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Adaptive Kalman Filtering Methods for Tracking GPS Signals in High Noise/High Dynamic Environments

机译:用于跟踪高噪声/高动态环境中GPS信号的自适应Kalman滤波方法

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GPS C/A signal tracking algorithms have been developed based on adaptive Kalman filtering theory In the research, an adaptive Kalman filter is used to substitute for standard tracking loop filters. The goal is to improve estimation accuracy and tracking stabilization in high noise and high dynamic environments. The linear dynamics model and the measurements model are designed to estimate code phase, carrier phase, Doppler shift, and rate of change of Doppler shift. Two adaptive algorithms are applied to improve robustness and adaptive faculty of the tracking, one is Sage adaptive filtering approach and the other is strong tracking method. Both the new algorithms and the conventional tracking loop have been tested by using simulation data. In the simulation experiment, the highest jerk of the receiver is set to 10G m/s3 with the lowest C/No 30dBHz. The results indicate that the Kalman filtering algorithms are more robust than the standard tracking loop, and performance of tracking loop using the algorithms is satisfactory in such extremely adverse circumstances.
机译:GPS C / A信号跟踪算法已经基于该研究的自适应卡尔曼滤波理论开发了一种自适应卡尔曼滤波器,用于替代标准跟踪环路滤波器。目标是提高高噪声和高动态环境中的估计精度和跟踪稳定。线性动力学模型和测量模型旨在估计码相,载波相位,多普勒频移和多普勒频移的变化率。应用了两个自适应算法以改善跟踪的鲁棒性和自适应教师,一个是Sage自适应滤波方法,另一个是强大的跟踪方法。通过使用模拟数据测试了新的算法和传统的跟踪环路。在仿真实验中,接收器的最高抽搐设置为10g M / S3,最低C / NO 30DBHz。结果表明,卡尔曼滤波算法比标准跟踪环路更鲁棒,并且在这种极其不利的情况下,使用算法的跟踪环路的性能令人满意。

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