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Fault detection and isolation in GPS receiver autonomous integrity monitoring based on chaos particle swarm optimization-particle filter algorithm

机译:基于混沌粒子群优化-粒子滤波算法的GPS接收机自主完整性监测中的故障检测与隔离

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摘要

The receiver autonomous integrity monitoring (RAIM) is one of the most important parts in an avionic navigation system. Two problems need to be addressed to improve this system, namely, the degeneracy phenomenon and lack of samples for the standard particle filter (PF). However, the number of samples cannot adequately express the real distribution of the probability density function (i.e., sample impoverishment). This study presents a GPS receiver autonomous integrity monitoring (RAIM) method based on a chaos particle swarm optimization particle filter (CPSO-PF) algorithm with a log likelihood ratio. The chaos sequence generates a set of chaotic variables, which are mapped to the interval of optimization variables to improve particle quality. This chaos perturbation overcomes the potential for the search to become trapped in a local optimum in the particle swarm optimization (PSO) algorithm. Test statistics are configured based on a likelihood ratio, and satellite fault detection is then conducted by checking the consistency between the state estimate of the main PF and those of the auxiliary PFs. Based on GPS data, the experimental results demonstrate that the proposed algorithm can effectively detect and isolate satellite faults under conditions of non-Gaussian measurement noise. Moreover, the performance of the proposed novel method is better than that of RAIM based on the PF or PSO-PF algorithm.
机译:接收机自主完整性监控(RAIM)是航空电子导航系统中最重要的部分之一。需要改善此系统的两个问题,即简并现象和标准粒子过滤器(PF)的样本不足。但是,样本数量不能充分表达概率密度函数的实际分布(即样本贫困)。这项研究提出了一种GPS接收机自主完整性监测(RAIM)方法,该方法基于具有对数似然比的混沌粒子群优化粒子滤波器(CPSO-PF)算法。混沌序列生成一组混沌变量,将其映射到优化变量的间隔以提高粒子质量。这种混沌扰动克服了粒子群优化(PSO)算法中搜索陷入局部最优的可能性。根据似然比配置测试统计信息,然后通过检查主PF和辅助PF的状态估计之间的一致性来进行卫星故障检测。实验结果表明,基于GPS数据,该算法可以有效地检测和隔离非高斯测量噪声条件下的卫星故障。此外,所提出的新方法的性能优于基于PF或PSO-PF算法的RAIM。

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