Subgoal ordering and granularity control for incremental planning

Chih-Wei Hsu, Yixin Chen
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引用次数: 8

Abstract

In this paper, we study strategies in incremental planning for ordering and grouping subproblems partitioned by the subgoals of a planning problem when each sub-problem is solved by a basic planner. To generate a rich set of partial orders for ordering subproblems, we propose a new ordering algorithm based on a relaxed plan built from the initial state to the goal state. The new algorithm considers both the initial and the goal states and can effectively order subgoals in such a way that greatly reduces the number of invalidations during incremental planning. We have also considered trade-offs between the granularity of the subgoal sets and the complexity of solving the overall planning problem. We show an optimal region of grain size that minimizes the total complexity of incremental planning. We propose an efficient strategy to dynamically adjust the grain size in partitioning in order to operate in this optimal region. We further evaluate a redundant-execution scheme that uses two different subgoal orders in order to improve the quality of the plans generated without greatly sacrificing run-time efficiency. Experimental results on using three basic planners (metric-FF, YAHSP, and LPG-TD-speed) show that our strategies are general for improving the time and quality of each of these planners across various benchmarks
增量计划的子目标排序和粒度控制
本文研究了按规划问题的子目标划分的排序和分组子问题的增量规划策略,其中每个子问题都由基本规划者解决。为了生成排序子问题的丰富偏序集,提出了一种基于从初始状态到目标状态的松弛规划的排序算法。该算法同时考虑了初始状态和目标状态,并能有效地对子目标进行排序,从而大大减少了增量规划过程中的无效次数。我们还考虑了子目标集的粒度和解决总体规划问题的复杂性之间的权衡。我们展示了一个最优区域的粒度,使增量规划的总复杂性最小化。我们提出了一种有效的策略来动态调整分区的粒度,以便在这个最优区域内运行。我们进一步评估了一种冗余执行方案,该方案使用两个不同的子目标顺序,以便在不大大牺牲运行时效率的情况下提高生成的计划的质量。使用三种基本规划器(metric-FF, YAHSP和LPG-TD-speed)的实验结果表明,我们的策略对于提高这些规划器在各种基准中的时间和质量是通用的
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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