Multi-agent path planning (MAPP) in continuous spaces is a challenging problem with significant practical importance. One promising approach is to first construct graphs approximating the spaces, called roadmaps, and then apply multi-agent pathfinding (MAPF) algorithms to derive a set of conflict-free paths. While conventional studies have utilized roadmap construction methods developed for single-agent planning, it remains largely unexplored how we can construct roadmaps that work effectively for multiple agents. To this end, we propose a novel concept of roadmaps called cooperative timed roadmaps (CTRMs). CTRMs enable each agent to focus on its important locations around potential solution paths in a way that considers the behavior of other agents to avoid inter-agent collisions (i.e., "cooperative"), while being augmented in the time direction to make it easy to derive a "timed" solution path. To construct CTRMs, we developed a machine-learning approach that learns a generative model from a collection of relevant problem instances and plausible solutions and then uses the learned model to sample the vertices of CTRMs for new, previously unseen problem instances. Our empirical evaluation revealed that the use of CTRMs significantly reduced the planning effort with acceptable overheads while maintaining a success rate and solution quality comparable to conventional roadmap construction approaches.
翻译:连续空间的多试剂路径规划(MAPP)是一个具有重大实际重要性的挑战性问题。一种有希望的方法是首先绘制接近空间的图表,称为路线图,然后采用多试剂路径算法,得出一套无冲突路径。虽然常规研究使用了为单一试剂规划开发的路线图构建方法,但基本上仍未探索我们如何能够为多个试剂制定有效的路线图。为此,我们提出了一个名为合作定时路线图(CTRMs)的路线图新概念。CTRMS使每个试剂能够关注其围绕潜在解决方案路径的重要位置,以考虑其他试剂的行为,避免机构间碰撞(即“合作”),同时在时间方向上加以扩大,以便容易地得出“定时”解决方案路径。为了建立CTRMS,我们开发了一种机器学习方法,从收集相关问题实例和可信解决方案中学习一个归正模型,然后利用所学到的模型,将CTRMS的顶点作为样本,用于新的、先前不可见的试探究的试样。我们的经验性评估显示,将CTRMS的顶点用于新的、可比较的路径,同时以可接受的路径规划。我们的经验评估的方法显示,将降低了常规的建造速度。