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Improvements in Accurate GPS Positioning Using Time Series Analysis

机译:使用时间序列分析改进GPS精确定位

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Although the Global Positioning System (GPS) is used widely in car navigation systems, cell phones, surveying, and other areas, several issues still exist. We focus on the continuous data received in public use of GPS, and propose a new positioning algorithm that uses time series analysis. By fitting an autoregressive model to the time series model of the pseudorange, we propose an appropriate state-space model. We apply the Kalman filter to the state-space model and use the pseudorange estimated by the filter in our positioning calculations. The results of the authors' positioning experiment show that the accuracy of the proposed method is much better than that of the standard method. In addition, as we can obtain valid values estimated by time series analysis using the state-space model, the proposed state-space model can be applied to several other fields.
机译:尽管全球定位系统(GPS)广泛用于汽车导航系统,手机,测量和其他领域,但仍然存在一些问题。我们着眼于在公共场合使用GPS接收的连续数据,并提出了一种使用时间序列分析的新定位算法。通过将自回归模型拟合到伪距的时间序列模型,我们提出了一个合适的状态空间模型。我们将卡尔曼滤波器应用于状态空间模型,并在定位计算中使用该滤波器估计的伪距。作者的定位实验结果表明,该方法的精度比标准方法要好得多。另外,由于我们可以使用状态空间模型获得通过时间序列分析估计的有效值,因此建议的状态空间模型可以应用于其他几个领域。

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