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Design and Implementation of a Decentralized Positioning System for Wireless Sensor Networks

机译:无线传感器网络分散定位系统的设计与实现

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In terms of the location-aware applications for wireless sensor networks, it is crucial to improve the measurement reliability of the received physical signal as well as the target positioning and tracking performance in a real environment In the localization process, reflection, scattering, and other physical phenomena have a negative impact on the measurement reliability and the estimation accuracy at local sensor nodes. In this paper, we describe using a particle filter to increase the received signal strength (RSS) measurement reliability of each local sensor node and then use the least mean squares (LMS) algorithm to estimate the path loss exponent of the distance-dependent path loss model in our laboratory environment. Using the Industrial Technology Research Institute (ITRI) sensor platform, the experimental results show that the proposed LMS-based method can reduce the average noise variance by approximately 1 dB. Then the filtered RSS samples and the estimated path loss exponent are applied in the proposed weighted sign algorithm (WSA), which are implemented in the ITRI sensor platform for target positioning and tracking in our laboratory surroundings. The location estimation of a target is formulated as a weighted least squares (WLS) problem, and then is solved based on the WSA in an iterative and decentralized manner. Experimental results demonstrate that the proposed WSA-based positioning and tracking scheme achieves a maximum error distance of approximately 1.7 meters, average error distances of approximately 0.96 meters (positioning case) and 1.38 meters (tracking case), which are not far from those obtained from computer simulations (0.67 meters and 0.91 meters, respectively).
机译:在无线传感器网络的位置感知应用而言,关键的是要改善接收物理信号的在真实环境中的定位过程中,反射,散射的测量的可靠性以及目标定位和跟踪性能,和其他物理现象对测量的可靠性和估计精度在当地传感器节点产生负面影响。在本文中,我们描述了使用粒子滤波器来提高的接收信号强度(RSS)测量每个本地传感器节点的可靠性,然后使用最小均方(LMS)算法来估计依赖于距离的路径损耗的路径损耗指数模型在我们的实验室环境。使用工业技术研究所(ITRI)传感器平台,实验结果表明,所提出的基于LMS-方法可以通过约1分贝降低平均噪声方差。然后经滤波的RSS抽样值和所估计的路径损耗指数在所提出的加权符号算法(WSA),这是在工研院传感器平台对在我们的实验室环境目标定位和跟踪实现被应用。一个目标的位置估计被配制为加权最小二乘(WLS)的问题,然后基于以迭代和分散的方式WSA就解决了。实验结果表明,所提出的基于WSA定位和跟踪方案实现的约1.7米的最大误差距离,大约0.96米(定位情况下)和1.38米(跟踪下),这是不远处从获得的那些平均误差距离计算机模拟(分别0.67米和0.91米,)。

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