We present a hierarchical framework based on graph search and model predictive control (MPC) for electric autonomous vehicle (EAV) parking maneuvers in a tight environment. At high-level, only static obstacles are considered, and the scenario-based hybrid A* (SHA*), which is faster than the traditional hybrid A*, is designed to provide an initial guess (also known as a global path) for the parking task. To extract the velocity and acceleration profile from an initial guess, an optimal control problem (OCP) is built. At the low level, an NMPC-based strategy is used to avoid dynamic obstacles (also known as local planning). The efficacy of SHA* is evaluated through 148 different simulation schemes and the proposed hierarchical parking framework is demonstrated through a real-time parallel parking simulation.
翻译:我们提出了一个基于图表搜索和模型预测控制(MPC)的等级框架,用于在紧凑的环境中使用自动机动车辆(EAV)的泊车操作;在高层次上,只考虑静态障碍;基于情景的混合A*(SHA*)比传统的混合A*(SHA*)更快,旨在为泊车任务提供初步猜测(也称为全球路径);为了从最初的猜测中提取速度和加速度剖面,建立了一个最佳控制问题(OCP);在低层次上,以NMPC为基础的战略被用来避免动态障碍(也称为地方规划);通过148个不同的模拟计划对SHA*(SHA*)进行评估,通过实时平行的泊车模拟来展示拟议的等级停车框架。