Downlink Resource Allocation for 5G-NR Massive MIMO Systems

P. M., M. R., Abhinav Kumar, K. Kuchi
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引用次数: 1

Abstract

The gNodeB (gNB) in 5G-New Radio (5G-NR) is capable of beamforming and spatial multiplexing the users to achieve a multi-fold increase in the network capacity. With multiple active beams and the possibility of varying payload sizes, the resource allocation algorithm should optimally utilize the resources in time, frequency, and space. Otherwise, the multifold increase expected from the massive number of antennae will not be realized in practice. Further, in the 5G-NR downlink, each payload transmitted in the shared channel has an associated payload in the control channel. Thus, to have optimal resource utilization, the gNB should simultaneously consider the control and the shared channel payloads while allocating resources. Unlike the 4G-Long Term Evolution (4G-LTE), both control channel and shared channel support beamforming in 5G-NR. Hence, when the gNB uses the existing 4G-LTE algorithms for 5G-NR, they do not achieve the optimal resource allocation. Motivated by this, we propose a joint control and shared channel allocation for 5G-NR downlink that maximizes the sum-throughput while ensuring fairness in the allocation. We formulate this proposed resource allocation as an integer linear program. We also present low-complexity sub-optimal and approximation algorithms due to their practical usefulness. We then evaluate the proposed algorithms using system-level simulations and show that they significantly outperform the baseline algorithm.
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5G-NR大规模MIMO系统下行链路资源分配
5g -新无线电(5G-NR)中的gNB (gNB)能够对用户进行波束形成和空间复用,从而实现网络容量的数倍增长。在多个有源波束和不同载荷大小的情况下,资源分配算法应在时间、频率和空间上最优地利用资源。否则,大量天线所带来的成倍增长将无法在实践中实现。此外,在5G-NR下行链路中,在共享信道中传输的每个有效载荷在控制信道中都有一个相关的有效载荷。因此,gNB在分配资源时应同时考虑控制和共享信道有效载荷,以获得最优的资源利用率。与4g长期演进(4G-LTE)不同,控制信道和共享信道都支持5G-NR的波束形成。因此,当gNB使用现有的4G-LTE算法进行5G-NR时,无法实现资源的最优分配。为此,我们提出了一种5G-NR下行链路的联合控制和共享信道分配方案,在保证分配公平性的同时,最大限度地提高了总吞吐量。我们将这个建议的资源分配表述为一个整数线性规划。由于它们的实用性,我们也提出了低复杂度的次优算法和近似算法。然后,我们使用系统级模拟评估提出的算法,并表明它们显着优于基线算法。
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