基于压缩ekf的MEMS IMU/LADAR组合导航系统优化方法

Y. Hang, Jian-ye Liu, Rong-bing Li, Yongrong Sun, Ting-wan Lei
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引用次数: 3

摘要

微机电系统(MEMS) IMU/ LADAR组合导航是一种新型的自主导航和环境探测方法。在室内环境中具有广阔的应用前景。在MEMS IMU/LADAR组合导航系统中,采用MEMS惯性传感器对车辆运动进行测量。LADAR用于检测环境特征,其输出通过数字滤波器融合,为小型旋翼飞机提供精确的位置和环境映射信息。然而,随着观测到的地标数量的增加,传统的扩展卡尔曼滤波(EKF)的计算量急剧增加,无法满足小型旋翼飞行器实时导航的要求。此外,现有的雷达一般为平面扫描雷达。当飞机姿态发生变化时,不能保证探测飞机保持在水平面上。这使得探测信息耦合姿态角测量存在误差,给组合导航结果带来较大误差。针对上述问题,本文提出了雷达姿态角耦合误差补偿算法。基于压缩ekf (CEKF)算法设计了导航滤波器。并针对MEMS IMU/LADAR组合导航系统设计了实验样机,在室内环境下对CEKF算法进行了验证。实验表明,该算法能有效提高雷达的精度,减少滤波算法的计算量。该研究对小型旋翼机在结构化室内环境下的同步定位与测绘(SLAM)技术具有重要的参考价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimization method of MEMS IMU/LADAR integrated navigation system based on Compressed-EKF
Micro-electromechanical Systems (MEMS) IMU/ LADAR integrated navigation is a new-type autonomous navigation and environment detection method. It has a broad application prospect in the indoor environment. In MEMS IMU/LADAR integrated navigation system, the MEMS inertial sensors are used to measure vehicle movement. The LADAR is used to detect environmental features, and their outputs are fused by a digital filter, to provide precise position and environment mapping information for small rotorcraft. However, with the increasing amounts of observed landmarks, the computation complexity of traditional Extended Kalman Filter (EKF) increase excessively, making it unable to meet the realtime navigation requirement for small rotorcraft. In addition, the existing LADAR is generally planar scanning radar. When the aircraft's attitudes change, there is no guarantee that detecting plane maintains in a horizontal plane. This makes detecting information couple attitude angle measurement errors, and would bring great errors to the integrated navigation results. According to the problems mentioned above, the paper proposes the LADAR's attitude angle coupling error compensation algorithm. The navigation filter is designed based on Compressed-EKF(CEKF) algorithm. And the experimental prototype is designed for MEMS IMU/LADAR integrated navigation system, to verify CEKF algorithm in indoor environment. The tests show that the proposed algorithm can effectively improve the LADAR's precision and decrease the calculation amount of filtering algorithm. The research has significant reference value for small rotorcraft's simultaneous location and mapping (SLAM) technology in the structured indoor environment.
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