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Localization of static target in WSNs with least-squares and extended Kalman filter

机译:使用最小二乘和扩展卡尔曼滤波器的WSN中的静态目标本地化

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Wireless sensor network localization is an essential problem that has attracted increasing attention due to wide requirements such as in-door navigation, autonomous vehicle, intrusion detection, and so on. With the a priori knowledge of the positions of sensor nodes and their measurements to targets in the wireless sensor networks (WSNs), i.e. posterior knowledge, such as distance and angle measurements, it is possible to estimate the position of targets through different algorithms. In this contribution, two approaches based on least-squares and Kalman filter are described for localization of one static target in the WSNs with distance, angle, or both distance and angle measurements, respectively. Noting that the measurements of these sensors are generally noisy of certain degree, it is crucial and interesting to analyze how the accuracy of localization is affected by the sensor errors and the sensor network, which may help to provide guideline on choosing the specification of sensors and designing the sensor network. To this end, we make theoretical analysis for the different methods based on three types of measurement noise: bounded noise, uniformly distributed noises, and Gaussian white noises. Simulation results illustrate the performance comparison of these different methods.
机译:无线传感器网络本地化是由于诸如门导航,自动载体,入侵检测等广泛要求,因此引起了越来越多的问题。利用传感器节点位置的先验知识及其对无线传感器网络(WSNS)中的目标的测量,即,诸如距离和角度测量的后验知识,可以通过不同的算法估计目标的位置。在该贡献中,描述了两个基于最小二乘和卡尔曼滤波器的方法,用于分别在WSN中定位一个静态目标,分别具有距离,角度或距离和角度测量。注意到这些传感器的测量通常是一定程度的噪声,分析了定位的准确性受传感器误差和传感器网络的影响是至关重要的,这可能有助于提供选择传感器规格的指导和设计传感器网络。为此,我们基于三种类型的测量噪声对不同方法进行理论分析:有界噪声,均匀分布的噪声和高斯白色噪声。仿真结果说明了这些不同方法的性能比较。

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