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Enabling mechanisms for AI planning knowledge sharing, merging, and reuse.

机译:AI规划知识共享,合并和重用的支持机制。

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With the availability of cheap, powerful computers and the proliferation of the internet to connect them, recent trends in computing are focusing on peer-to-peer interoperation. From an intelligent systems perspective, cooperation and knowledge sharing between peer systems can enable each peer to overcome knowledge deficiencies and computational ability limitations. This dissertation investigates issues in enabling such peer-to-peer interoperation between domain-independent planning/problem-solving systems.; The dissertation is divided into three primary topics in planning/problem-solving: (i) multi-reuse domain-independent planning, (ii) planning knowledge translation and interchange, and (iii) hierarchical plan merging. One way a planner can overcome knowledge deficiencies is to utilize plans, or pieces of plans, generated by other planners. In the first part of this dissertation, we present the theory and implementation of a multi-reuse planner, CBPOP, and show how it addresses the multi-reuse planning problems. In particular, we present novel approaches to retrieval and refitting, and we explore the difficult issue of when to retrieve in multi-reuse scenarios. To overcome incompatibilities between heterogeneous planning knowledge representations, the second part of this work presents a novel knowledge sharing methodology for planning systems in a framework called the Knowledge Interface (KI). The KI is used to realize peer-to-peer cooperation between heterogeneous planning systems and provide automated knowledge translation between a global common ontology specification and the individual planning systems' knowledge representations. The final part of this dissertation discusses a plan merging methodology that hierarchically merges separately generated plans based on the notion of plan fragments. The plans can be generated by the same planner/problem-solver, or by different planners. This merging mechanism performs global domain-dependent optimizations that cannot be applied to the individual plans in isolation.
机译:随着廉价,功能强大的计算机的可用性以及连接它们的互联网的普及,计算机的最新趋势集中于对等互操作。从智能系统的角度来看,对等系统之间的合作和知识共享可以使每个对等系统克服知识不足和计算能力的局限性。本文研究了在领域无关的计划/问题解决系统之间实现这种对等互操作的问题。论文在规划/问题解决中分为三个主要主题:(i)多重用领域无关的规划,(ii)规划知识的转换和互换,以及(iii)分层计划合并。计划者可以克服知识不足的一种方法是利用其他计划者生成的计划或计划片段。在本文的第一部分中,我们介绍了一种多重用计划程序CBPOP的理论和实现,并展示了它如何解决多重用计划问题。特别是,我们提出了新颖的检索和重新装配方法,并探讨了在多次重复使用情况下何时检索的难题。为了克服异构计划知识表示之间的不兼容性,本工作的第二部分介绍了一种在称为知识接口(KI)的框架中用于计划系统的新颖知识共享方法。 KI用于实现异构计划系统之间的对等合作,并在全局通用本体规范和各个计划系统的知识表示之间提供自动化的知识转换。本文的最后部分讨论了一种计划合并方法,该方法基于计划片段的概念对单独生成的计划进行分层合并。计划可以由同一计划者/问题解决者生成,也可以由不同的计划者生成。这种合并机制将执行无法独立应用于各个计划的全局域相关优化。

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