Improvement of GPS and BeiDou extended orbit predictions with CNNs

2018 European Navigation Conference (ENC)(2018)

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摘要
This paper presents a method for improving the accuracy of extended GNSS satellite orbit predictions with convolutional neural networks (CNN). Satellite orbit predictions are used in self-assisted GNSS to reduce the Time to First Fix of a satellite positioning device. We describe the models we use to predict the satellite orbit and present the improvement method that uses CNN. The CNN estimates future prediction errors of our model and these estimates are used to correct our orbit predictions. We also describe how the neural network can be implemented into our prediction algorithm. In tests with GPS and BeiDou data, the method significantly improves orbit prediction accuracy. For example, the 68% error quantile of 7 day orbit prediction errors of GPS satellites was reduced by 45% on average.
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关键词
CNN,time-to-first fix reduciton,future prediction error estimation,orbit prediction errors,BeiDou extended orbit predictions,satellite positioning device,self-assisted GNSS,convolutional neural networks,extended GNSS satellite orbit predictions,GPS satellites,orbit prediction accuracy,prediction algorithm
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