统计周期随机过程的顺序检测理论

T. Banerjee, Prudhvi K. Gurram, Gene T. Whipps
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引用次数: 2

摘要

在网络物理系统和生物学中遇到的许多实际问题中都观察到数据的周期性统计行为。一类新的随机过程被称为独立和周期性同分布过程(i.p.i.d)被定义来模拟这类数据。为了解决i.p.i.d.过程的顺序检测问题,提出了一种最优停止理论。然后将发展的理论应用于检测i.p.i.d.过程分布的变化。结果表明,最优变化检测算法是基于阈值周期序列的停止规则。数值结果表明,单阈值策略不是严格最优的。
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A Sequential Detection Theory for Statistically Periodic Random Processes
Periodic statistical behavior of data is observed in many practical problems encountered in cyber-physical systems and biology. A new class of stochastic processes called independent and periodically identically distributed (i.p.i.d.) processes is defined to model such data. An optimal stopping theory is developed to solve sequential detection problems for i.p.i.d. processes. The developed theory is then applied to detect a change in the distribution of an i.p.i.d. process. It is shown that the optimal change detection algorithm is a stopping rule based on a periodic sequence of thresholds. Numerical results are provided to demonstrate that a single-threshold policy is not strictly optimal.
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