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Perturbation Analysis and Optimization of Stochastic Hybrid Systems

机译:随机混合系统的扰动分析与优化

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摘要

We present a general framework for carrying out perturbation analysis in Stochastic Hybrid Systems (SHS) of arbitrary structure. In particular, Infinitesimal Perturbation Analysis (IPA) is used to provide unbiased gradient estimates of performance metrics with respect to various controllable parameters. These can be combined with standard gradient-based algorithms for optimization purposes and implemented on line with little or no distributional information regarding the stochastic processes involved. We generalize an earlier concept of "induced events" for this framework to include system features such as delays in control signals or modeling multiple user classes sharing a resource. We apply this generalized IPA to two SHS with different characteristics. First, we develop a gradient estimator for the performance of a linear switched system with control signal delays and a safety constraint and show that it is independent of the random delay's distributional characteristics. Second, we derive closed-form unbiased IPA estimators for a Stochastic Flow Model (SFM) of systems executing tasks subject to either hard or soft real-time constraints. These estimators are incorporated in a gradient-based algorithm to optimize performance by controlling a task admission threshold parameter. Simulation results are included to illustrate this optimization approach.
机译:我们提出了在任意结构的随机混合系统(SHS)中进行扰动分析的通用框架。特别地,无穷小扰动分析(IPA)用于针对各种可控参数提供性能指标的无偏梯度估计。可以将这些与基于梯度的标准算法结合以实现优化目的,并且可以在很少或没有有关所涉及的随机过程的分布信息的情况下在线实施。我们为该框架概括了“诱发事件”的早期概念,以包括系统功能,例如控制信号中的延迟或对共享资源的多个用户类别进行建模。我们将此通用IPA应用于具有不同特征的两个SHS。首先,我们针对具有控制信号延迟和安全约束的线性开关系统的性能开发了一种梯度估计器,并证明了它与随机延迟的分布特性无关。其次,我们为执行受硬或软实时约束的任务的系统的随机流模型(SFM)推导了封闭形式的无偏IPA估计。这些估计器并入基于梯度的算法中,以通过控制任务允许阈值参数来优化性能。包括仿真结果以说明此优化方法。

著录项

  • 来源
    《European Journal of Control》 |2010年第6期|p.642-661|共20页
  • 作者单位

    Division of Systems Engineering, and Center for Information and Systems Eng., Boston University, Brookline, MA 02446, USA;

    School of Electrical Engineering, Georgia Institute of Technology, Atlanta, GA, USA;

    KIOS Research Center for Intelligent, Systems and Networks, Dept. of Electrical and Computer Eng., University of Cyprus, Cyprus;

    Division of Systems Engineering, and Center for Information and Systems Eng., Boston University, Brookline, MA 02446, USA;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    stochastic hybrid system; stochastic flow model; perturbation analysis;

    机译:随机混合系统随机流模型扰动分析;

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