Multi-agent path planning (MAPP) is the problem of planning collision-free trajectories from start to goal locations for a team of agents. This work explores a relatively unexplored setting of MAPP where streams of agents have to go through the starts and goals with high throughput. We tackle this problem by formulating a new variant of MAPP called periodic MAPP in which the timing of agent appearances is periodic. The objective with periodic MAPP is to find a periodic plan, a set of collision-free trajectories that the agent streams can use repeatedly over periods, with periods that are as small as possible. To meet this objective, we propose a solution method that is based on constraint relaxation and optimization. We show that the periodic plans once found can be used for a more practical case in which agents in a stream can appear at random times. We confirm the effectiveness of our method compared with baseline methods in terms of throughput in several scenarios that abstract autonomous intersection management tasks.
翻译:多试剂路径规划(MAPP)是一组物剂从开始到目标地点规划无碰撞轨迹的问题。 这项工作探索了MAPP相对未探索的场景, 在那里, 物剂流必须经过起点和目标, 并经过很高的吞吐量。 我们通过制定新的MAPP的变体来解决这个问题, 称作定期MAPP, 其代理物出现的时间是定期的。 定期MAPP的目标是找到一个定期计划, 一套无碰撞轨迹, 其周期性轨道, 由各种物剂流在尽可能小的时期中反复使用。 为了实现这一目标, 我们提出了一个基于限制、 放松和优化的解决方案。 我们显示, 曾经发现的定期计划可以用于一个更实际的案例中, 即流中的物剂可以在随机的时间出现。 我们确认我们的方法与基准方法相比, 在抽象的自主交叉管理任务中, 的吞吐方法的有效性。