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Thinking Fast and Slow: Optimization Decomposition Across Timescales

机译:快速思考和缓慢思考:跨时间尺度的优化分解

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摘要

Many real-world control systems, such as the smart grid and software defined networks, have decentralized components that react quickly using local information and centralized components that react slowly using a more global view. This work seeks to provide a theoretical framework for how to design controllers that are decomposed across timescales in this way. The framework is analogous to how the network utility maximization framework uses optimization decomposition to distribute a global control problem across independent controllers, each of which solves a local problem; except our goal is to decompose a global problem temporally, extracting a timescale separation. Our results highlight that decomposition of a multi-timescale controller into a fast timescale, reactive controller and a slow timescale, predictive controller can be near-optimal in a strong sense. In particular, we exhibit such a design, named Multi-timescale Reflexive Predictive Control (MRPC), which maintains a per-timestep cost within a constant factor of the offline optimal in an adversarial setting.
机译:许多现实世界的控制系统,例如智能电网和软件定义的网络,都具有分散的组件和集中的组件,这些组件使用本地信息进行快速响应,而集中式的组件使用更全局的视图进行较慢的响应。这项工作旨在为如何设计以这种方式跨时间尺度分解的控制器提供一个理论框架。该框架类似于网络实用程序最大化框架如何使用优化分解在独立控制器之间分配全局控制问题,每个控制器都解决一个局部问题。除了我们的目标是暂时分解全局问题,提取时间尺度分离。我们的结果表明,从强烈的意义上讲,将多时间尺度控制器分解为快速时间尺度,反应性控制器和缓慢时间尺度,预测性控制器可能是最佳的。尤其是,我们展示了一种名为“多时标自反预测控制(MRPC)”的设计,该设计将每步成本保持在对抗环境中离线最优值的恒定因子之内。

著录项

  • 来源
    《Performance evaluation review》 |2017年第2期|27-29|共3页
  • 作者单位

    Department of Computing and Mathematical Sciences, California Institute of Technology;

    Department of Computing and Mathematical Sciences, California Institute of Technology;

    Department of Computing and Mathematical Sciences, California Institute of Technology;

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  • 原文格式 PDF
  • 正文语种 eng
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