由频率和空间移动组成的认知无线电环境中的源定位和跟踪

A. Adams, M. Tummala, J. McEachen, James W. Scrofani
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引用次数: 1

摘要

认知无线电(CR)的源定位和跟踪是一个重大挑战,因为无线电在空间、频率和时间域的动态机会行为。对于任何有效的定位或跟踪方案,它必须能够像CR适应其周围环境一样适应。针对上述问题,提出了基于扩展半距离(ESRB)的定位方案,但由于非线性最小二乘法(NLSM)在定位过程中频繁发散,导致无线传感器网络(WSN)内部通信开销和存储需求较大,可靠性较差。此外,在不利用先前位置估计的情况下,通过重复相同的定位技术,以蛮力方式完成对移动CR的跟踪。在本文中,改进了ESRB定位方案,将卡尔曼滤波作为递归估计器,以减轻WSN的负担,并集成了一种有效的方法来估计移动CR随时间的位置和速度。利用MATLAB编程语言对所提出的改进方法进行了建模,并通过仿真验证了其有效性。结果表明,卡尔曼滤波是一种适合于ESRB定位方案的递归估计器,同时考虑了CR环境中固有的频率和空间移动性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Source localization and tracking in a Cognitive Radio environment consisting of frequency and spatial mobility
Source localization and tracking of a Cognitive Radio (CR) is a significant challenge because of the dynamic opportunistic behavior of the radio across the spatial, frequency, and temporal domains. For any localization or tracking scheme to be effective, it must be able to adapt as a CR adapts to its surroundings. The extended semi range-based (ESRB) localization scheme was proposed as a solution to the aforementioned problem, but resulted in considerable communication overhead and storage requirements within the wireless sensor network (WSN) as well as poor reliability due to frequent divergence of the non-linear least squares method (NLSM) in the localization process. Furthermore, tracking a mobile CR was accomplished in a brute force manner by repeating the same positioning technique without taking advantage of prior position estimates. In this paper, the ESRB localization scheme is modified to incorporate the Kalman filter as a recursive estimator to reduce the burden placed on the WSN and integrate an efficient means to estimate the position and velocity of a mobile CR over time. The proposed modification is modeled in the MATLAB programming language, and its efficacy is demonstrated through simulation. It is shown that the Kalman filter is an appropriate recursive estimator for use in the ESRB localization scheme, while accounting for both frequency and spatial mobility inherent in the CR environment.
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