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Automata-based Optimal Planning with Relaxed Specifications

2021-07-28 21:37:27
Disha Kamale, Eleni Karyofylli, Cristian-Ioan Vasile

Abstract

In this paper, we introduce an automata-based framework for planning with relaxed specifications. User relaxation preferences are represented as weighted finite state edit systems that capture permissible operations on the specification, substitution and deletion of tasks, with complex constraints on ordering and grouping. We propose a three-way product automaton construction method that allows us to compute minimal relaxation policies for the robots using standard shortest path algorithms. The three-way automaton captures the robot's motion, specification satisfaction, and available relaxations at the same time. Additionally, we consider a bi-objective problem that balances temporal relaxation of deadlines within specifications with changing and deleting tasks. Finally, we present the runtime performance and a case study that highlights different modalities of our framework.

Abstract (translated)

URL

https://arxiv.org/abs/2107.13650

PDF

https://arxiv.org/pdf/2107.13650.pdf


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