Parallel APSM for Fast and Adaptive Digital SIC in Full-Duplex
Transceivers with Nonlinearity
- URL: http://arxiv.org/abs/2207.05461v1
- Date: Tue, 12 Jul 2022 11:17:22 GMT
- Title: Parallel APSM for Fast and Adaptive Digital SIC in Full-Duplex
Transceivers with Nonlinearity
- Authors: M. Hossein Attar, Omid Taghizadeh, Kaxin Chang, Ramez Askar, Matthias
Mehlhose, Slawomir Stanczak
- Abstract summary: kernel-based adaptive filter is applied for the digital digital domain self-interference cancellation (SIC) in transceiver in full (FD) mode.
They demonstrate that the kernel-based algorithm achieves a favorable level of digital SIC while enabling parallel computation-based implementation within a rich and nonlinear function space.
- Score: 19.534700035048637
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: This paper presents a kernel-based adaptive filter that is applied for the
digital domain self-interference cancellation (SIC) in a transceiver operating
in full-duplex (FD) mode. In FD, the benefit of simultaneous transmission and
receiving of signals comes at the price of strong self-interference (SI). In
this work, we are primarily interested in suppressing the SI using an adaptive
filter namely adaptive projected subgradient method (APSM) in a reproducing
kernel Hilbert space (RKHS) of functions. Using the projection concept as a
powerful tool, APSM is used to model and consequently remove the SI. A
low-complexity and fast-tracking algorithm is provided taking advantage of
parallel projections as well as the kernel trick in RKHS. The performance of
the proposed method is evaluated on real measurement data. The method
illustrates the good performance of the proposed adaptive filter, compared to
the known popular benchmarks. They demonstrate that the kernel-based algorithm
achieves a favorable level of digital SIC while enabling parallel
computation-based implementation within a rich and nonlinear function space,
thanks to the employed adaptive filtering method.
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