Matches in SemOpenAlex for { <https://semopenalex.org/work/W2227790250> ?p ?o ?g. }
Showing items 1 to 100 of
100
with 100 items per page.
- W2227790250 abstract "Massive MIMO is a variant of multiuser MIMO where the number of base-station antennas $M$ is very large (typically 100), and generally much larger than the number of spatially multiplexed data streams (typically 10). Unfortunately, the front-end A/D conversion necessary to drive hundreds of antennas, with a signal bandwidth of the order of 10 to 100 MHz, requires very large sampling bit-rate and power consumption. In order to reduce such implementation requirements, Hybrid Digital-Analog architectures have been proposed. In particular, our work in this paper is motivated by one of such schemes named Joint Spatial Division and Multiplexing (JSDM), where the downlink precoder (resp., uplink linear receiver) is split into the product of a baseband linear projection (digital) and an RF reconfigurable beamforming network (analog), such that only a reduced number $m ll M$ of A/D converters and RF modulation/demodulation chains is needed. In JSDM, users are grouped according to the similarity of their channel dominant subspaces, and these groups are separated by the analog beamforming stage, where the multiplexing gain in each group is achieved using the digital precoder. Therefore, it is apparent that extracting the channel subspace information of the $M$-dim channel vectors from snapshots of $m$-dim projections, with $m ll M$, plays a fundamental role in JSDM implementation. In this paper, we develop novel efficient algorithms that require sampling only $m = O(2sqrt{M})$ specific array elements according to a coprime sampling scheme, and for a given $p ll M$, return a $p$-dim beamformer that has a performance comparable with the best p-dim beamformer that can be designed from the full knowledge of the exact channel covariance matrix. We assess the performance of our proposed estimators both analytically and empirically via numerical simulations." @default.
- W2227790250 created "2016-06-24" @default.
- W2227790250 creator A5034537543 @default.
- W2227790250 creator A5058252389 @default.
- W2227790250 date "2015-09-24" @default.
- W2227790250 modified "2023-09-27" @default.
- W2227790250 title "Channel Vector Subspace Estimation from Low-Dimensional Projections" @default.
- W2227790250 cites W1974718273 @default.
- W2227790250 cites W1974774078 @default.
- W2227790250 cites W1988828143 @default.
- W2227790250 cites W2001729062 @default.
- W2227790250 cites W2015301486 @default.
- W2227790250 cites W2035750833 @default.
- W2227790250 cites W2044593797 @default.
- W2227790250 cites W2084304524 @default.
- W2227790250 cites W2088212435 @default.
- W2227790250 cites W2103519107 @default.
- W2227790250 cites W2103972604 @default.
- W2227790250 cites W2118550318 @default.
- W2227790250 cites W2119499160 @default.
- W2227790250 cites W2129638195 @default.
- W2227790250 cites W2133285942 @default.
- W2227790250 cites W2137628444 @default.
- W2227790250 cites W2141682101 @default.
- W2227790250 cites W2147601077 @default.
- W2227790250 cites W2158057034 @default.
- W2227790250 cites W2160107665 @default.
- W2227790250 cites W2163985430 @default.
- W2227790250 cites W2163994287 @default.
- W2227790250 cites W2164390589 @default.
- W2227790250 cites W2171342189 @default.
- W2227790250 cites W2396808528 @default.
- W2227790250 cites W2611328865 @default.
- W2227790250 cites W2950164862 @default.
- W2227790250 cites W2952040794 @default.
- W2227790250 cites W2964325628 @default.
- W2227790250 cites W3210839039 @default.
- W2227790250 hasPublicationYear "2015" @default.
- W2227790250 type Work @default.
- W2227790250 sameAs 2227790250 @default.
- W2227790250 citedByCount "6" @default.
- W2227790250 countsByYear W22277902502016 @default.
- W2227790250 countsByYear W22277902502017 @default.
- W2227790250 countsByYear W22277902502018 @default.
- W2227790250 crossrefType "posted-content" @default.
- W2227790250 hasAuthorship W2227790250A5034537543 @default.
- W2227790250 hasAuthorship W2227790250A5058252389 @default.
- W2227790250 hasConcept C11413529 @default.
- W2227790250 hasConcept C127413603 @default.
- W2227790250 hasConcept C138660444 @default.
- W2227790250 hasConcept C19275194 @default.
- W2227790250 hasConcept C207987634 @default.
- W2227790250 hasConcept C24326235 @default.
- W2227790250 hasConcept C2776257435 @default.
- W2227790250 hasConcept C41008148 @default.
- W2227790250 hasConcept C54197355 @default.
- W2227790250 hasConcept C65165936 @default.
- W2227790250 hasConcept C76155785 @default.
- W2227790250 hasConcept C85884896 @default.
- W2227790250 hasConcept C91330434 @default.
- W2227790250 hasConceptScore W2227790250C11413529 @default.
- W2227790250 hasConceptScore W2227790250C127413603 @default.
- W2227790250 hasConceptScore W2227790250C138660444 @default.
- W2227790250 hasConceptScore W2227790250C19275194 @default.
- W2227790250 hasConceptScore W2227790250C207987634 @default.
- W2227790250 hasConceptScore W2227790250C24326235 @default.
- W2227790250 hasConceptScore W2227790250C2776257435 @default.
- W2227790250 hasConceptScore W2227790250C41008148 @default.
- W2227790250 hasConceptScore W2227790250C54197355 @default.
- W2227790250 hasConceptScore W2227790250C65165936 @default.
- W2227790250 hasConceptScore W2227790250C76155785 @default.
- W2227790250 hasConceptScore W2227790250C85884896 @default.
- W2227790250 hasConceptScore W2227790250C91330434 @default.
- W2227790250 hasLocation W22277902501 @default.
- W2227790250 hasOpenAccess W2227790250 @default.
- W2227790250 hasPrimaryLocation W22277902501 @default.
- W2227790250 hasRelatedWork W1491490124 @default.
- W2227790250 hasRelatedWork W2015301486 @default.
- W2227790250 hasRelatedWork W2035750833 @default.
- W2227790250 hasRelatedWork W2088212435 @default.
- W2227790250 hasRelatedWork W2141682101 @default.
- W2227790250 hasRelatedWork W2147601077 @default.
- W2227790250 hasRelatedWork W2152136779 @default.
- W2227790250 hasRelatedWork W2198911682 @default.
- W2227790250 hasRelatedWork W2296616510 @default.
- W2227790250 hasRelatedWork W2518978813 @default.
- W2227790250 hasRelatedWork W2603051828 @default.
- W2227790250 hasRelatedWork W2739324738 @default.
- W2227790250 hasRelatedWork W2741703710 @default.
- W2227790250 hasRelatedWork W2790799365 @default.
- W2227790250 hasRelatedWork W2937277281 @default.
- W2227790250 hasRelatedWork W2962739446 @default.
- W2227790250 hasRelatedWork W2963048054 @default.
- W2227790250 hasRelatedWork W2963985636 @default.
- W2227790250 hasRelatedWork W2969648422 @default.
- W2227790250 hasRelatedWork W3163584937 @default.
- W2227790250 isParatext "false" @default.
- W2227790250 isRetracted "false" @default.
- W2227790250 magId "2227790250" @default.
- W2227790250 workType "article" @default.