Institute of Computing, Federal University of Amazonas, Manaus 69067-005, Amazonas, Brazil.
Faculty of Business and Information Technology, Ontario Tech University (UOIT), Oshawa, ON L1H 7K4, Canada.
Sensors (Basel). 2020 Dec 8;20(24):7003. doi: 10.3390/s20247003.
Indoor Positioning Systems (IPSs) are used to locate mobile devices in indoor environments. Model-based IPSs have the advantage of not having an exhausting training and signal characterization of the environment, as required by the fingerprint technique. However, most model-based IPSs are done using fixed model parameters, treating the whole scenario as having a uniform signal propagation. This might work for most small scale experiments, but not for larger scenarios. In this paper, we propose PoDME (Positioning using Dynamic Model Estimation), a model-based IPS that uses dynamic parameters that are estimated based on the location the signal was sent. More specifically, we use the set of anchor nodes that received the signal sent by the mobile node and their signal strengths, to estimate the best local values for the log-distance model parameters. Also, since our solution depends highly on the selected anchor nodes to use on the position computation, we propose a novel method for choosing the three best anchor nodes. Our method is based on several data analysis executed on a large-scale, Bluetooth-based, real-world experiment and it chooses not only the nearest anchor but also the ones that benefit our least-square-based position computation. Our solution achieves a position estimation error of 3 m, which is 17% better than a fixed-parameters model from the literature.
室内定位系统(IPSs)用于在室内环境中定位移动设备。基于模型的 IPS 具有不需要对环境进行繁琐的训练和信号特征描述的优势,这是指纹技术所需要的。然而,大多数基于模型的 IPS 都是使用固定的模型参数来完成的,将整个场景视为具有统一的信号传播。这在大多数小规模实验中可能有效,但在更大的场景中可能不行。在本文中,我们提出了 PoDME(基于动态模型估计的定位),这是一种基于模型的 IPS,它使用根据信号发送位置估计的动态参数。更具体地说,我们使用接收移动节点发送的信号的一组锚节点及其信号强度,来估计对数距离模型参数的最佳局部值。此外,由于我们的解决方案高度依赖于用于位置计算的所选锚节点,因此我们提出了一种选择三个最佳锚节点的新方法。我们的方法基于在大规模蓝牙真实世界实验上执行的数据分析,它不仅选择最近的锚节点,而且还选择对我们基于最小二乘的位置计算最有利的锚节点。我们的解决方案实现了 3 米的位置估计误差,比文献中固定参数模型的性能提高了 17%。