Channel estimation and signal detection with model-driven deep learning for massive multiuser MIMO-OFDM systems
dc.contributor.advisor
Arslan, Tughrul
dc.contributor.advisor
Thompson, John
dc.contributor.author
Liu, Changjiang
dc.date.accessioned
2023-07-19T11:54:54Z
dc.date.available
2023-07-19T11:54:54Z
dc.date.issued
2023-07-19
dc.description.abstract
The emerging fifth generation (5G) and beyond wireless systems raise requirements
on improved coverage, lower latency, higher data rates, and energy efficiency. These
improvements can be provided by massive Multiple-Input Multiple-Output (MIMO),
which is one of the essential technologies of 5G. However, due to a large number of
antennas and radio frequency chains, the receiver design for massive MIMO systems
becomes more challenging. Moreover, non-linear effects in communication systems
like hardware impairment are hard to be modeled. Since conventional solutions
struggle to address these challenges, deep learning (DL) is considered as a promising
approach for the sixth generation cellular systems. The application of DL in the
physical layer is still in a nascent stage. Most prior DL-based receivers are purely
data-driven and aim mainly for performance improvement. By contrast, model-driven
DL-based massive MIMO receivers can potentially achieve lower complexity, better
interpretability and robustness by introducing expert knowledge, but this is not
yet well-investigated in the literature. This PhD thesis focuses on designing lowcomplexity
channel estimation and signal detection schemes with the application
of model-driven DL techniques for massive MIMO orthogonal frequency-division
multiplexing (OFDM) systems.
Firstly, a novel model-aided DL-based OFDM receiver, which integrates a convolutional
neural network (CNN)-based channel estimator and a signal detection neural
network (SD-NN), is proposed. By exploiting channel correlations in the time and
frequency domain, the proposed CNN-based scheme can efficiently denoise and
refine the image-like low-resolution channel with time-variant and frequency-selective
effects. Then, the explicit channel information from the CNN is processed by a modelbased
equalizer, and the output is used as a proper initialization for SD-NN. Moreover,
several data preprocessing and model tuning strategies are developed to improve
detection performance. As a result, unlike the data-driven solutions viewing the whole
receiver as a black box, the proposed model-aided DL architecture achieves lower
complexity and faster convergence with only a small number of pilots.
Secondly, considering the complexity problem of generic NN architectures in massive
MIMO-OFDM systems, an efficient deep unfolding (DU)-based detection network is
developed. Based on the domain knowledge of MIMO detection, the alternating direction
method of multipliers (ADMM)-based network skeleton is first derived. To get a
specialized architecture with improved model flexibility for DU-based MIMO-OFDM
detection, the over-relaxation parameter and an additional step size are added to the
network skeleton.With the help of DU techniques, the sets of trainable parameters can
be optimized explicitly for different subcarriers to enhance the detection performance
under realistic channels with severe spatial and frequency correlations. Furthermore,
a differentiable projection function is designed to enable learning-based parameter
optimization. Compared to existing baselines in the literature, the proposed approach
can provide a better performance-complexity trade-off, especially for the cases of high
user load and real-world correlated channels.
Thirdly, for high-loaded massive MIMO systems with large numbers of users, a
frequency-orthogonal pilot scheme is designed to save time resources used for pilot
transmission. By a special subtractive residual layer, the proposed denoising CNN
learns the denoising mapping to eliminate channel noise in the delay domain instead
of learning the labeled channel matrices directly. To further improve estimation
performance, a residual CNN is proposed to exploit spatial-frequency correlations of
channels and refine the output of the denoising CNN. With the help of a customized
fast Fourier transform layer, these two CNNs can be jointly trained across different
domains, resulting in an end-to-end channel estimation network. This dual CNN-based
estimator is shown to achieve state-of-the-art performance and fast convergence with
lower complexity than baseline approaches.
Finally, the research is extended to massive MIMO-OFDM systems with low-precision
analog-to-digital converters (ADCs). To accurately detect the received signals with
severe non-linear distortions under such complex systems, a novel model-driven
detection network is proposed. Since well-established architectures like ADMM can
not handle errors of coarse quantization, a flexible non-linear estimator is first derived
to replace the general x-update of ADMM. Specifically, the scalar step size is upgraded
to a learnable vector used as the multiplicative gradient correction, and an additive
gradient correction is also added. Correspondingly, a specialized network skeleton with
multiple trainable parameters and an adaptive proximal operator is designed. By fusing
the model-based architecture and data-driven techniques, the proposed scheme shows
superior detection performance and robustness in coarsely quantized massive multiuser
MIMO-OFDM systems.
en
dc.identifier.uri
https://hdl.handle.net/1842/40801
dc.identifier.uri
http://dx.doi.org/10.7488/era/3557
dc.language.iso
en
en
dc.publisher
The University of Edinburgh
en
dc.relation.hasversion
Changjiang Liu, John Thompson, and Tughrul Arslan, “OFDM Receivers with Semi-Blind Channel Estimation based on Deep Neural Networks,” IEEE Transactions on Cognitive Communications and Networking, 2022. (Under Review)
en
dc.relation.hasversion
Changjiang Liu, John Thompson, and Tughrul Arslan, “Deep Learning Based Receivers for Massive MIMO OFDM Systems with High User Load,” IEEE Transactions on Wireless Communications, 2022. (Under Review)
en
dc.relation.hasversion
Changjiang Liu, and Tughrul Arslan, “RecNet: Deep learning-based OFDM receiver with semi-blind channel estimation,” in 2020 IEEE International Symposium on Circuits and Systems (ISCAS), 2020, pp. 1–4.
en
dc.relation.hasversion
Changjiang Liu, John Thompson, and Tughrul Arslan, “A Deep Unfolding Network for Massive Multi-user MIMO-OFDM Detection,” in 2022 IEEE Wireless Communications and Networking Conference (WCNC), 2022, pp. 2405-2410.
en
dc.relation.hasversion
Changjiang Liu, John Thompson, and Tughrul Arslan, “Deep Unfolding-based Detection for Quantized Massive MU-MIMO-OFDM Systems,” in 2022 IEEE 95th Vehicular Technology Conference: (VTC2022-Spring), 2022, pp. 1-5.
en
dc.subject
massive multiuser MIMO-OFDM systems
en
dc.subject
Channel estimation
en
dc.subject
signal detection
en
dc.subject
fifth generation (5G) and beyond wireless systems
en
dc.subject
Multiple-Input Multiple-Output (MIMO)
en
dc.subject
deep learning (DL)
en
dc.subject
sixth generation cellular systems
en
dc.subject
lowcomplexity channel estimation
en
dc.subject
orthogonal frequency-division multiplexing (OFDM) systems
en
dc.subject
convolutional neural network (CNN)
en
dc.subject
signal detection neural network (SD-NN)
en
dc.subject
alternating direction method of multipliers (ADMM)
en
dc.subject
analog-to-digital converters (ADCs)
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dc.title
Channel estimation and signal detection with model-driven deep learning for massive multiuser MIMO-OFDM systems
en
dc.type
Thesis or Dissertation
en
dc.type.qualificationlevel
Doctoral
en
dc.type.qualificationname
PhD Doctor of Philosophy
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