部分序规划中的模拟退火

Rosa Liliana Gonzalez Arredondo, Romeo Sanchez, A. Berrones
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引用次数: 1

摘要

在领域无关规划领域中,最流行的算法之一是POP -偏序规划。POP采用最少承诺策略来解决规划问题。这种战略将规划阶段的承诺推迟到绝对必要的时候。因此,该算法为解决规划问题提供了更大的灵活性,但性能代价较高。基于pop的技术不考虑搜索状态,相反,搜索节点表示部分计划。最近在基于距离的启发式规划和可达性分析方面取得的进展帮助POP规划者比以前解决了更多的规划问题。尽管这种启发式技术已被证明可以提高POP算法的性能,但它们仍然落后于状态空间规划器。我们认为这主要是由于POP中搜索节点的偏序表示。在本文中,我们没有为POP提出额外的启发式方法,而是使POP能够考虑其搜索空间的不同领域。我们认为,基本的POP算法在其搜索空间中遵循贪婪路径,存在局部最优问题,无法从中恢复。在这种程度上,我们用模拟退火程序扩充了POP,该程序考虑具有一定概率的最坏解。在我们的经验评估中,增强算法产生了有希望的结果,在考虑的问题中返回的解多出19%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Introducing Simulated Annealing in Partial Order Planning
One of the most popular algorithms in the field of domain independent planning is POP - partial order planning. POP considers a least commitment strategy to solve planning problems. Such strategy delays commitments during the planning phase until it is absolutely necessary. In consequence, the algorithm provides greater flexibility for solving planning problems, but with a higher cost in performance. POP-based techniques do not consider search states, instead, search nodes represent partial plans. Recent advances in planning on distance based heuristics and reach ability analysis have helped POP planners to solve more planning problems than before. Although such heuristic techniques have demonstrated to boost performance for POP algorithms, they still remain behind state space planners. We believe that this is mainly due to the partial order representation of the search nodes in POP. In this article, instead of proposing additional heuristics for POP, we enable POP to consider different areas of its search space. We think that the basic POP algorithm follows a greedy path in its search space suffering from local optima problems, from where it cannot recover. To this extent, we have augmented POP with a simulated annealing procedure, which considers worst solutions with certain probability. The augmented algorithm produces promising results in our empirical evaluation, returning up to 19% more solutions in the problems being considered.
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