2020
DOI: 10.3390/app10124397
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Precise Channel Estimation Approach for a mmWave MIMO System

Abstract: Channel estimation is a formidable challenge in mmWave Multiple Input Multiple Output (MIMO) systems due to the large number of antennas. Therefore, compressed sensing (CS) techniques are used to exploit channel sparsity at mmWave frequencies to calculate fewer dominant paths in mmWave channels. However, conventional CS techniques require a higher training overhead for efficient recovery. In this paper, an efficient extended alternation direction method of multipliers (Ex-ADMM) is proposed for mmWave channel e… Show more

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Cited by 6 publications
(8 citation statements)
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“…After the initial transmission, the received signal matrix Y at the receiver’s end can be determined as: where, the received signal matrix is the combination of different received vectors, i.e., , alike Y the combining matrix W and precoding matrix F is also representing by the set of different combining and precoding vectors i.e., and , respectively. Here, is the set of transmitted vectors, A is the channel matrix and are independent and identically distributed (I.I.D) complex additive white gaussian noise (AWGN), with zero mean and [ 34 ]. For the simplicity of the system, let’s consider that the all pilot symbols are identically similar, therefore, one can assume that .…”
Section: System Modelmentioning
confidence: 99%
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“…After the initial transmission, the received signal matrix Y at the receiver’s end can be determined as: where, the received signal matrix is the combination of different received vectors, i.e., , alike Y the combining matrix W and precoding matrix F is also representing by the set of different combining and precoding vectors i.e., and , respectively. Here, is the set of transmitted vectors, A is the channel matrix and are independent and identically distributed (I.I.D) complex additive white gaussian noise (AWGN), with zero mean and [ 34 ]. For the simplicity of the system, let’s consider that the all pilot symbols are identically similar, therefore, one can assume that .…”
Section: System Modelmentioning
confidence: 99%
“…According to the geometric virtual (GV) model of mmWave MIMO system explained in [ 12 , 18 ], Equation (2) can be further elaborated as: where, denotes the total number of propagation paths, expressing the complex channel gain of the l-th path, and it can be obtained from the random complex Gaussian distributions, and . and are the array response vectors (ARV) at the transmitters and receivers, respectively [ 34 ] (see the references therein). and are the elevation and azimuth AoA and AoD angles at the transmitters and receivers, respectively [ 34 ] (see the references therein).…”
Section: System Modelmentioning
confidence: 99%
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