基于AR测量建模的组合导航系统数据故障检测方法

Xu Lyu, B. Hu, Jiayu Tian
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引用次数: 0

摘要

为了提高SINS/GPS组合导航系统的可靠性,考虑到传统的残差卡方检测方法在检测小突变和慢突变时效率不高。提出了一种基于AR测量建模的组合导航系统信息故障检测方法。该方法建立了无故障条件下实测数据的AR模型,并结合卡尔曼滤波模型得到实测预测值进行残差计算。避免了传统残差卡方检测方法引入观测污染数据导致检测统计跟踪失败,对故障缓慢变化不敏感,降低了报警损失率对数据可靠性的影响。仿真实验结果表明,将该方法应用于SINS/GPS组合导航系统中,可以有效提高组合导航系统对缓慢变化甚至小尺度故障的容错能力,验证了该算法的有效性。
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The Method of Data Fault Detection of the Integrated Navigation System Based on AR Measurement Modling
Aiming to improve the reliability of the SINS/GPS integrated navigation system, considering that the traditional residual chi-square detection method is not efficient in detecting small mutations and slow mutations. An information fault detection method for integrated navigation system based on AR measurement modeling is proposed. This method establishes an AR model of the measured data under no-fault conditions, and combines the Kalman filter model to obtain the measured predicted value for residual calculation. It avoids that the traditional residual chi-square detection method introduces observation pollution data, which leads to the failure of detection statistics tracking, is insensitive to slowly changing failures, and reduces the impact of alarm loss rate on data reliability. The simulation experiment results show that the application of this method in the SINS/GPS integrated navigation system can effectively improve the fault tolerance of the integrated navigation system against slow changes or even small-scale faults, which verifies the effectiveness of the algorithm.
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