Title :
Joint Signal and Channel State Information Compression for the Backhaul of Uplink Network MIMO Systems
Author :
Jinkyu Kang ; Simeone, Osvaldo ; Joonhyuk Kang ; Shitz, Shlomo Shamai
Author_Institution :
Dept. of Electr. Eng., Korea Adv. Inst. of Sci. & Technol. (KAIST), Daejeon, South Korea
Abstract :
In network MIMO cellular systems, subsets of base stations (BSs), or remote radio heads, are connected via backhaul links to central units (CUs) that perform joint encoding in the downlink and joint decoding in the uplink. Focusing on the uplink, an effective solution for the communication between BSs and the corresponding CU on the backhaul links is based on compressing and forwarding the baseband received signal from each BS. In the presence of ergodic fading, communicating the channel state information (CSI) from the BSs to the CU may require a sizable part of the backhaul capacity. In a prior work, this aspect was studied by assuming a Compress-Forward-Estimate (CFE) approach, whereby the BSs compress the training signal and CSI estimation takes place at the CU. In this work, instead, an Estimate-Compress-Forward (ECF) approach is investigated, whereby the BSs perform CSI estimation and forward a compressed version of the CSI to the CU. This choice is motivated by the information theoretic optimality of separate estimation and compression. Various ECF strategies are proposed that perform either separate or joint compression of estimated CSI and received signal. Moreover, the proposed strategies are combined with distributed source coding when considering multiple BSs. "Semi-coherent" strategies are also proposed that do not convey any CSI or training information on the backhaul links. Via numerical results, it is shown that a proper design of ECF strategies based on joint received signal and estimated CSI compression or of semi-coherent schemes leads to substantial performance gains compared to more conventional approaches based on non-coherent transmission or the CFE approach.
Keywords :
MIMO communication; cellular radio; decoding; fading channels; signal processing; source coding; BS; CFE approach; CU; ECF strategies; backhaul links; base stations; baseband received signal; cellular systems; central units; channel state information compression; compress-forward-estimate approach; distributed source coding; ergodic fading; estimate-compress-forward approach; information theoretic optimality; joint decoding; joint encoding; joint received signal; noncoherent transmission; remote radio heads; semicoherent strategies; signal compression; uplink network MIMO systems; Channel estimation; Coherence; Covariance matrices; Joints; Noise; Training; Uplink; Uplink network MIMO; cloud radio access; compress and forward; distributed antenna systems; distributed compression; imperfect CSI; indirect compression; limited backhaul;
Journal_Title :
Wireless Communications, IEEE Transactions on
DOI :
10.1109/TWC.2014.012114.131004