The development of domain-independent planners within the AI Planning community is leading to "off-the-shelf" technology that can be used in a wide range of applications. Moreover, it allows a modular approach --in which planners and domain knowledge are modules of larger software applications-- that facilitates substitutions or improvements of individual modules without changing the rest of the system. This approach also supports the use of reformulation and configuration techniques, which transform how a model is represented in order to improve the efficiency of plan generation. In this article, we investigate how the performance of domain-independent planners is affected by domain model configuration, i.e., the order in which elements are ordered in the model, particularly in the light of planner comparisons. We then introduce techniques for the online and offline configuration of domain models, and we analyse the impact of domain model configuration on other reformulation approaches, such as macros.
翻译:在AI规划界内开发独立的域规划人员正在导致“现成”技术,可用于广泛的应用。此外,它允许采用模块化方法 -- -- 即规划人员和域知识是较大软件应用的模块 -- -- 便利替代或改进单个单元,而不改变系统的其他部分。这个方法还支持使用重新拟订和配置技术,这些技术可以改变模型的体现方式,以提高计划生成的效率。在本条中,我们调查域独立规划人员的业绩如何受到域模型配置的影响,即模型中各要素的排序顺序,特别是考虑到规划人的比较。然后我们引入域模型的在线和离线配置技术,我们分析域模型配置对其他重编方法(如宏观)的影响。