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首页> 外文期刊>Sensors >Performance Enhancement of a USV INS/CNS/DVL Integration Navigation System Based on an Adaptive Information Sharing Factor Federated Filter
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Performance Enhancement of a USV INS/CNS/DVL Integration Navigation System Based on an Adaptive Information Sharing Factor Federated Filter

机译:基于自适应信息共享因子联合滤波器的USV INS / CNS / DVL集成导航系统的性能增强

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摘要

To improve the ability of autonomous navigation for Unmanned Surface Vehicles (USVs), multi-sensor integrated navigation based on Inertial Navigation System (INS), Celestial Navigation System (CNS) and Doppler Velocity Log (DVL) is proposed. The CNS position and the DVL velocity are introduced as the reference information to correct the INS divergence error. The autonomy of the integrated system based on INS/CNS/DVL is much better compared with the integration based on INS/GNSS alone. However, the accuracy of DVL velocity and CNS position are decreased by the measurement noise of DVL and bad weather, respectively. Hence, the INS divergence error cannot be estimated and corrected by the reference information. To resolve the problem, the Adaptive Information Sharing Factor Federated Filter (AISFF) is introduced to fuse data. The information sharing factor of the Federated Filter is adaptively adjusted to maintaining multiple component solutions usable as back-ups, which can improve the reliability of overall system. The effectiveness of this approach is demonstrated by simulation and experiment, the results show that for the INS/CNS/DVL integrated system, when the DVL velocity accuracy is decreased and the CNS cannot work under bad weather conditions, the INS/CNS/DVL integrated system can operate stably based on the AISFF method.
机译:为了提高无人机的自主导航能力,提出了基于惯性导航系统(INS),天体导航系统(CNS)和多普勒速度测井仪(DVL)的多传感器集成导航。引入CNS位置和DVL速度作为参考信息,以校正INS发散误差。与仅基于INS / GNSS的集成相比,基于INS / CNS / DVL的集成系统的自治性要好得多。但是,DVL的测量噪声和恶劣天气分别会降低DVL速度和CNS位置的精度。因此,不能通过参考信息来估计和校正INS发散误差。为了解决该问题,引入了自适应信息共享因子联合过滤器(AISFF)来融合数据。可以对联邦滤波器的信息共享因子进行自适应调整,以维持可用作备份的多个组件解决方案,从而可以提高整个系统的可靠性。仿真和实验验证了该方法的有效性。结果表明,对于INS / CNS / DVL集成系统,当DVL速度精度降低且CNS在恶劣天气条件下无法工作时,INS / CNS / DVL集成系统将失效。系统可以基于AISFF方法稳定运行。

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