2018
DOI: 10.1109/access.2018.2843783
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Sparse Channel Estimation for Massive MIMO-OFDM Systems Over Time-Varying Channels

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Cited by 40 publications
(17 citation statements)
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“…where H n ∈ C M r ×M t is the MIMO channel matrix associated with the n-th OFDM subcarrier. Here, we assume that the channel matrices {H n } are perfectly known at the BS, which can be determined by exploiting the channel reciprocity [14], [15] of time division multiplexing (TDD) systems. It can be easily verified that the ZF has a high computational complexity [16], [17] since it needs to compute large-scale pseudo-inverse matrix.…”
Section: B Multi-user Precoding Schemementioning
confidence: 99%
“…where H n ∈ C M r ×M t is the MIMO channel matrix associated with the n-th OFDM subcarrier. Here, we assume that the channel matrices {H n } are perfectly known at the BS, which can be determined by exploiting the channel reciprocity [14], [15] of time division multiplexing (TDD) systems. It can be easily verified that the ZF has a high computational complexity [16], [17] since it needs to compute large-scale pseudo-inverse matrix.…”
Section: B Multi-user Precoding Schemementioning
confidence: 99%
“…Paper [5], [27] considered the hidden joint common and individual sparsity in angle domain among the user channel matrices due to the shared local scatterers in the physical propagation environment. A nonorthogonal downlink pilot design was proposed in [8], [12], [14], [28] by exploiting the spatially common sparsity in angle domain and time correlation of massive MIMO channels. The channel sparsity in angle domain with partial support information was utilized in [29], [30] to acquire compressed CSI.…”
Section: A Related Workmentioning
confidence: 99%
“…which represents the corresponding power matrix of H defined in (11) and (12) and their corresponding power matrices satisfy similar expressions as in (13) and (14).…”
Section: Channel Estimation With Psapsmentioning
confidence: 99%