Low-Overhead Hierarchically-Sparse Channel Estimation for Multiuser Wideband Massive MIMO
Gerhard Wunder, Stelios Stefanatos, Axel Flinth, Ingo Roth, and, Giuseppe Caire

TL;DR
This paper introduces a low-overhead, hierarchically-sparse channel estimation method for multiuser wideband massive MIMO systems, providing analytical guarantees and demonstrating improved performance over traditional compressive sensing techniques.
Contribution
It proposes a novel hierarchical sparsity-based channel estimator with rigorous performance guarantees, reducing pilot overhead and enhancing system capacity in wideband massive MIMO.
Findings
Pilot overhead is independent of user sparsity and active users for large antenna arrays.
The proposed method outperforms conventional CS algorithms in simulations.
Analytical scaling laws relate pilot overhead to system parameters.
Abstract
The problem of excessive pilot overhead required for uplink massive MIMO channel estimation is well known, let alone when it is considered along with wideband (OFDM) transmissions. Towards channel estimators that are both efficient and require low-training overhead, compressive sensing (CS) approaches have been increasingly popular, exploiting the sparse nature of the physical channel. However, no analytical insights regarding the overhead required for reliable channel estimation in wideband massive MIMO are available. By observing that the wideband massive MIMO channel can be represented by a vector that is not simply sparse but has well defined structural properties, referred to as hierarchical sparsity, we propose low complexity channel estimators for the multiuser scenario that take this property into account. By employing the framework of the hierarchical restricted isometry…
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