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Planning under uncertainty: Moving forward.

机译:在不确定的情况下进行规划:向前迈进。

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摘要

This dissertation describes a suite of new planning algorithms for planning under uncertainty with the assumption of full observability. The new algorithms are much more efficient than the previous techniques; in some cases, they find solutions exponentially faster than the previous ones. In particular, our contributions are as follows: (1) A method to take any forward-chaining classical planning algorithm, and systematically generalize it to work for planning in nondeterministic planning domains, where the likelihood of the possible outcomes of the actions are not known. In our experiments, ND-SHOP2, a generalization of the Hierarchical Task Network (HTN) planner SHOP2 [NAI +03], could find solutions in nondeterministic planning domains about two to three orders of magnitude faster than MBP [BCP+01], which uses symbolic model-checking techniques based on Binary Decision Diagrams (BDDs) [Bry92], and which was one of the best previous planners for such domains. (2) A way, called "Forward State-Space Splitting (FS3)," to take the search control (i.e., pruning) technique of any forward-chaining classical planner, such as TLPlan [BK00], TALplanner [KD01], and SHOP2 [NAI +03], and combine it with BDDs. The result of this combination is a suite of new planning algorithms for nondeterministic planning domains. In our experiments, FS3SHOP2 , one of the new algorithms that combines HTNs as in ND-SHOP2 with BDDs as in MBP, was never dominated by either MBP or ND-SHOP2: FS3SHOP2 could easily deal with problem sizes that neither MBP nor ND-SHOP2 could scale up to, and furthermore, it could solve problems about two or three orders of magnitude faster than the other two. (3) A way to incorporate the pruning technique of a forward-chaining classical planner into the previous algorithms developed for planning with MDPs. The modified algorithms in our experiments were about 10,000 times faster than the original ones on the largest problems the original ones could solve. On another set of problems that were more than 14,000 times larger than the original algorithms could solve, the modified ones took only about 1/3 second.; The new planning techniques described here have good potential to be applicable to other research areas as well. In particular, this dissertation describes such potentials in Reinforcement Learning, Hybrid Systems Control, and Planning with Temporal Uncertainty. Finally, the closing remarks include a discussion on the challenges of using search control in planning under uncertainty and some possible ways to address those challenges. (Abstract shortened by UMI.)
机译:本文介绍了一套新的规划算法,用于在不确定性和完全可观测性的假设下进行规划。新算法比以前的技术有效得多。在某些情况下,他们找到的解决方案比以前的解决方案快得多。特别是,我们的贡献如下:(1)一种方法,采用任何前向链经典规划算法,并将其系统地推广到非确定性规划领域中的规划工作中,在这种情况下,可能采取行动的可能结果未知。在我们的实验中,ND-SHOP2(分层任务网络(HTN)计划程序SHOP2 [NAI +03]的概括)可以在不确定性计划域中找到比MBP [BCP + 01]快大约2至3个数量级的解决方案。使用基于二进制决策图(BDD)[Bry92]的符号模型检查技术,该技术是此类领域以前最好的计划者之一。 (2)一种方法,称为“前向状态空间分割(FS3)”,采用任何前向链接经典规划器(例如TLPlan [BK00],TALplanner [KD01]和SHOP2 [NAI +03],并将其与BDD合并。这种结合的结果是针对不确定性计划领域的一套新计划算法。在我们的实验中,FS3SHOP2是将ND-SHOP2中的HTN与MBP中的BDD相结合的新算法之一,从来没有被MBP或ND-SHOP2所控制:FS3SHOP2可以轻松处理MBP和ND-SHOP2都无法解决的问题大小可以扩大规模,而且解决问题的速度比其他两个快两个或三个数量级。 (3)一种将前向链经典规划器的修剪技术合并到为MDP进行规划的先前算法中的一种方法。在原始算法可以解决的最大问题上,我们实验中的改进算法比原始算法快约10,000倍。在另一组比原始算法可解决的问题大14,000倍的问题上,修改后的问题仅花费了大约1/3秒的时间。此处描述的新计划技术也具有很好的潜力,也可以应用于其他研究领域。特别是,本文描述了强化学习,混合系统控制和具有时间不确定性的计划中的这种潜力。最后,闭幕词讨论了在不确定性情况下在计划中使用搜索控制的挑战以及应对这些挑战的一些可能方法。 (摘要由UMI缩短。)

著录项

  • 作者

    Kuter, Ugur.;

  • 作者单位

    University of Maryland, College Park.;

  • 授予单位 University of Maryland, College Park.;
  • 学科 Artificial Intelligence.; Computer Science.
  • 学位 Ph.D.
  • 年度 2006
  • 页码 198 p.
  • 总页数 198
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 人工智能理论 ; 自动化技术、计算机技术 ;
  • 关键词

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