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Chapter 29 Research of Satellite Clock Error Prediction Based on RBF Neural Network and ARMA Model

机译:第29章基于RBF神经网络和ARMA模型的卫星时钟误差预测研究

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As the main error sources of the observation data, the precision of prediction model has a direct effect on the performance of navigation system. Considering that the clock error was composed of trend part and random component, an integrated model was proposed, which was based on RBF neural network and ARMA. The trend was modeled using the RBF neural network, while the random part by the ARMA model, and last added them to the predicted results. The simulation results validate the feasibility and the better performance of the integrated method through an example by using the precise IGS clock data.
机译:作为观测数据的主要误差源,预测模型的精度直接影响导航系统的性能。考虑到时钟误差由趋势部分和随机成分组成,提出了基于RBF神经网络和ARMA的集成模型。使用RBF神经网络对趋势进行建模,而使用ARMA模型对随机趋势进行建模,最后将它们添加到预测结果中。仿真结果通过使用精确的IGS时钟数据举例说明了该集成方法的可行性和更好的性能。

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