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Optimal smoothing techniques in aided inertial navigation and surveying systems.

机译:辅助惯性导航和测量系统中的最佳平滑技术。

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摘要

Tactical-grade, low-cost Inertial Navigation Systems (INSs) and Micro-Electro-Mechanical Systems (MEMS) inertial sensors have gained great interests in civilian and commercial fields during the last decade. The Global Positioning System (GPS) is recognized as the ideal complement to INS by offering absolute positioning information and consistent accuracy in open sky to overcome the problem of INS time-dependent error growth. However, GPS suffers from degraded signal acquisition or poor satellite geometry when a vehicle is traveling in urban, dense foliage or canyon areas. In addition, the GPS signals will be totally unavailable in the isolated environments such as tunnels, mines or indoor areas. Hence, alternative aiding instruments or techniques such as odometers, non-holonomic constraints, Zero-velocity Updates (ZUPTs) and Coordinate Updates (CUPTs) become essential to restrict the accumulated time-dependent errors of a stand-alone INS. While Kalman filter is widely employed as the real-time estimation method to fuse the multi-sensor information, optimal smoothing will be utilized as the post-processing methodology to provide better navigation solutions.;In this research, two different fixed-interval smoothing algorithms will be utilized and evaluated. The first algorithm is the Two Filter Smoother (TFS), while the second algorithm is the Rauch-Tung-Streibel Smoother (RTSS). The TFS is performed by combining the results of Forward Kalman Filtering (FKF) and Backward Kalman Filtering (BKF) through minimizing the smoother error covariance. The traditional TFS was not applicable for some INS-based multi-sensor systems because of the high nonlinear characteristics in the INS navigation equations. Thus, the revised TFS algorithm will be derived in details. The performance of Kalman filtering as well as the optimal smoothing methodologies is evaluated in three application conditions: land-vehicle navigation, pipeline surveying, and horizontal/vertical indoor building navigation, surveying and mapping. The integration strategies of INS and the aiding techniques mentioned earlier are proved to be applicable and effective. The results of all investigated applications show that the TFS substantially improve the position estimation accuracy over the corresponding filtered solution. In addition, the estimation efficiency of the TFS is comparable to the commonly used RTSS.
机译:战术级,低成本的惯性导航系统(INSs)和微机电系统(MEMS)惯性传感器在过去十年中已在民用和商业领域引起了极大的兴趣。全球定位系统(GPS)被认为是INS的理想补充,因为它提供了绝对的定位信息和开阔的天空中始终如一的精度,从而克服了INS随时间变化的误差增长的问题。但是,当车辆在市区,茂密的树叶或峡谷地区行驶时,GPS的信号采集质量会下降,卫星的几何形状也会变差。此外,GPS信号在隧道,矿山或室内区域等隔离的环境中将完全不可用。因此,替代性辅助工具或技术,例如里程表,非完整约束,零速度更新(ZUPT)和坐标更新(CUPT),对于限制独立INS随时间而累积的误差至关重要。虽然卡尔曼滤波器被广泛用作融合多传感器信息的实时估计方法,但最佳平滑将用作后处理方法,以提供更好的导航解决方案。在本研究中,两种不同的固定间隔平滑算法将被利用和评估。第一种算法是“双重过滤器平滑器”(TFS),而第二种算法是“劳奇-通-斯特赖贝尔平滑器”(RTSS)。通过最小化更平滑的误差协方差来组合前向卡尔曼滤波(FKF)和后向卡尔曼滤波(BKF)的结果来执行TFS。传统的TFS不适用于某些基于INS的多传感器系统,因为INS导航方程具有很高的非线性特性。因此,将详细推导修改后的TFS算法。在以下三种应用条件下评估了卡尔曼滤波的性能以及最佳的平滑方法:陆地车辆导航,管道测量以及水平/垂直室内建筑物导航,测量和制图。 INS的集成策略和前面提到的辅助技术被证明是适用和有效的。所有研究应用程序的结果均表明,与相应的滤波解决方案相比,TFS大大提高了位置估计的准确性。另外,TFS的估计效率可与常用的RTSS相提并论。

著录项

  • 作者

    Liu, Hang.;

  • 作者单位

    University of Calgary (Canada).;

  • 授予单位 University of Calgary (Canada).;
  • 学科 Engineering Geological.;Remote Sensing.;Engineering Electronics and Electrical.
  • 学位 M.Sc.
  • 年度 2009
  • 页码 183 p.
  • 总页数 183
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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