论文标题
Sribo:飞行机器人的高效且有弹性的单距离和惯性的进程
SRIBO: An Efficient and Resilient Single-Range and Inertia Based Odometry for Flying Robots
论文作者
论文摘要
仅当轨迹处于某些模式以确保可观察性时,通常认为使用一个惯性测量单元和一个范围传感器定位是可行的。因此,要追求可观察到的模式,需要长时间的间隔令人兴奋或搜索关键节点,这通常是高度非线性的,也可能缺乏弹性。因此,这种定位方法在现实世界应用中仍未被广泛接受。为了解决这个问题,这项工作首先研究了考虑空中阻力效应的飞行机器人的耗散性质,并重新形成了相应的定位问题,这几乎可以确保可观察到。在此基础上,相应地提出了减少尺寸的蠕动估计器。该估计器以阶梯式的方式滑动估计范围,并且可以根据历史估计序列对输出矩阵进行近似评估。然后,使用多项式配件通过还原方法进一步降低了计算复杂性。通过这种方式,机器人的状态可以通过线性编程以足够长的间隔来估算,并且可观察性的程度进一步增强,因为每个估计都可以使用足够的测量值。随后,从理论上证明了估计器的收敛性和数值稳定性。最后,室内和室外实验都验证了所提出的估计器可以以每秒数百个Hertz的速度实现分解值级的精度,并且对传感器的失败有弹性。希望这项研究可以提供一种新的实用方法来进行自定位,以及具有低成本和轻质传感器的合作社的相对定位。
Positioning with one inertial measurement unit and one ranging sensor is commonly thought to be feasible only when trajectories are in certain patterns ensuring observability. For this reason, to pursue observable patterns, it is required either exciting the trajectory or searching key nodes in a long interval, which is commonly highly nonlinear and may also lack resilience. Therefore, such a positioning approach is still not widely accepted in real-world applications. To address this issue, this work first investigates the dissipative nature of flying robots considering aerial drag effects and re-formulates the corresponding positioning problem, which guarantees observability almost surely. On this basis, a dimension-reduced wriggling estimator is proposed accordingly. This estimator slides the estimation horizon in a stepping manner, and output matrices can be approximately evaluated based on the historical estimation sequence. The computational complexity is then further reduced via a dimension-reduction approach using polynomial fittings. In this way, the states of robots can be estimated via linear programming in a sufficiently long interval, and the degree of observability is thereby further enhanced because an adequate redundancy of measurements is available for each estimation. Subsequently, the estimator's convergence and numerical stability are proven theoretically. Finally, both indoor and outdoor experiments verify that the proposed estimator can achieve decimeter-level precision at hundreds of hertz per second, and it is resilient to sensors' failures. Hopefully, this study can provide a new practical approach for self-localization as well as relative positioning of cooperative agents with low-cost and lightweight sensors.