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Optimized low complexity sensor node positioning in wireless sensor networks

机译:无线传感器网络中优化的低复杂度传感器节点定位

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摘要

Localization of sensor nodes in wireless sensor networks (WSNs) promotes many new applications. A longer life time is imperative for WSNs, this requirement constrains the energy consumption and computation power of the nodes. To locate sensors at a low cost, the received signal strength (RSS)-based localization is favored by many researchers. RSS positioning does not require any additional hardware on the sensors and does not consume extra power. A low complexity solution to RSS localization is the linear least squares (LLS) method. In this paper, we analyze and improve the performance of this technique. First, a weighted least squares (WLS) algorithm is proposed, which considerably improves the location estimation accuracy. Second, reference anchor optimization using a technique based on the minimization of the theoretical mean square error is also proposed to further improve performance of LLS and WLS algorithms. Finally, to realistically bound the performance of any unbiased RSS location estimator based on the linear model, the linear Cramer-Rao bound (CRB) is derived. It is shown via simulations that employment of the optimal reference anchor selection technique considerably improves system performance, while the WLS algorithm pushes the estimation performance closer to the linear CRB. Finally, it is also shown that the linear CRB has larger error than the exact CRB, which is the expected outcome.
机译:无线传感器网络(WSN)中传感器节点的本地化促进了许多新应用。对于WSN,必须有更长的使用寿命,这一要求限制了节点的能耗和计算能力。为了以低成本定位传感器,许多研究人员都青睐基于接收信号强度(RSS)的定位。 RSS定位不需要传感器上的任何其他硬件,也不会消耗额外的功率。 RSS定位的一种低复杂度解决方案是线性最小二乘(LLS)方法。在本文中,我们分析并改进了该技术的性能。首先,提出了加权最小二乘(WLS)算法,该算法大大提高了位置估计的准确性。其次,还提出了使用基于最小化理论均方误差的技术进行参考锚优化,以进一步提高LLS和WLS算法的性能。最后,为了根据线性模型实际限制任何无偏RSS位置估计器的性能,需要导出线性Cramer-Rao限制(CRB)。通过仿真显示,采用最佳参考锚点选择技术可显着提高系统性能,而WLS算法将估计性能推向更接近线性CRB。最后,还显示出线性CRB的误差大于精确CRB的误差,这是预期的结果。

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