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Regression forecasting model to improve localization accuracy

机译:回归预测模型可提高定位精度

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Location information with a high level of accuracy is a crucial component in many of the emerging services provided to users by wireless and mobile networks. The proposed mathematical models for localization focus on modeling the localization error itself, and overlook the potential correlation between successive localization measurement errors. In this paper, we first investigate the correlation between successive positioning measurements, and then take this correlation into consideration when modeling positioning error. We propose a p-order Gauss-Markov model to predict the future position of a mobile node from its current mobility statistics, and use the Yule Walker equations to determine the degree of correlation between a node's future position and its past positions. Using vehicular networks as a case study, we investigate the existence of correlation for two datasets representing the mobility traces of two vehicles over a period of time. We prove the existence of correlation between successive measurements in the two datasets, and show that the time correlation between measurements can have a value up to 4 minutes. Through simulations, we validate the robustness of our model and show that it is possible to use the first-order Gauss-Markov model, which has the least complexity, and still maintain an accurate estimation of a vehicle's location over time. Our model can assist in providing better modeling of positioning errors and can be used as a prediction tool to improve the performance of classical localization algorithms such as the Kalman filter.
机译:在无线和移动网络提供给用户的许多新兴服务中,高精度的位置信息是至关重要的组成部分。提出的用于定位的数学模型着重于对定位误差本身进行建模,而忽略了连续定位测量误差之间的潜在相关性。在本文中,我们首先研究连续定位测量之间的相关性,然后在对定位误差进行建模时考虑到这种相关性。我们提出了一个p阶高斯-马尔可夫模型来根据其当前的移动性统计数据预测移动节点的未来位置,并使用Yule Walker方程来确定节点的未来位置与其过去位置之间的相关程度。使用车辆网络作为案例研究,我们调查了两个数据集之间的相关性,这些数据集表示一段时间内两辆车的移动轨迹。我们证明了两个数据集中连续测量之间存在相关性,并表明测量之间的时间相关性最多可以有4分钟的值。通过仿真,我们验证了模型的鲁棒性,并表明可以使用一阶高斯-马尔可夫模型,该模型具有最低的复杂性,并且仍能随着时间的推移准确地估计车辆的位置。我们的模型可以帮助提供更好的定位误差建模,并可以用作预测工具来改善经典定位算法(例如卡尔曼滤波器)的性能。

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