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Fast Task Allocation of Heterogeneous Robots with Temporal Logic and Inter-Task Constraints

Lin Li, Ziyang Chen, Hao Wang, Zhen Kan

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Abstract

This work develops a fast task allocation framework for heterogeneous multi-robot systems subject to both temporal logic and inter-task constraints. The considered inter-task constraints include unrelated tasks, compatible tasks, and exclusive tasks. To specify such inter-task relationships, we extend conventional atomic proposition to batch atomic propositions, which gives rise to the LTLT formula. The Task Batch Planning Decision Tree (TB-PDT) is then developed, which is a variant of conventional decision tree specialized for temporal logic and inter-task constraints. The TB-PDT is built incrementally to represent the task progress and does not require sophisticated product automaton, which significantly reduces the search space. Based on TB-PDT, the search algorithm, namely Intensive Inter- task Relationship Tree Search (IIRTS), is developed for the fast task allocation of heterogeneous multi-robot systems. It is shown that the solution time of finding a satisfactory task allocation grows almost quadratically with the number of automaton states. Extensive simulation and experiment demonstrate the validity, the effectiveness, and the transferability of IIRTS.

Index terms

Formal Methods in Robotics and Automation Task Planning Multi-Robot Systems