INS Aided GNSS Pseudo-range Error Prediction Using Machine Learning for Urban Vehicle Navigation
IEEE Sensors Journal(2024)
摘要
GNSS is being extensively applied in different navigation applications. However, GNSS direct signals are easily affected by multipath and non-line-of-sight signals, resulting in severe deterioration of positioning. GNSS receiver output information, such as carrier-to-noise ratio (C/N
0
) and satellite elevation, cannot accurately reflect the pseudo-range quality, leading to a significant increase in positioning errors. This paper proposes an inertial navigation system (INS) aided GNSS pseudo-range error prediction approach based on machine learning for urban vehicle navigation. As an important feature, the pseudo-range residual estimated by INS is employed for model training, together with the carrier-to-noise ratio, satellite elevation, and pseudo-range rate consistency. The predicted model of the pseudo-range errors is obtained by an ensemble bagging decision tree learning method. Urban vehicle tests show that compared to GNSS single point positioning (SPP) with C/N
0
-based weighting, the horizontal accuracy in the form of CEP95 of SPP with model-based weighting improves 52.81%, and the GNSS/INS horizontal positioning error in the form of CEP95 is reduced from 21.23m to 5.02m in deep urban environments.
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关键词
GNSS pseudo-range,GNSS multipath,Inertial navigation system (INS),Bagging decision tree,Urban positioning
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