Deep Learning Based Frequency-Selective Channel Estimation for Hybrid mmWave MIMO Systems
Asmaa Abdallah, Abdulkadir Celik, Mohammad M. Mansour, and Ahmed M., Eltawil

TL;DR
This paper introduces two deep learning-based algorithms for frequency-selective channel estimation in hybrid mmWave MIMO systems, significantly improving accuracy and reducing complexity over traditional methods.
Contribution
The paper proposes novel DL-CS algorithms that learn from training data to enhance channel estimation in wideband mmWave MIMO systems with frequency selectivity.
Findings
Outperform conventional OMP in NMSE, complexity, and spectral efficiency.
Reduce NMSE gap to CRLB from 4-10 dB to 1-1.5 dB.
Achieve two orders of magnitude reduction in computational complexity.
Abstract
Millimeter wave (mmWave) massive multiple-input multiple-output (MIMO) systems typically employ hybrid mixed signal processing to avoid expensive hardware and high training overheads. {However, the lack of fully digital beamforming at mmWave bands imposes additional challenges in channel estimation. Prior art on hybrid architectures has mainly focused on greedy optimization algorithms to estimate frequency-flat narrowband mmWave channels, despite the fact that in practice, the large bandwidth associated with mmWave channels results in frequency-selective channels. In this paper, we consider a frequency-selective wideband mmWave system and propose two deep learning (DL) compressive sensing (CS) based algorithms for channel estimation.} The proposed algorithms learn critical apriori information from training data to provide highly accurate channel estimates with low training overhead. In…
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