Deep Learning-based List Sphere Decoding for Faster-than-Nyquist (FTN) Signaling Detection
Sina Abbasi, Ebrahim Bedeer

TL;DR
This paper introduces a deep learning-based list sphere decoding algorithm to efficiently detect Faster-than-Nyquist signals, significantly reducing computational complexity while maintaining detection performance.
Contribution
It proposes a novel DL-LSD method that adaptively selects the initial radius for sphere decoding using neural networks, improving efficiency for FTN signaling detection.
Findings
Reduces detection complexity by orders of magnitude compared to traditional LSD.
Maintains accurate detection with fewer lattice points inside the hypersphere.
Effectively adapts the initial radius based on learned distribution, enhancing performance.
Abstract
Faster-than-Nyquist (FTN) signaling is a candidate non-orthonormal transmission technique to improve the spectral efficiency (SE) of future communication systems. However, such improvements of the SE are at the cost of additional computational complexity to remove the intentionally introduced intersymbol interference. In this paper, we investigate the use of deep learning (DL) to reduce the detection complexity of FTN signaling. To eliminate the need of having a noise whitening filter at the receiver, we first present an equivalent FTN signaling model based on using a set of orthonormal basis functions and identify its operation region. Second, we propose a DL-based list sphere decoding (DL-LSD) algorithm that selects and updates the initial radius of the original LSD to guarantee a pre-defined number of lattice points inside the hypersphere. This is achieved by training…
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Taxonomy
TopicsPAPR reduction in OFDM · Advanced Power Amplifier Design · Advanced Wireless Communication Techniques
