基于神经网络混合建模的思想提出一种针对导航卫星的中长期轨道预报方法,在原动力学模型的基础上引入神经网络模型作为补偿,从而获得新的预报模型。在训练过程中神经网络通过学习动力学模型轨道预报误差来掌握其变化规律,并在预报过程中为动力学模型预报提供补偿,以提高预报精度。对GPS卫星动力学模型中长期预报误差的特点进行分析,然后根据所得结论提出混合模型的中长期(15 d以上)预报方案,最后通过对GPS卫星的仿真试验证明混合模型的改进效果,结果表明新方法在15~40 d的预报上表现出很好的改进效果。 更多还原
【Abstract】 A hybrid prediction model based on neural network is introduced for navigation satellite.The new model is based on dynamical model and the neural network model is adopted to modify it.During the training phase,neural network model tries to approach the difference of dynamical model prediction product,then compensate it in the prediction phase.The characteristics of DMM prediction error for GPS are explored,and then predition strategy for long term(longer than 15 d) is designed.At the last,a grou... 更多还原