协同波束形成中抑制旁瓣电平和降低发射功率的混合优化方法

Geng Sun, Xiaohui Zhao, Shuang Liang, Yanheng Liu, Ying Zhang, Victor C. M. Leung
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引用次数: 3

摘要

传统的虚拟节点天线阵协同波束形成由于节点位置不确定而导致最大旁瓣电平(SLL)过高。本文提出了一种抑制SLL和降低传输功率的混合优化方法(HOA)。该算法根据同心圆天线阵对节点位置进行组织,实现节点位置优化。然后,提出了一种新的变异粒子鸡群优化算法(VPCSO),进一步优化所选阵列节点的传输功率权重。仿真结果表明,所提出的定位优化方法是有效的,且VPCSO获得的波束方向图的最大SLL小于其他算法。此外,该方法获得的总传输功率权重是所有比较方法中最低的。
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A Hybrid Optimization Approach for Suppressing Sidelobe Level and Reducing Transmission Power in Collaborative Beamforming
Conventional collaborative beamforming with virtual node antenna array often results in high maximum sidelobe level (SLL) due to the unexpected node positions. In this paper, a hybrid optimization approach (HOA) for the SLL suppression and transmission power reduction is proposed. The proposed HOA organizes the node locations according to the concentric circular antenna array for location optimization. Then, a novel algorithm called variation particle chicken swarm optimization (VPCSO) is proposed to further optimize the transmission power weight of the selected array nodes. Simulations are conducted and the results show that the proposed location optimization approach is effective, and the maximum SLL of the beam patterns obtained by VPCSO is lower than that of other algorithms. Moreover, the overall transmission power weights obtained by the proposed VPCSO is the lowest among all the comparison methods.
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