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首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >ADAPTIVE STRATEGY-BASED TIGHTLY-COUPLED INS/GNSS INTEGRATION SYSTEM AIDED BY ODOMETER AND BAROMETER
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ADAPTIVE STRATEGY-BASED TIGHTLY-COUPLED INS/GNSS INTEGRATION SYSTEM AIDED BY ODOMETER AND BAROMETER

机译:测度计和气压计辅助的基于策略的紧密耦合INS / GNSS集成系统

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Inertial Navigation System/Global Navigation Satellite System (INS/GNSS) integration system have been widely applied in recent years. Unfortunately, it sometimes malfunctions and the performance heavily deteriorates, especially in urban area where signals from satellites may be blocked or reflected by modern buildings. In multipath or Non Light-of-sight (NLOS) environment, incorrect signal results in poor observability of GNSS measurement model in Kalman Filter (KF). For purpose of addressing the issue, we proposed an adaptive strategy-based tightly-coupled INS/GNSS integration system aided by odometer and barometer, targeting to mitigate the error from poor observability. In this method, tightly-coupled (TC) scheme is implemented as the fundamental system in order to increase the reliability and stability. TC is more suitable than Loosely-coupled (LC), the traditional scheme, in urban navigation because it requires less visible GNSS measurement and it overcomes the disadvantage of LC, and further enhances the navigation result. Furthermore, aiding sensors such as odometer and barometer are integrated in this system as well, serving as velocity and height constraints respectively. Since the precision of GNSS positioning depends on the properties of the environment, measurement model of KF must work adaptively. Thus, innovation-based Adaptive Scaled Estimation (IASE) and Residual-based Adaptive Scaled Estimation (RASE), are also implemented to improve navigation performance in this paper. Finally, from the experimental validation, the proposed adaptive sensor-fusion navigation algorithm significantly enhanced the performance. The improvement was approximate 80% compared with the pure TC scheme; the RMSE can reach 6m in 3D and 2.5?m in vertical.
机译:惯性导航系统/全球导航卫星系统(INS / GNSS)集成系统近年来已得到广泛应用。不幸的是,有时它会发生故障并且性能会严重下降,尤其是在城市地区,现代建筑可能会阻挡或反射来自卫星的信号。在多径或非视距(NLOS)环境中,错误的信号会导致Kalman滤波器(KF)中GNSS测量模型的可观察性较差。为了解决该问题,我们提出了一种基于里程表和气压计的,基于策略的自适应紧耦合INS / GNSS集成系统,旨在减轻可观察性差带来的误差。在这种方法中,紧密耦合(TC)方案被实现为基本系统,以提高可靠性和稳定性。 TC比传统方案松散耦合(LC)更适合城市导航,因为它需要较少的GNSS测量值,并且克服了LC的缺点,并进一步提高了导航效果。此外,辅助传感器(如里程表和气压计)也集成在该系统中,分别用作速度和高度约束。由于GNSS定位的精度取决于环境的特性,因此KF的测量模型必须自适应地工作。因此,本文还实现了基于创新的自适应缩放估计(IASE)和基于残差的自适应缩放估计(RASE),以提高导航性能。最后,通过实验验证,提出的自适应传感器融合导航算法显着提高了性能。与纯TC方案相比,改进了大约80%; RMSE的3D分辨率可达6m,垂直分辨率可达2.5µm。

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