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Evaluating Machine Learning Antenna Placement for Enhanced GNSS Accuracy for CAVs

机译:评估机器学习和天线布置以增强CAV的GNSS精度

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Localization accuracy obtainable from global navigation satellites systems in built up areas like urban canyons and multi-storey car parks is severely impaired due to multipath and non-line-of-sight signal propagation. In this paper, a simple classifier was used in discriminating between multipath and line-of-sight GNSS signals. By using the carrier to noise ratio which characterizes the received signal strength of the GNSS signals, and the rate of change of the epochs of the satellite vehicles in view, a prediction accuracy of 98% was attained from the classifier. Also investigated in this paper is the effect of antenna placement on localization accuracy. Our measurement campaign using a Nissan Leaf hatch back model showed that the centre longitudinal line of the roof generated the least localization errors for an urbanized route.
机译:由于多径和非视距信号的传播,严重损害了在城市峡谷和多层停车场等建筑区域中从全球导航卫星系统获得的定位精度。在本文中,使用一个简单的分类器来区分多径和视线GNSS信号。通过使用表征GNSS信号的接收信号强度的载噪比和卫星运载工具的历元变化率,从分类器中获得了98%的预测精度。本文还研究了天线放置对定位精度的影响。我们使用日产(Nissan)Leaf舱口盖后背模型进行的测量活动表明,屋顶的中心纵线对于城市化路线产生的定位误差最小。

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