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Cooperative Received Signal Strength-Based Sensor Localization With Unknown Transmit Powers

机译:具有未知发射功率的基于协作接收信号强度的传感器定位

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摘要

Cooperative localization (also known as sensor network localization) using received signal strength (RSS) measurements when the source transmit powers are different and unknown is investigated. Previous studies were based on the assumption that the transmit powers of source nodes are the same and perfectly known which is not practical. In this paper, the source transmit powers are considered as nuisance parameters and estimated along with the source locations. The corresponding Cramér-Rao lower bound (CRLB) of the problem is derived. To find the maximum likelihood (ML) estimator, it is necessary to solve a nonlinear and nonconvex optimization problem, which is computationally complex. To avoid the difficulty in solving the ML estimator, we derive a novel semidefinite programming (SDP) relaxation technique by converting the ML minimization problem into a convex problem which can be solved efficiently. The algorithm requires only an estimate of the path loss exponent (PLE). We initially assume that perfect knowledge of the PLE is available, but we then examine the effect of imperfect knowledge of the PLE on the proposed SDP algorithm. The complexity analyses of the proposed algorithms are also studied in detail. Computer simulations showing the remarkable performance of the proposed SDP algorithm are presented.
机译:研究了当源发射功率不同且未知时使用接收信号强度(RSS)测量的协作式定位(也称为传感器网络定位)。先前的研究基于以下假设:源节点的发射功率相同且完全已知,这是不实际的。在本文中,将源发射功率视为有害参数,并与源位置一起进行估算。得出问题的相应Cramér-Rao下界(CRLB)。为了找到最大似然(ML)估计量,有必要解决非线性和非凸优化问题,该问题计算复杂。为了避免求解ML估计量的困难,我们将ML最小化问题转换为可以有效解决的凸问题,从而得出了一种新颖的半定规划(SDP)松弛技术。该算法仅需要路径损耗指数(PLE)的估计。我们最初假设PLE的完整知识是可用的,但是随后我们检查了PLE知识不完善对所提出的SDP算法的影响。还对所提出算法的复杂度分析进行了详细研究。计算机仿真显示了所提出的SDP算法的卓越性能。

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