A Practical Approach to Discretised PDDL+ Problems by Translation to Numeric Planning
Percassi, Francesco (University of Huddersfield) | Scala, Enrico (University of Brescia) | Vallati, Mauro (a:1:{s:5:"en_US";s:26:"University of Huddersfield";})
–Journal of Artificial Intelligence Research
PDDL+ models are advanced models of hybrid systems and the resulting problems are notoriously difficult for planning engines to cope with. An additional limiting factor for the exploitation of PDDL+ approaches in real-world applications is the restricted number of domain-independent planning engines that can reason upon those models. With the aim of deepening the understanding of PDDL+ models, in this work, we study a novel mapping between a time discretisation of pddl+ and numeric planning as for PDDL2.1 (level 2). The proposed mapping not only clarifies the relationship between these two formalisms but also enables the use of a wider pool of engines, thus fostering the use of hybrid planning in real-world applications. Our experimental analysis shows the usefulness of the proposed translation and demonstrates the potential of the approach for improving the solvability of complex PDDL+ instances.
Journal of Artificial Intelligence Research
Jan-6-2023
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