Analysis of Antenna Array Parameter Effect for Massive MIMO Transmission

This paper presents a study on beam division multiple access (BDMA) with performance parameters of the antenna array. For this work, firstly we introduce BDMA for massive multiple-input multiple-output (MIMO) transmission. Then the actual antenna model is proposed, and a simple application scenario is established. In the case that antenna parameters are changed, this work shows that the sum-rate simulation results are different. We combine the performance parameters of the antenna with the BDMA channel model of free space, and then we can build the actual network layout. The channel simulations based of the sum-rate will be performed in this paper respectively. The simulation results show that the parameters such as the coupling effect between elements in the antenna array will affect the BDMA channel model of large-scale MIMO systems for typical mobile scenarios, which should be considered in the subsequent channel model analysis.

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