Inertial measurement units are widely used in different fields to estimate the attitude. Many algorithms have been proposed to improve estimation performance. However, most of them still suffer from 1) inaccurate initial estimation, 2) inaccurate initial filter gain, and 3) non-Gaussian process and/or measurement noise. In this paper, we leverage reinforcement learning to compensate for the classical extended Kalman filter estimation, i.e., to learn the filter gain from the sensor measurements. We also analyse the convergence of the estimate error. The effectiveness of the proposed algorithm is validated on both simulated data and real data.
翻译:惰性测量单位被广泛用于不同领域以估计态度,许多算法被提议改进估计性能,但是,大多数算法仍然受到以下因素的影响:(1) 初步估计不准确,(2) 初步过滤得益不准确,(3) 非Gausian过程和/或测量噪音。在本文中,我们利用强化学习来补偿古典的Kalman过滤性估计,即从传感器测量中学习过滤器的收益。我们还分析了估计误差的趋同情况。拟议的算法的有效性在模拟数据和真实数据上都得到了验证。