基于SO(3)的实时非线性互补滤波用于小型航空机器人姿态估计

M. Saealal, Dafizal Derawi, Nurul Dayana Salim, M. Tumari
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引用次数: 3

摘要

本文提出了一种强大的非线性互补滤波器NCF SO(3)在特殊旋转矩阵正交群上的实时实现,用于姿态估计。它融合了来自加速度计、磁力计和陀螺仪传感器的原始数据,以获得可靠的实时姿态估计。采用陀螺仪作为姿态估计的主传感器,另外两个传感器用于陀螺仪漂移误差的校正。本文探讨了NCF SO(3)在高动态机动中的实时性能。通过实时实验,将其与传统的扩展卡尔曼滤波(EKF)进行性能比较,以利用NCF SO(3)在机载处理器内存有限的小型航空机器人情况下的积极特性。实验结果表明,与EKF相比,所提出的实时滤波器具有良好的姿态估计数据,并且可以降低计算成本。因此,它适用于机载处理器内存有限的小型航空机器人。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real-Time Nonlinear Complementary Filter on SO(3) for Attitude Estimation of Small-Scale Aerial Robot
This paper presents the real-time implementation of a powerful nonlinear complementary filter on special orthogonal group of rotation matrices, called as NCF SO(3) for attitude estimation. It fuses the raw data from accelerometers, magnetometer, and gyroscopes sensors to get reliable real-time attitude estimation. Gyroscopes is used as the main sensor for attitude estimation and another two sensors are used to correct drift error of gyroscopes. In this paper, the performance of NCF SO(3) is explored on performance in highly dynamic manoeuvres in real-time. Real-time experiments were conducted to compare its performance with conventional Extended Kalman Filter (EKF) to exploit the positive features of NCF SO(3) for small-scale aerial robot with limited on-board processor memory cases. The experimental results show the proposed real-time filter has excellent estimated attitude data and can reduce the computational cost, compared to EKF. Thus, it is suitable for small-scale aerial robot which has memory limitation of on-board processor.
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