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An Adaptive Weighting based on Modified DOP for Collaborative Indoor Positioning

机译:基于改进DOP的协同室内定位自适应加权。

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摘要

Indoor localisation has always been a challenging problem due to poor Global Navigation Satellite System (GNSS) availability in such environments. While inertial measurement sensors have become popular solutions for indoor positioning, they suffer large drifts after initialisation. Collaborative positioning enhances positioning robustness by integrating multiple localisation information, especially relative ranging measurements between local users and transmitters. However, not all ranging measurements are useful throughout the whole positioning process and integrating too much data will increase the computation cost. To enable a more reliable positioning system, an adaptive collaborative positioning algorithm is proposed which selects units for the collaborative network and integrates ranging measurement to constrain inertial measurement errors. The algorithm selects the network adaptively from three perspectives: the network geometry, the network size and the accuracy level of the ranging measurements between the units. The collaborative relative constraint is then defined according to the selected network geometry and anticipated measurement quality. In the case of trials with real data, the positioning accuracy is improved by 60% by adjusting the range constraint adaptively according to the selected network situation, while also improving the system robustness.
机译:由于在这样的环境中全球导航卫星系统(GNSS)的可用性较差,室内定位一直是一个具有挑战性的问题。尽管惯性测量传感器已成为室内定位的流行解决方案,但它们在初始化后会出现较大的漂移。协作式定位通过集成多个定位信息(尤其是本地用户和发射器之间的相对测距测量)来增强定位的鲁棒性。但是,并非所有测距测量在整个定位过程中都是有用的,并且集成太多数据将增加计算成本。为了实现更可靠的定位系统,提出了一种自适应协作定位算法,该算法为协作网络选择单元,并集成测距测量以约束惯性测量误差。该算法从三个角度自适应地选择网络:网络几何形状,网络大小和单元之间测距精度的精确度。然后根据所选的网络几何形状和预期的测量质量定义协作相对约束。在使用真实数据进行试验的情况下,通过根据所选的网络情况自适应地调整范围约束,可以将定位精度提高60%,同时还可以提高系统的鲁棒性。

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