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Modeling of GPS SPS Timing Error using Multilayered Neural Network

机译:GPS SPS定时误差使用多层神经网络建模

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GPS is not only an accurate navigation system; it also delivers time with unprecedented accuracy. In this paper, a Multilayered Neural Network (MNN) based approach for forecast and improvement of GPS Standard Positioning Service (SPS) timing error is presented. The proposed MNN is trained using Back-Propagation (BP) and Extended Kalman Filter (EKF) training algorithms. The performance of these proposed MNNs is demonstrated by showing its effectiveness in GPS timing error prediction of a low cost GPS receiver. The tests results on the collected real data show that GPS timing error RMS can reduce from 300nsec and 200nsec to less than 120nsec and 43nsec by using MNN prediction, before and after SA, respectively. The experimental results emphasize that performance of MNN based on the EKF training algorithm is better than BP.
机译:GPS不仅是一种准确的导航系统;它也以前所未有的准确性提供时间。本文介绍了基于多层神经网络(MNN)的预测方法和GPS标准定位服务(SPS)定时误差的改进方法。所提出的MNN使用反向传播(BP)和扩展卡尔曼滤波器(EKF)训练算法进行培训。通过在低成本GPS接收器的GPS定时误差预测中显示其有效性,证明了这些提出的MNN的性能。测试结果对收集的实际数据显示,通过使用MNN预测,在SA之前和之后,GPS定时误差RMS可以通过使用MNN预测,从300nsec和200NSEC减少到小于120nsec和43nsec。实验结果强调,基于EKF训练算法的MNN性能优于BP。

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