120 research outputs found
Massive Unsourced Random Access: Exploiting Angular Domain Sparsity
This paper investigates the unsourced random access (URA) scheme to accommodate numerous machine-type users communicating to a base station equipped with multiple antennas. Existing works adopt a slotted transmission strategy to reduce system complexity; they operate under the framework of coupled compressed sensing (CCS) which concatenates an outer tree code to an inner compressed sensing code for slot-wise message stitching. We suggest that by exploiting the MIMO channel information in the angular domain, redundancies required by the tree encoder/decoder in CCS can be removed to improve spectral efficiency, thereby an uncoupled transmission protocol is devised. To perform activity detection and channel estimation, we propose an expectation-maximization-aided generalized approximate message passing algorithm with a Markov random field support structure, which captures the inherent clustered sparsity structure of the angular domain channel. Then, message reconstruction in the form of a clustering decoder is performed by recognizing slot-distributed channels of each active user based on similarity. We put forward the slot-balanced K-means algorithm as the kernel of the clustering decoder, resolving constraints and collisions specific to the application scene. Extensive simulations reveal that the proposed scheme achieves a better error performance at high spectral efficiency compared to the CCS-based URA schemes
A Tutorial on Extremely Large-Scale MIMO for 6G: Fundamentals, Signal Processing, and Applications
Extremely large-scale multiple-input-multiple-output (XL-MIMO), which offers
vast spatial degrees of freedom, has emerged as a potentially pivotal enabling
technology for the sixth generation (6G) of wireless mobile networks. With its
growing significance, both opportunities and challenges are concurrently
manifesting. This paper presents a comprehensive survey of research on XL-MIMO
wireless systems. In particular, we introduce four XL-MIMO hardware
architectures: uniform linear array (ULA)-based XL-MIMO, uniform planar array
(UPA)-based XL-MIMO utilizing either patch antennas or point antennas, and
continuous aperture (CAP)-based XL-MIMO. We comprehensively analyze and discuss
their characteristics and interrelationships. Following this, we examine exact
and approximate near-field channel models for XL-MIMO. Given the distinct
electromagnetic properties of near-field communications, we present a range of
channel models to demonstrate the benefits of XL-MIMO. We further motivate and
discuss low-complexity signal processing schemes to promote the practical
implementation of XL-MIMO. Furthermore, we explore the interplay between
XL-MIMO and other emergent 6G technologies. Finally, we outline several
compelling research directions for future XL-MIMO wireless communication
systems.Comment: 38 pages, 10 figure
Joint Location Sensing and Channel Estimation for IRS-Aided mmWave ISAC Systems
In this paper, we investigate a self-sensing intelligent reflecting surface
(IRS) aided millimeter wave (mmWave) integrated sensing and communication
(ISAC) system. Unlike the conventional purely passive IRS, the self-sensing IRS
can effectively reduce the path loss of sensing-related links, thus rendering
it advantageous in ISAC systems. Aiming to jointly sense the
target/scatterer/user positions as well as estimate the sensing and
communication (SAC) channels in the considered system, we propose a two-phase
transmission scheme, where the coarse and refined sensing/channel estimation
(CE) results are respectively obtained in the first phase (using scanning-based
IRS reflection coefficients) and second phase (using optimized IRS reflection
coefficients). For each phase, an angle-based sensing turbo variational
Bayesian inference (AS-TVBI) algorithm, which combines the VBI, messaging
passing and expectation-maximization (EM) methods, is developed to solve the
considered joint location sensing and CE problem. The proposed algorithm
effectively exploits the partial overlapping structured (POS) sparsity and
2-dimensional (2D) block sparsity inherent in the SAC channels to enhance the
overall performance. Based on the estimation results from the first phase, we
formulate a Cram\'{e}r-Rao bound (CRB) minimization problem for optimizing IRS
reflection coefficients, and through proper reformulations, a low-complexity
manifold-based optimization algorithm is proposed to solve this problem.
Simulation results are provided to verify the superiority of the proposed
transmission scheme and associated algorithms
Model-Based Deep Learning
Signal processing, communications, and control have traditionally relied on
classical statistical modeling techniques. Such model-based methods utilize
mathematical formulations that represent the underlying physics, prior
information and additional domain knowledge. Simple classical models are useful
but sensitive to inaccuracies and may lead to poor performance when real
systems display complex or dynamic behavior. On the other hand, purely
data-driven approaches that are model-agnostic are becoming increasingly
popular as datasets become abundant and the power of modern deep learning
pipelines increases. Deep neural networks (DNNs) use generic architectures
which learn to operate from data, and demonstrate excellent performance,
especially for supervised problems. However, DNNs typically require massive
amounts of data and immense computational resources, limiting their
applicability for some signal processing scenarios. We are interested in hybrid
techniques that combine principled mathematical models with data-driven systems
to benefit from the advantages of both approaches. Such model-based deep
learning methods exploit both partial domain knowledge, via mathematical
structures designed for specific problems, as well as learning from limited
data. In this article we survey the leading approaches for studying and
designing model-based deep learning systems. We divide hybrid
model-based/data-driven systems into categories based on their inference
mechanism. We provide a comprehensive review of the leading approaches for
combining model-based algorithms with deep learning in a systematic manner,
along with concrete guidelines and detailed signal processing oriented examples
from recent literature. Our aim is to facilitate the design and study of future
systems on the intersection of signal processing and machine learning that
incorporate the advantages of both domains
A Fully Bayesian Approach for Massive MIMO Unsourced Random Access
In this paper, we propose a novel fully Bayesian approach for the massive
multiple-input multiple-output (MIMO) massive unsourced random access (URA).
The payload of each user device is coded by the sparse regression codes
(SPARCs) without redundant parity bits. A Bayesian model is established to
capture the probabilistic characteristics of the overall system. Particularly,
we adopt the core idea of the model-based learning approach to establish a
flexible Bayesian channel model to adapt the complex environments. Different
from the traditional divide-and-conquer or pilot-based massive MIMO URA
strategies, we propose a three-layer message passing (TLMP) algorithm to
jointly decode all the information blocks, as well as acquire the massive MIMO
channel, which adopts the core idea of the variational message passing and
approximate message passing. We verify that our proposed TLMP significantly
enhances the spectral efficiency compared with the state-of-the-arts baselines,
and is more robust to the possible codeword collisions
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