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Joint RSSD/AOA Source Localization: Bias Analysis and Asymptotically Efficient Estimator

机译:联合RSSD / AOA源定位:偏见分析和渐近有效的估算器

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In this paper we study blind source localization problem based on the joint received signal strength difference (RSSD) and angle of arrival (AOA) measurements with unknown transmit power of source. Since RSSD and AOA measurements are uncorrelated, combining two methods leads to a better performance for source localization. This paper focus on the pseudo linear estimator (PLE) with a closed-form and low complexity solution. One of the main limitations in this estimator is the bias created from the correlation between system matrix and error vector, which is not vanished by increasing the number of measurements. To overcome this problem first, we present a bias compensated PLE using the closed instrumental variable (IV). Then, for improving the localization performance a weighting IV estimator (WIV) is presented. Finally, for achieving the Cramer-Rao lower bound (CRLB) an improved WIV (IWIV) estimator is used based on the known relation between the estimated parameters of WIV estimator. The proposed IWIV estimator is proved to be asymptotically efficient (i.e., obtaining zero bias and the Cramer-Rao lower bound). Numerical simulations also verify the theoretical development and show source localization using hybrid information RSSD/AOA has a superior performance than RSSD and AOA solely.
机译:在本文中,我们基于接头接收信号强度差(RSSD)和到达角度(AOA)测量来研究盲源定位问题,并且具有未知的发射功率。由于RSSD和AOA测量不相关,因此组合两种方法导致源定位的更好性能。本文侧重于伪线性估计器(PLE),具有闭合形式和低复杂性解决方案。该估计器中的主要限制之一是从系统矩阵与误差向量之间的相关性创建的偏差,这不会通过增加测量次数而不会消失。为了首先克服这个问题,我们使用封闭的乐器变量(iv)呈现偏置补偿PLE。然后,为了提高本地化性能,呈现了加权IV估计器(WIV)。最后,为了实现Cramer-Rao下限(CRLB),基于WIV估计器的估计参数之间的已知关系来使用改进的WIV(IWIV)估计器。所提出的IWIV估计器被证明是渐近的有效性(即,获得零偏置和克拉米尔 - RAO下限)。数值模拟还验证了使用混合信息的理论开发和显示源本地化RSSD / AOA的性能优于RSSD和AOA。

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