从规范中综合计划者的结构化方法

B. Srivastava, S. Kambhampati, A. Mali
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引用次数: 8

摘要

人工智能中的规划综合方法分为领域独立和领域依赖两类。领域独立的方法适用于各种领域,但在任何给定的领域都可能不是很有效。领域相关的方法对于它们所设计的领域来说是非常有效的,但是需要为每个感兴趣的领域单独编写。到目前为止,手工编码的乏味和易出错性阻碍了依赖于领域的计划器的工作。本文描述了一种利用基于知识的软件综合工具实现领域相关规划器自动化开发的新方法。具体地说,我们描述了一个叫做CLAY的体系结构,在这个体系结构中,Kestrel交互式开发系统(KIDS)与领域独立规划的声明性理论以及特定于给定领域的声明性控制知识结合使用,以半自动地派生自定义的规划代码。我们讨论了为KIDS编写规划和控制知识的声明性理论意味着什么,并通过使用状态空间和规划空间细化生成一系列特定领域的规划器来说明它。我们证明了在使用相同的控制知识的情况下,与传统的优化规划器相比,综合规划器具有更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A structured approach for synthesizing planners from specifications
Plan synthesis approaches in AI fall into two categories: domain-independent and domain-dependent. The domain-independent approaches are applicable across a variety of domains, but may not be very efficient in any one given domain. The domain-dependent approaches can be very efficient for the domain for which they are designed, but would need to be written separately for each domain of interest. The tediousness and the error-proneness of manual coding have hither-to inhibited work on domain-dependent planners. In this paper we describe a novel way of automating the development of domain dependent planners using knowledge-based software synthesis tools. Specifically, we describe an architecture called CLAY in which the Kestrel Interactive Development System (KIDS) is used in conjunction with a declarative theory of domain independent planning, and the declarative control knowledge specific to a given domain, to semi-automatically derive customized planning code. We discuss what it means to write declarative theory of planning and control knowledge for KIDS, and illustrate it by generating a range of domain-specific planners using state space and plan space refinements. We demonstrate that the synthesized planners can have superior performance compared to classical refinement planners using the same control knowledge.
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