International Conference on Automated Planning and Scheduling (ICAPS) 2014
We introduce a novel algorithm for temporal planning in Golog using shared resources, and describe the Bulk Freight Rail Scheduling Problem, a motivating example of such a temporal domain. By combining a decomposition with a master linear program to guide the sub-problems, we maintain completeness and optimality and succeed in combining the global view of a linear programming relaxation; the strength of search in finding action sequences; and the domain knowledge that can be encoded in a Golog program. We show that our approach significantly outperforms state-of-the-art temporal planning and constraint programming approaches in this domain, in addition to existing temporal Golog implementations. We also apply our algorithm to a temporal variant of blocks-world where our decomposition speeds proof of optimality significantly compared to other anytime algorithms.