Accurate velocity estimation is key to vehicle control. While the literature describes how model-based and learning-based observers are able to estimate a vehicle's velocity in normal driving conditions, the challenge remains to estimate the velocity in near-limits maneuvers while using only conventional in-car sensors. In this paper, we introduce a novel neural network architecture based on Long Short-Term Memory (LSTM) networks to accurately estimate the vehicle's velocity in different driving conditions, including maneuvers at the limits of handling. The approach has been tested on real vehicle data and it provides more accurate estimations than state-of-the-art model-based and learning-based methods, for both regular and near-limits driving scenarios. Our approach is robust since the performance of the state-of-the-art observers deteriorates with higher dynamics, while our method adapts to different maneuvers, providing accurate estimations even at the vehicle's limits of handling.
翻译:精确的速度估计是车辆控制的关键。虽然文献介绍了基于模型和基于学习算法的观测器可以在正常驾驶条件下估计车辆速度,但是在接近极限驾驶时仍然面临着使用车载传感器进行速度估计的挑战。在本文中,我们介绍了一种基于长短期记忆(LSTM)网络的新型神经网络架构,以精确估算不同驾驶条件下车辆的速度,包括在极限处理的驾驶情况下。该方法已在真实车辆数据上进行了测试,并且相对于现有的基于模型和基于学习算法的方法,它提供了更准确的估计,适用于常规和接近极限的驾驶情况。我们的方法是鲁棒的,因为现有观测器的性能会随着更高动态下降,而我们的方法可以适应不同的操作,即使在车辆处理的极限情况下也能提供精确的估计。