This paper presents a novel radio frequency (RF) beam training algorithm for sparse multiple input multiple output (MIMO) channels using unitary RF beamforming codebooks at transmitter (Tx) and receiver (Rx). The algorithm leverages statistical knowledge from past beam data for expedited beam search with statistically-minimal training overheads. Beams are tested in the order of their ranks based on their probabilities for providing a communication link. For low beam entropy scenarios, statistically-ranked beam search performs excellent in reducing the average number of beam tests per Tx-Rx beam pair identification for a communication link. For high beam entropy cases, a hybrid algorithm involving both memory-assisted statistically-ranked (M...
In this paper, we consider a prospective receiving hybrid beamforming structure consisting of severa...
In this paper, we have optimize specificities with the use of massive MIMO in 5 G systems. Massive M...
In this paper, the problem of sequential beam construction and adaptive channel estimation based on ...
In this paper, we obtain and study typical beam entropy values for millimetre wave (mm-wave) channel...
We consider the problem of channel estimation and joint active and passive beamforming for reconfigu...
Conference: 15th IEEE International Wireless Communications and Mobile Computing Conference (IEEE IW...
This paper proposes a novel hardware beamforming architecture, which is capable of utilizing a diffe...
Most research in the area of machine learning-based user beam selection considers a structure where ...
In this paper, we investigate the applicability of deep and machine learning (ML/DL) techniques to b...
In this paper, we investigate channel acquisition for high frequency (HF) skywave massive multiple-i...
Millimeter wave communications, equipped with large-scale antenna arrays, are able to provide Gbps d...
Cell-free massive MIMO systems consist of many distributed access points with simple components that...
Extremely large-scale multiple-input multiple-output (XL-MIMO) promises to provide ultrahigh data ra...
Mm-wave MIMO communication makes a hybrid combination of analog RF and digital baseband processing m...
In this article, we propose a machine learning (ML)-assisted beam selection framework that leverages...
In this paper, we consider a prospective receiving hybrid beamforming structure consisting of severa...
In this paper, we have optimize specificities with the use of massive MIMO in 5 G systems. Massive M...
In this paper, the problem of sequential beam construction and adaptive channel estimation based on ...
In this paper, we obtain and study typical beam entropy values for millimetre wave (mm-wave) channel...
We consider the problem of channel estimation and joint active and passive beamforming for reconfigu...
Conference: 15th IEEE International Wireless Communications and Mobile Computing Conference (IEEE IW...
This paper proposes a novel hardware beamforming architecture, which is capable of utilizing a diffe...
Most research in the area of machine learning-based user beam selection considers a structure where ...
In this paper, we investigate the applicability of deep and machine learning (ML/DL) techniques to b...
In this paper, we investigate channel acquisition for high frequency (HF) skywave massive multiple-i...
Millimeter wave communications, equipped with large-scale antenna arrays, are able to provide Gbps d...
Cell-free massive MIMO systems consist of many distributed access points with simple components that...
Extremely large-scale multiple-input multiple-output (XL-MIMO) promises to provide ultrahigh data ra...
Mm-wave MIMO communication makes a hybrid combination of analog RF and digital baseband processing m...
In this article, we propose a machine learning (ML)-assisted beam selection framework that leverages...
In this paper, we consider a prospective receiving hybrid beamforming structure consisting of severa...
In this paper, we have optimize specificities with the use of massive MIMO in 5 G systems. Massive M...
In this paper, the problem of sequential beam construction and adaptive channel estimation based on ...