通过受控传感技术实现最快速的变化检测

Venugopal V. Veeravalli;Georgios Fellouris;George V. Moustakides
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引用次数: 0

摘要

在最快变化检测问题中,实时监测的随机向量序列的分布在某个未知时间发生了变化,目标是在一定的误报约束条件下尽快检测到这一变化。在这项工作中,我们考虑的是在变化后机制和受控传感中存在参数不确定性的情况下的这一问题。也就是说,变化后的分布包含一个未知参数,而变化前后每次观测的分布都会受到控制行动的影响。在这种情况下,除了决定何时宣布发生变化的停止规则外,还需要确定顺序控制策略,根据已收集到的观测数据选择每次的控制行动。我们使用 Lorden 的最小准则,并假设存在有限多个可能的行动和变化后的参数值,对这一问题进行了数学表述。然后,我们针对这个问题提出了一个具体的程序,该程序采用自适应 CuSum 统计法,其中 (i) 参数估计基于固定数量的较新观测值,(ii) 除了少量探索次数外,每次行动的选择都是为了最大化基于当前参数估计的下一个观测值的库尔贝-莱布勒发散。我们将这一程序称为 Windowed Chernoff-CuSum (WCC),它在 Lorden 的 minimax 准则下,对于未知变化后参数的每一个可能值,都是一阶渐近最优的,因为误报的平均时间会达到无穷大。我们还提供了模拟结果,以说明 WCC 程序的性能。
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Quickest Change Detection With Controlled Sensing
In the problem of quickest change detection, a change occurs at some unknown time in the distribution of a sequence of random vectors that are monitored in real time, and the goal is to detect this change as quickly as possible subject to a certain false alarm constraint. In this work we consider this problem in the presence of parametric uncertainty in the post-change regime and controlled sensing. That is, the post-change distribution contains an unknown parameter, and the distribution of each observation, before and after the change, is affected by a control action. In this context, in addition to a stopping rule that determines the time at which it is declared that the change has occurred, one also needs to determine a sequential control policy, which chooses the control action at each time based on the already collected observations. We formulate this problem mathematically using Lorden’s minimax criterion, and assuming that there are finitely many possible actions and post-change parameter values. We then propose a specific procedure for this problem that employs an adaptive CuSum statistic in which (i) the estimate of the parameter is based on a fixed number of the more recent observations, and (ii) each action is selected to maximize the Kullback-Leibler divergence of the next observation based on the current parameter estimate, apart from a small number of exploration times. We show that this procedure, which we call the Windowed Chernoff-CuSum (WCC), is first-order asymptotically optimal under Lorden’s minimax criterion, for every possible value of the unknown post-change parameter, as the mean time to false alarm goes to infinity. We also provide simulation results to illustrate the performance of the WCC procedure.
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