基于卫星测量特征和伪距残差的rnn GNSS定位

Ibrahim Sbeity, C. Villien, B. Denis, E. Belmega
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引用次数: 0

摘要

在全球导航卫星系统(GNSS)的背景下,考虑到偏差测量对定位精度的强烈影响,特别是在单历元情景下,可用卫星数量的增加在选择最准确的伪距离贡献时带来了许多挑战。这项工作充分利用了机器学习在预测链路测量质量因素方面的潜力,从而优化测量权重。为此,我们使用了一个由异构特征组成的定制矩阵,如条件伪距残差和每链路卫星度量(例如,载波与噪声功率密度比及其经验统计、卫星高度、载波锁相时间)。然后将该矩阵作为输入馈送到循环神经网络(RNN)(即长短期记忆(LSTM)网络)。我们对实际数据的实验结果,从广泛的现场测量中获得,证明了我们提出的解决方案的巨大潜力,能够超越传统的测量加权和最先进的选择策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
RNN-Based GNSS Positioning using Satellite Measurement Features and Pseudorange Residuals
In the Global Navigation Satellite System (GNSS) context, the growing number of available satellites has lead to many challenges when it comes to choosing the most accurate pseudorange contributions, given the strong impact of biased measurements on positioning accuracy, particularly in single-epoch scenarios. This work leverages the potential of machine learning in predicting link-wise measurement quality factors and, hence, optimize measurement weighting. For this purpose, we use a customized matrix composed of heterogeneous features such as conditional pseudorange residuals and per-link satellite metrics (e.g., carrier-to-noise power density ratio and its empirical statistics, satellite elevation, carrier phase lock time). This matrix is then fed as an input to a recurrent neural network (RNN) (i.e., a long-short term memory (LSTM) network). Our experimental results on real data, obtained from extensive field measurements, demonstrate the high potential of our proposed solution being able to outperform traditional measurements weighting and selection strategies from state-of-the-art.
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