This paper describes resilient navigation and planning algorithm for high-speed autonomous race, Indy Autonomous Challenge (IAC). The IAC is a competition with full-scale autonomous race car that can drive up to 290 km/h(180mph). Due to its high-speed and heavy vibration of the race car, GPS/INS system is prone to be degraded. These degraded GPS measurements can cause a critical localization error leading to a serious crashing accidents. To this end, we propose a robust navigation system to implement multi-sensor fusion Kalman filter. In this study, we present how to identify the degradation of measurement based on probabilistic approaches. Based on this approach, we could compute optimal measurement values for Kalman filter correction step. At the same time, we present the other resilient navigation system so that race car can follow the race track in fatal localization failure situations. In addition, this paper also covers the optimal path planning algorithm for obstacle avoidance. To take account for original optimal racing line, obstacles, vehicle dynamics, we propose a road-graph-based path planning algorithm to guarantee our race car drives in-bounded conditions. In the experiments, we will evaluate our designed localization system can handle the degraded data, and sometimes prevent serious crashing accidents while high-speed driving. In addition, we will describe how we successfully completed the obstacle avoidance challenge.
翻译:本文描述高速自主赛、印度自治挑战(IAC)的弹性导航和规划算法。IAC是一个与全规模自主赛车的竞争,可以开到290公里/小时(180mmph) 。由于GPS/INS系统高速和剧烈振动,因此很容易退化。这些退化的GPS测量方法可能导致一个临界的本地化错误,导致严重的坠毁事故。为此,我们建议建立一个强大的导航系统,以实施多传感器聚变卡尔曼过滤器。在这项研究中,我们提出如何根据概率方法确定测量的退化。根据这种方法,我们可以计算出卡尔曼过滤器校正步的最佳测量值。同时,我们提出其他具有弹性的导航系统,以便让赛车在致命的本地化故障情况下跟踪赛道。此外,本文还涉及避免障碍的最佳路径规划算法。为了考虑原始最佳的赛道、障碍、车辆动态,我们提议了基于路径的路径规划算法,以保障我们的种族汽车驱动器在限制条件下的退化。我们可以通过这种方法计算出最佳的路径算法来保证我们的种族汽车驱动器。我们有时要成功地避免发生严重事故。在进行这样的实验中,我们将评估。我们如何降低的事故。