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Approach for Detecting Soft Faults in GPS/INS Integrated Navigation based on LS-SVM and AIME

机译:基于LS-SVM和AIME的GPS / INS组合导航软故障检测方法

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摘要

In life-critical applications, the real-time detection of faults is very important in Global Positioning System/Inertial Navigation System (GPS/INS) integrated navigation systems. A new fault detection method for soft fault detection is developed in this paper with the purpose of improving real-time performance. In general, the innovation information obtained from a Kalman filter is used for test statistic calculations in Autonomous Integrity Monitored Extrapolation (AIME). However, the innovation of the Kalman filter is degraded by error tracking and closed-loop correction effects, leading to time delays in soft fault detection. Therefore, the key issue of improving real-time performance is providing accurate innovation to AIME. In this paper, the proposed algorithm incorporates Least Squares-Support Vector Machine (LS-SVM) regression theory into AIME. Because the LS-SVM has a good regression and prediction performance, the proposed method provides replaced innovation obtained from the LS-SVM driven by real-time observation data. Based on the replaced innovation, the test statistics can follow fault amplitudes more accurately; finally, the real-time performance of soft fault detection can be improved. Theoretical analysis and physical simulations demonstrate that the proposed method can effectively improve the detection instantaneity.
机译:在对生命至关重要的应用中,故障的实时检测在全球定位系统/惯性导航系统(GPS / INS)集成导航系统中非常重要。为了提高实时性,本文提出了一种新的软故障检测方法。通常,从卡尔曼滤波器获得的创新信息用于自主完整性监控外推(AIME)中的测试统计计算。但是,误差跟踪和闭环校正效果会降低Kalman滤波器的创新性,从而导致软故障检测中的时间延迟。因此,提高实时性能的关键问题是为AIME提供准确的创新。在本文中,该算法将最小二乘支持向量机(LS-SVM)回归理论纳入了AIME。由于LS-SVM具有良好的回归和预测性能,因此该方法提供了由实时观测数据驱动的从LS-SVM获得的替代创新。基于替代的创新,测试统计信息可以更准确地跟踪故障幅度;最后,可以提高软故障检测的实时性。理论分析和物理仿真表明,该方法可以有效提高检测的瞬时性。

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