Improving a Planner’s Performance through Online Heuristic Configuration of Domain Models

Authors

  • Mauro Vallati University of Huddersfield
  • Lukás Chrpa Czech Technical University in Prague and Charles University in Prague
  • Thomas McCluskey University of Huddersfield

DOI:

https://doi.org/10.1609/socs.v8i1.18412

Abstract

The separation of planner logic from domain knowledge supports the use of reformulation and configuration techniques, such as macro-actions and entanglements, which transform the model representation in order to improve a planner’s performance. One drawback of such an approach is that it may require a potentially expensive training phase. In this paper, we introduce heuristic approaches for the online configuration of planning domain models. The proposed heuristics consider different aspects of PDDL-encoded operators for reordering such operators in the domain model, relying on the assumption that the way in which operators are encoded carries useful information about their expected use.

Downloads

Published

2021-09-01