad A. Aziz El-Banna, Octavia A. Dobre, Wanyi Shiu,, and Peiwei Wang

TL;DR
This paper introduces two innovative hybrid-layer neural network architectures, HCRNN and HCRDNN, designed to efficiently cancel self-interference in full-duplex wireless systems with lower complexity than existing methods.
Contribution
The paper proposes novel hybrid-layer neural network architectures that combine convolutional, recurrent, and dense layers for low-complexity self-interference cancellation in full-duplex systems.
Findings
The proposed architectures outperform polynomial cancelers in complexity and effectiveness.
Numerical simulations demonstrate superior SI cancellation performance.
Complexity analysis confirms reduced computational requirements.
Abstract
Full-duplex (FD) systems have been introduced to provide high data rates for beyond fifth-generation wireless networks through simultaneous transmission of information over the same frequency resources. However, the operation of FD systems is practically limited by the self-interference (SI), and efficient SI cancelers are sought to make the FD systems realizable. Typically, polynomial-based cancelers are employed to mitigate the SI; nevertheless, they suffer from high complexity. This article proposes two novel hybrid-layers neural network (NN) architectures to cancel the SI with low complexity. The first architecture is referred to as hybrid-convolutional recurrent NN (HCRNN), whereas the second is termed as hybrid-convolutional recurrent dense NN (HCRDNN). In contrast to the state-of-the-art NNs that employ dense or recurrent layers for SI modeling, the proposed NNs exploit, in a…
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Taxonomy
TopicsFull-Duplex Wireless Communications · Radar Systems and Signal Processing · Electromagnetic Compatibility and Measurements
