论文标题
通过能量收集传感器的非贝尔斯最快变化检测的渐近性能分析
Asymptotic Performance Analysis of Non-Bayesian Quickest Change Detection with an Energy Harvesting Sensor
论文作者
论文摘要
在本文中,我们考虑了基于能量收集传感器采用的累积总和(CUSUM)算法检测的非bayesian顺序变化检测,其中假定更改之前和之后的分布已知。在开槽的离散时间模型中,该传感器仅由随机可获得的收获能量提供动力,如果有足够的能量来感知和处理样品,则获得样品并计算这两个分布的对数似然比。如果它在给定的插槽中没有足够的能量,它将等到它收获足够的能量以在将来的时间插槽中执行任务。我们为预期检测延迟(实际发生变化时)得出渐近表达式,以及跑步长度的渐近尾部分布到虚假警报(当变化永远不会发生时)。我们表明,当平均收获的能量($ \ bar h $)大于或等于感知和处理样品所需的能量($ e_s $)时,适用了Cusum测试的标准现有渐近结果,因为传感器的储能水平大于$ E_S $,经过足够长的时间。但是,当$ \ bar h <e_s $时,储能水平可以通过带有独特静止分布的正面harris重复的马尔可夫链进行建模。利用马尔可夫随机步行理论和相关的非线性马尔可夫更新理论的渐近结果,我们为在这种非主题情况下,运行长度的尾巴分布到尾巴分布的预期检测延迟和渐近指数的渐近表达式。提供数值结果以支持理论结果。
In this paper, we consider a non-Bayesian sequential change detection based on the Cumulative Sum (CUSUM) algorithm employed by an energy harvesting sensor where the distributions before and after the change are assumed to be known. In a slotted discrete-time model, the sensor, exclusively powered by randomly available harvested energy, obtains a sample and computes the log-likelihood ratio of the two distributions if it has enough energy to sense and process a sample. If it does not have enough energy in a given slot, it waits until it harvests enough energy to perform the task in a future time slot. We derive asymptotic expressions for the expected detection delay (when a change actually occurs), and the asymptotic tail distribution of the run-length to a false alarm (when a change never happens). We show that when the average harvested energy ($\bar H$) is greater than or equal to the energy required to sense and process a sample ($E_s$), standard existing asymptotic results for the CUSUM test apply since the energy storage level at the sensor is greater than $E_s$ after a sufficiently long time. However, when the $\bar H < E_s$, the energy storage level can be modelled by a positive Harris recurrent Markov chain with a unique stationary distribution. Using asymptotic results from Markov random walk theory and associated nonlinear Markov renewal theory, we establish asymptotic expressions for the expected detection delay and asymptotic exponentiality of the tail distribution of the run-length to a false alarm in this non-trivial case. Numerical results are provided to support the theoretical results.