Zhang Shengzhi, Yu Shuai, Liu Chaojun, Yuan Xuebing, Liu Sheng
School of Mechanical & Engineering, Huazhong University of Science & Technology, Wuhan 430074, China.
School of Power and Mechanical Engineering, Wuhan University, Wuhan 430072, China.
Sensors (Basel). 2016 Feb 20;16(2):264. doi: 10.3390/s16020264.
To provide a long-time reliable orientation, sensor fusion technologies are widely used to integrate available inertial sensors for the low-cost orientation estimation. In this paper, a novel dual-linear Kalman filter was designed for a multi-sensor system integrating MEMS gyros, an accelerometer, and a magnetometer. The proposed filter precludes the impacts of magnetic disturbances on the pitch and roll which the heading is subjected to. The filter can achieve robust orientation estimation for different statistical models of the sensors. The root mean square errors (RMSE) of the estimated attitude angles are reduced by 30.6% under magnetic disturbances. Owing to the reduction of system complexity achieved by smaller matrix operations, the mean total time consumption is reduced by 23.8%. Meanwhile, the separated filter offers greater flexibility for the system configuration, as it is possible to switch on or off the second stage filter to include or exclude the magnetometer compensation for the heading. Online experiments were performed on the homemade miniature orientation determination system (MODS) with the turntable. The average RMSE of estimated orientation are less than 0.4° and 1° during the static and low-dynamic tests, respectively. More realistic tests on two-wheel self-balancing vehicle driving and indoor pedestrian walking were carried out to evaluate the performance of the designed MODS when high accelerations and angular rates were introduced. Test results demonstrate that the MODS is applicable for the orientation estimation under various dynamic conditions. This paper provides a feasible alternative for low-cost orientation determination.
为了提供长期可靠的方位信息,传感器融合技术被广泛用于集成现有的惯性传感器,以进行低成本的方位估计。本文针对一个集成了MEMS陀螺仪、加速度计和磁力计的多传感器系统,设计了一种新型双线性卡尔曼滤波器。所提出的滤波器排除了磁干扰对方位中航向所受俯仰和横滚的影响。该滤波器能够针对传感器的不同统计模型实现稳健的方位估计。在磁干扰下,估计姿态角的均方根误差(RMSE)降低了30.6%。由于较小的矩阵运算降低了系统复杂度,平均总耗时减少了23.8%。同时,分离式滤波器为系统配置提供了更大的灵活性,因为可以开启或关闭第二阶段滤波器,以包含或排除对航向的磁力计补偿。利用转台在自制的微型方位测定系统(MODS)上进行了在线实验。在静态和低动态测试期间,估计方位的平均RMSE分别小于0.4°和1°。进行了更贴近实际的两轮自平衡车辆行驶和室内行人行走测试,以评估在引入高加速度和角速率时所设计的MODS的性能。测试结果表明,MODS适用于各种动态条件下的方位估计。本文为低成本方位测定提供了一种可行的替代方案。