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首页> 外文期刊>The Journal of Navigation >Network-based Collaborative Navigation in GPS-Denied Environment
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Network-based Collaborative Navigation in GPS-Denied Environment

机译:GPS拒绝环境中基于网络的协同导航

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摘要

Global Positioning System (GPS) has been used as a primary source of navigation in land and airborne applications. However, challenging environments cause GPS signal blockage or degradation, and prevent reliable and seamless positioning and navigation using GPS only. Therefore, multi-sensor based navigation systems have been developed to overcome the limitations of GPS by adding some forms of augmentation. The next step towards assured robust navigation is to combine information from multiple ground-users, to further improve the chance of obtaining reliable navigation and positioning information. Collaborative (or cooperative) navigation can improve the individual navigation solution in terms of both accuracy and coverage, and may reduce the system's design cost, as equipping all users with high performance multi-sensor positioning systems is not cost effective. Generally, ' Collaborative Navigation uses inter-nodal range measurements between platforms (users) to strengthen the navigation solution. In the collaborative navigation approach, the inter-nodal distance vectors from the known or more accurate positions to the unknown locations can be established. Therefore, the collaborative navigation technique has the advantage in that errors at the user's position can be compensated by other known (or more accurate) positions of other platforms, and may result in the improvement of the navigation solutions for the entire group of users. In this paper, three statistical network-based collaborative navigation algorithms, the Restricted Least-Squares Solution (RLESS), the Stochastic Constrained Least-Squares Solution (SCLESS) and the Best Linear Minimum Partial Bias Estimation (BLIMPBE) are proposed and compared to the Kalman filter. The proposed statistical collaborative navigation algorithms for network solution show better performance than the Kalman filter.
机译:全球定位系统(GPS)已被用作陆地和机载应用中的主要导航来源。但是,充满挑战的环境会导致GPS信号阻塞或降级,并且仅使用GPS会阻止可靠,无缝的定位和导航。因此,已经开发了基于多传感器的导航系统以通过添加某种形式的增强来克服GPS的局限性。保证可靠导航的下一步是合并来自多个地面用户的信息,以进一步提高获得可靠导航和定位信息的机会。协作式(或协作式)导航可以在准确性和覆盖范围方面改善单个导航解决方案,并且可以降低系统的设计成本,因为为所有用户配备高性能的多传感器定位系统并不划算。通常,“协作导航”使用平台(用户)之间的节点间距离测量来增强导航解决方案。在协作导航方法中,可以建立从已知或更准确的位置到未知位置的节点间距离矢量。因此,协作导航技术的优点在于,可以通过其他平台的其他已知(或更准确)的位置来补偿用户位置处的错误,并且可以导致针对整个用户组的导航解决方案的改进。本文提出了三种基于统计网络的协同导航算法,即约束最小二乘解(RLESS),随机约束最小二乘解(SCLESS)和最佳线性最小局部偏差估计(BLIMPBE),并与之进行了比较。卡尔曼滤波器。提出的用于网络解决方案的统计协作导航算法比Kalman滤波器具有更好的性能。

著录项

  • 来源
    《The Journal of Navigation 》 |2012年第3期| 445-457| 共13页
  • 作者单位

    Satellite Positioning and Inertial Navigation [SPIN] Laboratory, Department of Civil and Environmental Engineering and Geodetic Science, The Ohio State University,Ohio, USA,Division of Geodetic Science, School of Earth Science, The Ohio State University, Ohio, USA;

    Satellite Positioning and Inertial Navigation [SPIN] Laboratory, Department of Civil and Environmental Engineering and Geodetic Science, The Ohio State University,Ohio, USA;

    Satellite Positioning and Inertial Navigation [SPIN] Laboratory, Department of Civil and Environmental Engineering and Geodetic Science, The Ohio State University,Ohio, USA,Center for Mapping, The Ohio State University, Ohio, USA;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    collaborative navigation; network-based estimation; RLESS, SCLESS; BLIMPBE; kalman filter;

    机译:协同导航;基于网络的估计;少;少BLIMPBE;卡尔曼滤波器;

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