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Smart antenna design for real-time multi-channel power spectral density estimation and target localization

机译:用于实时多通道功率谱密度估计和目标本地化的智能天线设计

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Situational awareness is dependent on efficient spectrum use for data communication. In this paper, we describe spectrum band selection based on the target operations and localization. For wireless spectrum detection, given the system noise and signal information, the Neyman-Pearson based likelihood ratio test can provide the optimal detection performance under a certain probability of false alarms. However, in practice not all the information of alternative hypotheses are available. In this paper, a robust generalized likelihood ratio test (RGLRT) based detection is proposed without knowing channel information and signal information. An online subspace learning algorithm for direction of arrival (DOA) is introduced, which only uses fixed partial observation of antennas to estimate the subspace of the steering matrix. The subspace rank is not necessarily known at the beginning. The simulation results show that only partial observations can achieve a good DOA estimation performance with comparatively smaller estimation error.
机译:情境意识依赖于有效的频谱用于数据通信。在本文中,我们描述了基于目标操作和本地化的频谱频带选择。对于无线频谱检测,鉴于系统噪声和信号信息,基于Neyman-Pearson的似然比测试可以在误报的某个概率下提供最​​佳的检测性能。但是,在实践中,并非所有替代假设的信息都可用。在本文中,提出了一种鲁棒广义似然比测试(RGLRT)的检测,而不知道信道信息和信号信息。介绍了用于到达方向(DOA)的在线子空间学习算法(DOA),其仅使用固定部分观察天线来估计转向矩阵的子空间。子空间等级在开始时不一定知道。仿真结果表明,只有部分观察只能通过相对较小的估计误差实现良好的DOA估计性能。

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