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Self-Localization Over RFID Tag Grid Excess Channels Using Extended Filtering Techniques

机译:使用扩展的过滤技术在RFID标签网格多余通道上进行自定位

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摘要

Accuracy of target self-localization in RFID tag information networks and grids critically affects its situation awareness. With an insufficient localization accuracy, information about local 2D or 3D surroundings delivered to a target by request may provoke collisions, even fatal. In RFID networking systems, target state can be observed over a big number of tags. For such a case, the extended Kalman filter (EKF) algorithm is modified and a new extended unbiased finite impulse response (EFIR) filtering algorithm is developed. We show that redundant information captured from the tags allows increasing both the localization accuracy and system stability. The common factor here is that the number of tags required to increase accuracy is limited in the target nonlinear medium, by about six in our case. It is also shown that target state observation over the RFID tag excess channels allows mitigating effect of the imprecisely defined noise statistics on the EKF performance and preventing divergence in EKF.
机译:RFID标签信息网络和网格中目标自我定位的准确性严重影响其态势感知。如果定位精度不足,则有关通过请求传递给目标的本地2D或3D环境的信息可能会引发冲突,甚至是致命的。在RFID网络系统中,可以在大量标签上观察目标状态。对于这种情况,修改了扩展卡尔曼滤波器(EKF)算法,并开发了新的扩展无偏有限冲激响应(EFIR)滤波算法。我们表明,从标签捕获的冗余信息可以提高定位精度和系统稳定性。这里的共同因素是,在目标非线性介质中,提高精度所需的标签数量受到限制,在我们的案例中约为6个。还表明,通过RFID标签多余通道进行目标状态观察,可以减轻定义不准确的噪声统计数据对EKF性能的影响,并防止EKF产生差异。

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