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A Complete State-Space Based Temporal Planner

机译:一个完整的基于状态空间的时间规划器

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摘要

Since that heuristic state space planners have been very successful in classical planning, this approach is currently the most popular strategy in dealing with temporal planning, too. However, all current state-space temporal planners use a search method known as decision epoch planning, which is not complete for problems with required concurrency. In theory, this flaw can be overcome by employing another search method, called temporally lifted progression planning. In this paper, we show that there are two major problems which, if not tackled properly, can cause the latter method to be very inefficient in practice. The first problem is dealing with the remarkably large state space of temporally lifted progression planning. We present a pruning method for solving this problem and prove it to be both complete and optimality preserving. The next troublesome issue is solving a simple temporal problem (STP) in each state for computing g-values. We exploit the properties of such STPs and introduce a new method that solves them more efficiently than the state of the art algorithms do. Our experiments show that the new search method can add completeness to a state-of-the-art incomplete planner, TFD, without considerably worsening its performance in most standard domains.
机译:由于启发式状态空间规划师在经典规划中非常成功,因此,这种方法也是当前处理时间规划中最受欢迎的策略。但是,所有当前状态空间时态规划人员都使用称为决策时期规划的搜索方法,该方法对于要求并发的问题还不完善。从理论上讲,可以通过采用另一种搜索方法(称为时间提升进度计划)来克服此缺陷。在本文中,我们表明存在两个主要问题,如果不能正确解决,则可能导致后一种方法在实践中效率很低。第一个问题是处理暂时取消的进度计划中非常大的状态空间。我们提出了一种用于解决此问题的修剪方法,并证明它是完整的和最优的。下一个麻烦的问题是解决每种状态下的简单时间问题(STP),以计算g值。我们利用这种STP的特性,并引入了一种比现有算法更有效地解决它们的新方法。我们的实验表明,新的搜索方法可以为最先进的不完全计划者TFD增加完整性,而不会在大多数标准域中显着降低其性能。

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