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Mission-phasing techniques for constrained agents in stochastic environments.

机译:随机环境中受约束代理的任务定相技术。

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摘要

Resource constraints restrict the set of actions that an agent can take, such that the agent might not be able to perform all its desired tasks. Computational time limitations restrict the number of states that an agent can model and reason over, such that the agent might not be able to formulate a policy that can respond to all possible eventualities. This work argues that, in either situation, one effective way of improving the agent's performance is to adopt a phasing strategy. Resource-constrained agents can choose to reconfigure resources and switch action sets for handling upcoming events better when moving from phase to phase; time-limited agents can choose to focus computation on high-value phases and to exploit additional computation time during the execution of earlier phases to improve solutions for future phases.;This dissertation consists of two parts, corresponding to the aforementioned resource constraints and computational time limitations. The first part of the dissertation focuses on the development of automated resource-driven mission-phasing techniques for agents operating in resource-constrained environments. We designed a suite of algorithms which not only can find solutions to optimize the use of predefined phase-switching points, but can also automatically determine where to establish such points, accounting for the cost of creating them, in complex stochastic environments. By formulating the coupled problems of mission decomposition, resource configuration, and policy formulation into a single compact mathematical formulation, the presented algorithms can effectively exploit problem structure and often considerably reduce computational cost for finding exact solutions.;The second part of this dissertation is the design of computation-driven mission-phasing techniques for time-critical systems. We developed a new deliberation scheduling approach, which can simultaneously solve the coupled problems of deciding both when to deliberate given its cost, and which phase decision procedures to execute during deliberation intervals. Meanwhile, we designed a heuristic search method to effectively utilize the allocated time within each phase. As illustrated in analytical and experimental results, the computation-driven mission-phasing techniques, which extend problem decomposition techniques with the across-phase deliberation scheduling and inner-phase heuristic search methods mentioned above, can help an agent judiciously emphasize high-value portions of a large problem, while paying less attention to others, to generate a better policy within its time limit.
机译:资源限制限制了代理可以执行的一组操作,因此代理可能无法执行其所有所需任务。计算时间限制限制了代理可以进行建模和推理的状态数,因此代理可能无法制定可以应对所有可能事件的策略。这项工作认为,在任何一种情况下,提高代理绩效的一种有效方法是采用分阶段策略。资源受限的代理可以选择重新配置资源并切换操作集,以便在各阶段之间更好地处理即将发生的事件。有时间限制的代理可以选择将精力集中在高价值阶段上,并在执行早期阶段时利用额外的计算时间来改进未来阶段的解决方案。论文分为两部分,分别对应于上述资源约束和计算时间局限性。论文的第一部分着重于为资源受限环境中运行的代理开发自动化的资源驱动的任务定相技术。我们设计了一套算法,不仅可以找到解决方案来优化预定义相位切换点的使用,而且还可以自动确定在复杂的随机环境中建立此类点的位置,并考虑创建它们的成本。通过将任务分解,资源配置和策略制定的耦合问题表述为一个紧凑的数学公式,所提出的算法可以有效地利用问题结构,并且通常大大降低了寻找精确解决方案的计算成本。关键时间系统的计算驱动任务定相技术的设计。我们开发了一种新的审议计划方法,该方法可以同时解决决定何时考虑给定成本以及在审议间隔期间执行哪个阶段决策程序的耦合问题。同时,我们设计了一种启发式搜索方法,以有效利用每个阶段中分配的时间。如分析和实验结果所示,以计算为驱动力的任务定相技术,将问题分解技术与上述的跨阶段审议计划和内相启发式搜索方法相结合,可以帮助代理明智地强调交易的高价值部分。一个大问题,同时较少关注他人,却在其时限内制定了更好的政策。

著录项

  • 作者

    Wu, Jianhui.;

  • 作者单位

    University of Michigan.;

  • 授予单位 University of Michigan.;
  • 学科 Engineering Electronics and Electrical.;Artificial Intelligence.
  • 学位 Ph.D.
  • 年度 2008
  • 页码 215 p.
  • 总页数 215
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 无线电电子学、电信技术;人工智能理论;
  • 关键词

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