RSS-based self-adaptive localization in dynamic environments

B. Dil, P. Havinga
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引用次数: 16

Abstract

This paper focuses on optimal and automatic calibration of the propagation model of Received Signal Strength (RSS) based localization algorithms. Conventional RSS-based localization algorithms assume that optimal calibration is static and identical for all nodes, which limits its use to static environments. However realistic environments are dynamic, where each node should estimate its own optimal propagation model settings dependent on the node's hardware and location. We call this process Self-Adaptive Localization (SAL). SAL algorithms estimate the parameter settings from available localization measurements. We show that existing SAL algorithms significantly decrease the localization accuracy and stability. Our main contribution is that we determine the conditions under which SAL algorithms provide optimal results, that are shown to be constraints on the localization surface. Since the antenna orientation has a significant impact on RSS and thus optimal propagation model settings, we evaluated SAL in an environment with unknown and thus dynamic antenna orientations. Our measurements and simulations show that these constraints increase the accuracy by ~ 45% and the stability by ~ 70% in static and dynamic environments.
动态环境下基于rss的自适应定位
本文主要研究了基于接收信号强度(RSS)的定位算法传播模型的优化和自动标定。传统的基于rss的定位算法假设所有节点的最优校准是静态的和相同的,这限制了它在静态环境中的使用。然而,现实环境是动态的,每个节点应该根据节点的硬件和位置估计自己的最佳传播模型设置。我们称这个过程为自适应定位(SAL)。SAL算法从可用的定位测量中估计参数设置。我们发现现有的SAL算法显著降低了定位精度和稳定性。我们的主要贡献是我们确定了SAL算法提供最佳结果的条件,这些条件被显示为局部化表面的约束。由于天线方向对RSS有重要影响,因此最优传播模型设置,我们在未知的动态天线方向环境中评估了SAL。我们的测量和仿真表明,在静态和动态环境下,这些约束使精度提高了45%,稳定性提高了70%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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