Overview: A Hierarchical Framework for Plan Generation and Execution in Multi-Robot Systems
This addresses coordination challenges in multi-robot systems for long-term autonomy, though it appears incremental as it builds on existing temporal network methods.
The authors developed a hierarchical framework for coordinating task- and motion-level operations in multi-robot systems, using simple temporal networks to handle precedence and kinematic constraints, which provides scalable plan generation and execution with absorption of imperfect executions to avoid re-planning.
The authors present an overview of a hierarchical framework for coordinating task- and motion-level operations in multirobot systems. Their framework is based on the idea of using simple temporal networks to simultaneously reason about precedence/causal constraints required for task-level coordination and simple temporal constraints required to take some kinematic constraints of robots into account. In the plan-generation phase, the framework provides a computationally scalable method for generating plans that achieve high-level tasks for groups of robots and take some of their kinematic constraints into account. In the plan-execution phase, the framework provides a method for absorbing an imperfect plan execution to avoid time-consuming re-planning in many cases. The authors use the multirobot path-planning problem as a case study to present the key ideas behind their framework for the long-term autonomy of multirobot systems.