基于蒙特卡罗方法的传感器自定位信息融合

M. Vemula, M. Bugallo, P. Djurić
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引用次数: 4

摘要

提出了一种利用信标节点进行传感器定位的分布式算法。在该算法中,信标节点广播包含其位置信息的分布。附近位置信息未知的传感器节点利用这些发送的信息和接收到的信标信号特征来估计自己的位置。估计它们位置的传感器成为新的信标。一种称为重要抽样的蒙特卡罗方法用于融合这些分布并获得传感器位置的后验分布的近似值。我们还计算了传感器自定位的贝叶斯Cramer-Rao界,并研究了信标先验位置信息和其他系统参数的影响。我们通过计算机仿真分析了该算法的性能,并将其与数值计算的边界进行了比较
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fusion of Information for Sensor Self-Localization by a Monte Carlo Method
We propose a distributed algorithm for sensor localization using beacon nodes. In this algorithm, beacon nodes broadcast distributions which contain information about their location. Nearby sensor nodes with unknown location information use this transmitted information and received beacon signal characteristics to estimate their positions. Sensors that estimate their positions become new beacons. A Monte Carlo method known as importance sampling is used for fusing these distributions and for obtaining approximations of the posterior distributions of the sensor locations. We also compute the Bayesian Cramer-Rao bounds for self-localization of sensors and study the impact of the beacons' prior location information and other system parameters. We analyze the performance of the proposed algorithm through computer simulations and compare it with numerically obtained bounds
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