We investigate upper bounds on the length of cost optimal plans that are valid for problems with 0-cost actions. We employ these upper bounds as horizons for a SAT-based encoding of planning with costs. Given an initial upper bound on the cost of the optimal plan, we experimentally show that this SAT-based approach is able to compute plans with better costs, and in many cases it can match the optimal cost. Also, in multiple instances, the approach is successful in proving that a certain cost is the optimal plan cost.
翻译:我们调查适用于0成本行动问题的成本最佳计划长度的上限。 我们将这些上限作为基于SAT的规划成本编码的视野。 根据对最佳计划成本的初始上限,我们实验性地表明,基于SAT的方法能够以更好的成本计算计划,在许多情况下,它能够与最佳成本相匹配。 此外,在多种情况下,这种方法成功地证明某种成本是最佳计划成本。