The Short-Term Forecast of BeiDou Satellite Clock Bias Based on Wavelet Neural Network

Author(s):  
Qingsong Ai ◽  
Tianhe Xu ◽  
Jiajing Li ◽  
Hongwei Xiong
Survey Review ◽  
2020 ◽  
pp. 1-10
Author(s):  
Xu Wang ◽  
Hongzhou Chai ◽  
Chang Wang ◽  
Guorui Xiao ◽  
Yang Chong ◽  
...  

GPS Solutions ◽  
2021 ◽  
Vol 25 (2) ◽  
Author(s):  
Bohua Huang ◽  
Zengxi Ji ◽  
Renjian Zhai ◽  
Changfu Xiao ◽  
Fan Yang ◽  
...  

AbstractIn a satellite navigation system, high-precision prediction of satellite clock bias directly determines the accuracy of navigation, positioning, and time synchronization and is the key to realizing autonomous navigation. To further improve satellite clock bias prediction accuracy, we establish a satellite clock bias prediction model by using long short-term memory (LSTM) that can accurately express the nonlinear characteristics of the navigation satellite clock bias. Outliers in the original clock bias should be preprocessed before using the clock bias for prediction. By analyzing the working principle of the traditional median absolute deviations method, the ambiguity of the mathematical model of that method was improved. Experimental results show that the improved method is better than the traditional method at detecting gross errors. The single difference sequence of the preprocessed satellite clock bias was taken as the research object. First, a quadratic polynomial model was fit to the trend term of the single difference sequence. Second, based on the LSTM neural network model and the basic principles of supervised learning, a supervised learning LSTM network model (SL-LSTM) was proposed that models cyclic and random terms. Finally, the prediction function of the satellite clock bias was realized by extrapolating the model by adding a trend term. We adopt the GPS precision satellite clock bias of International GNSS Service data forecast experiments and apply wavelet neural network (WNN), autoregressive integrated moving average (ARIMA), and quadratic polynomial (QP) models to compare their prediction effects. The average prediction RMSE for 3 h, 6 h, 12 h, 1 d, and 3 d based on the SL-LSTM improved by approximately −21.80, −1.85, 8.57, 2.27, and 40.79%, respectively, compared with the results of the WNN. The average prediction RMSE based on the SL-LSTM improved by approximately 38.23, 65.48, 80.22, 85.18, and 94.51% compared with the ARIMA results. The average prediction RMSE based on the SL-LSTM improved by approximately 82.37, 75.88, 67.24, 45.71, and 58.22% compared with the QP results. Compared with the WNN, the SL-LSTM method has no obvious advantages in the prediction accuracy and stability in short-term prediction but achieves a better long-term prediction accuracy and stability. With an increased prediction duration, the SL-LSTM method is clearly better than the other three methods in terms of the prediction accuracy and stability. The results indicated that the quality of satellite clock bias prediction by the SL-LSTM method is better than that of the above three methods and is more suitable for the middle- and long-term prediction of satellite clock bias.


GPS Solutions ◽  
2016 ◽  
Vol 21 (2) ◽  
pp. 523-534 ◽  
Author(s):  
Yupu Wang ◽  
Zhiping Lu ◽  
Yunying Qu ◽  
Linyang Li ◽  
Ning Wang

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