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Envisionment-based scheduling using time interval petri networks: Representation, inference, and learning.

机译:使用时间间隔陪替氏网络的基于设想的调度:表示,推理和学习。

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摘要

Many Artificial Intelligence decision-making systems operate in cycles. A typical problem- solving cycle might consist of deliberation, scheduling, and execution steps. At the deliberation step a number of feasible actions are generated. They are then evaluated by a scheduler at the scheduling step and the most suitable action is performed at the execution step.; A wide class of schedulers are based on the idea of modeling the environment to envision the effects of the action in question. This thesis presents a novel scheduling approach that compiles the relevant knowledge about the environment into the mathematically well-founded framework of Petri Nets. The Petri Net based environment model is then used to envision the effects of an action being evaluated. The action with most desirable envisioned effects is carried out at the execution step.; This interdisciplinary research has made the following five main contributions: (1) A Petri Nets based approach to decision-making scheduling through environment modeling is presented. Petri Nets formalism is known for its solid theoretical base, clear syntax and semantics, intuitive graphic representation, and native concurrency support. (2) The classical Petri Net model is extended in various ways to make it suitable for AI scheduling tasks. The main extensions concern explicit temporal reasoning, context, and operator support. The new formalism is hence called Time Interval Petri Nets (TIPNs). (3) TIPN properties and relation to other Al and Petri Nets formalisms are studied. We also present analysis methods facilitating verification and refinement of Petri Net models. (4) Two machine learning algorithms are developed to synthesize Petri Net models automatically or semi-automatically. One learning algorithm exploits the connection between Petri Nets and Horn clauses by using inductive logic programming methods (ILP) to learn Horn-clauses first and then convert them to TIPNs. The other algorithm employs a general-to-specific search in the space of Petri Net topologies starting with a given initial topology. (5) The framework is applied in the real-time decision-making domain of ship damage control for the tasks of automated problem-solving and intelligent tutoring (advising, critiquing, and scoring). In a large exercise involving approximately 500 simulated ship crisis scenarios, our decision-making expert system showed a 318% improvement over Navy officers by saving 89 more ships.
机译:许多人工智能决策系统都是循环运行的。一个典型的问题解决周期可能包括审议,安排和执行步骤。在审议阶段,产生了许多可行的措施。然后由调度程序在调度步骤评估它们,并在执行步骤执行最合适的操作。各种各样的调度程序都基于对环境建模的想法,以设想所讨论的动作的效果。本文提出了一种新颖的调度方法,该方法将有关环境的相关知识编译到 Petri Nets 的数学框架中。然后使用基于Petri Net的环境模型来预想正在评估的动作的效果。具有最佳预期效果的动作在执行步骤中执行。这项跨学科研究做出了以下五个主要贡献:(1)提出了一种基于Petri网的环境建模决策调度方法。 Petri Nets形式主义以其扎实的理论基础,清晰的语法和语义,直观的图形表示以及本机并发支持而闻名。 (2)经典的Petri Net模型以各种方式扩展,使其适合AI调度任务。主要扩展涉及显式的时间推理,上下文和操作员支持。因此,新的形式主义被称为时间间隔Petri网(TIPN)。 (3)研究了TIPN性质以及与其他Al和Petri网形式主义的关系。我们还介绍了有助于验证和完善Petri Net模型的分析方法。 (4)开发了两种机器学习算法来自动或半自动地合成Petri Net模型。一种学习算法通过使用归纳逻辑编程方法(ILP)首先学习Horn子句,然后将它们转换为TIPN,从而利用Petri Nets和Horn子句之间的联系。另一种算法在Petri Net拓扑的空间中使用从常规到特定的搜索,从给定的初始拓扑开始。 (5)该框架适用于船舶损害控制的实时决策领域,用于自动解决问题和智能辅导(建议,评估和评分)的任务。在涉及大约500个模拟船舶危机情景的大型演习中,我们的决策专家系统通过节省89艘船舶,比海军军官提高了318%。

著录项

  • 作者

    Bulitko, Vadim V.;

  • 作者单位

    University of Illinois at Urbana-Champaign.;

  • 授予单位 University of Illinois at Urbana-Champaign.;
  • 学科 Computer Science.; Artificial Intelligence.
  • 学位 Ph.D.
  • 年度 2000
  • 页码 331 p.
  • 总页数 331
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 自动化技术、计算机技术;人工智能理论;
  • 关键词

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