10,517 research outputs found
Group Sparse Precoding for Cloud-RAN with Multiple User Antennas
Cloud radio access network (C-RAN) has become a promising network
architecture to support the massive data traffic in the next generation
cellular networks. In a C-RAN, a massive number of low-cost remote antenna
ports (RAPs) are connected to a single baseband unit (BBU) pool via high-speed
low-latency fronthaul links, which enables efficient resource allocation and
interference management. As the RAPs are geographically distributed, the group
sparse beamforming schemes attracts extensive studies, where a subset of RAPs
is assigned to be active and a high spectral efficiency can be achieved.
However, most studies assumes that each user is equipped with a single antenna.
How to design the group sparse precoder for the multiple antenna users remains
little understood, as it requires the joint optimization of the mutual coupling
transmit and receive beamformers. This paper formulates an optimal joint RAP
selection and precoding design problem in a C-RAN with multiple antennas at
each user. Specifically, we assume a fixed transmit power constraint for each
RAP, and investigate the optimal tradeoff between the sum rate and the number
of active RAPs. Motivated by the compressive sensing theory, this paper
formulates the group sparse precoding problem by inducing the -norm as
a penalty and then uses the reweighted heuristic to find a solution.
By adopting the idea of block diagonalization precoding, the problem can be
formulated as a convex optimization, and an efficient algorithm is proposed
based on its Lagrangian dual. Simulation results verify that our proposed
algorithm can achieve almost the same sum rate as that obtained from exhaustive
search
Optimal Throughput Fairness Trade-offs for Downlink Non-Orthogonal Multiple Access over Fading Channels
Recently, non-orthogonal multiple access (NOMA) has attracted considerable
interest as one of the 5G-enabling techniques. However, users with better
channel conditions in downlink communications intrinsically benefits from NOMA
thanks to successive decoding, judicious designs are required to guarantee user
fairness. In this paper, a two-user downlink NOMA system over fading channels
is considered. For delay-tolerant transmission, the average sum-rate is
maximized subject to both average and peak power constraints as well as a
minimum average user rate constraint. The optimal resource allocation is
obtained using Lagrangian dual decomposition under full channel state
information at the transmitter (CSIT), while an effective power allocation
policy under partial CSIT is also developed based on analytical results. In
parallel, for delay-limited transmission, the sum of delay-limited throughput
(DLT) is maximized subject to a maximum allowable user outage constraint under
full CSIT, and the analysis for the sum of DLT is also performed under partial
CSIT. Furthermore, an optimal orthogonal multiple access (OMA) scheme is also
studied as a benchmark to prove the superiority of NOMA over OMA under full
CSIT. Finally, the theoretical analysis is verified by simulations via
different trade-offs for the average sum-rate (sum-DLT) versus the minimum
(maximum) average user rate (outage) requirement.Comment: 35 pages, 10 figures, 3 tables, the longer version of the paper with
the same titl
Several Ideas on Fire Detecting Alarm for Power Supply and Distribution System
AbstractThrough the cases of fire in the power supply and distribution system for iron and steel enterprises, the basic causes and the main fire parts for the fire in the power supply and distribution system have been analyzed. Types of fire in the power supply and distribution system are summarized. Several ideas for prevention of fire that will occur in the power supply and distribution system are put forward
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