论文标题
SO(3)的非线性态度过滤器:快速适应和鲁棒性
Nonlinear Attitude Filter on SO(3): Fast Adaptation and Robustness
论文作者
论文摘要
与高斯态度过滤器和其他态度确定方法相比,非线性态度过滤器已被认为具有更简单的结构和更好的跟踪性能。非线性态度滤波器设计的关键要素是误差标准的选择。非线性态度过滤器的常规设计在快速适应和鲁棒性之间取决于权衡。在这项工作中,提出了一种基于模糊规则的新功能方法,用于在线连续调整非线性态度过滤器适应增益。使用人工蜜蜂菌落优化算法可以考虑态度误差和态度误差的变化率,可以最佳调整输入和输出成员资格功能。提出的方法是在误差较大的情况下高适应性增益和小误差的少量适应增益的结果。因此,提出的方法允许具有高度鲁棒性的快速收敛性。仿真结果表明,所提出的方法为初始化和不确定测量值的较大误差提供了鲁棒和高收敛的能力。
Nonlinear attitude filters have been recognized to have simpler structure and better tracking performance when compared with Gaussian attitude filters and other methods of attitude determination. A key element of nonlinear attitude filter design is the selection of error criteria. The conventional design of nonlinear attitude filters has a trade-off between fast adaptation and robustness. In this work, a new functional approach based on fuzzy rules for on-line continuous tuning of the nonlinear attitude filter adaptation gain is proposed. The input and output membership functions are optimally tuned using artificial bee colony optimization algorithm taking into account both attitude error and rate of change of attitude error. The proposed approach results of high adaptation gain at large error and small adaptation gain at small error. Thereby, the proposed approach allows fast convergence properties with high measures of robustness. The simulation results demonstrate that the proposed approach offers robust and high convergence capabilities against large error in initialization and uncertain measurements.