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Research on GPS RAIM Algorithm Based on SIR Particle Filtering State Estimation and Smoothed Residual

机译:基于SIR粒子滤波状态估计和平滑残差的GPS RAIM算法研究

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The investigation presents a new approach based on SIR particle filtering state estimation and smoothed residual for GPS receiver autonomous integrity monitoring (RAIM), which adopted the difference value between the ideal observation values acquired by state estimation and the actual state observation values, and the log likelihood ratio (LLR) test based on probability density function of state-measurement was set up. Experimental results based on real GNSS data demonstrate that the algorithm can estimate the state precisely under non-Gaussian measurement noise, detect and isolate GPS satellite failures successfully and solve the performance degradation problem of RAIM algorithm based on Kalman filter. Therefore, experimental results validate the validity of SIR particle filtering state estimation and smoothed residual for RAIM.
机译:该研究提出了一种基于SIR粒子滤波状态估计和用于GPS接收器自主完整性监测(RAIM)的平滑残差的新方法,其采用了状态估计和实际状态观测值所获得的理想观测值与日志之间的差值建立了基于状态测量概率密度函数的似然比(LLR)测试。基于真实GNSS数据的实验结果表明,该算法可以在非高斯测量噪声下精确地估计状态,检测和隔离GPS卫星故障,并解决基于卡尔曼滤波器的Raim算法的性能劣化问题。因此,实验结果验证了SIR粒子滤波状态估计的有效性,并为RAIM平滑残留物。

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