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Antenna Allocation in MIMO Radar with Widely Separated Antennas for Multi-Target Detection

机译:多目标检测的MIMO雷达中的天线分离

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In this paper, we explore a new resource called multi-target diversity to optimize the performance of multiple input multiple output (MIMO) radar with widely separated antennas for detecting multiple targets. In particular, we allocate antennas of the MIMO radar to probe different targets simultaneously in a flexible manner based on the performance metric of relative entropy. Two antenna allocation schemes are proposed. In the first scheme, each antenna is allocated to illuminate a proper target over the entire illumination time, so that the detection performance of each target is guaranteed. The problem is formulated as a minimum makespan scheduling problem in the combinatorial optimization framework. Antenna allocation is implemented through a branch-and-bound algorithm and an enhanced factor 2 algorithm. In the second scheme, called antenna-time allocation, each antenna is allocated to illuminate different targets with different illumination time. Both antenna allocation and time allocation are optimized based on illumination probabilities. Over a large range of transmitted power, target fluctuations and target numbers, both of the proposed antenna allocation schemes outperform the scheme without antenna allocation. Moreover, the antenna-time allocation scheme achieves a more robust detection performance than branch-and-bound algorithm and the enhanced factor 2 algorithm when the target number changes.
机译:在本文中,我们探索了一种称为多目标分集的新资源,以优化具有广泛分离的天线的多输入多输出(MIMO)雷达的性能,以检测多个目标。特别是,我们根据相对熵的性能指标,灵活分配MIMO雷达的天线,以同时灵活地探测不同目标。提出了两种天线分配方案。在第一种方案中,分配每个天线以在整个照明时间内照亮适当的目标,从而确保每个目标的检测性能。该问题在组合优化框架中被表述为最小订货期调度问题。天线分配是通过分支定界算法和增强因子2算法实现的。在第二种方案中,称为天线时间分配,分配每个天线以不同的照射时间照射不同的目标。天线分配和时间分配都基于照明概率进行了优化。在大范围的发射功率,目标波动和目标数量上,两种建议的天线分配方案均优于没有天线分配的方案。此外,当目标数目改变时,天线时间分配方案比分支定界算法和增强因子2算法具有更强的检测性能。

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