论文标题
传感器网络中移动异常的最快检测
Quickest Detection of Moving Anomalies in Sensor Networks
论文作者
论文摘要
研究了随时间影响传感器网络不同部分的移动异常的问题。每个网络传感器的特征是非反对和异常的分布,管理传感器数据的生成。最初,根据相应的非反对分布产生每个传感器的观测值。经过一些未知但确定的时间瞬间,随着时间的推移会影响不同的传感器集。结果,根据相应的异常分布产生了受影响的传感器的观测值。我们的目标是设计一个停止程序,以尽快检测异常的出现,但要受到错误警报频率的限制。在最快的更改检测框架中研究了问题,假定异常的演变是未知但确定性的。为此,我们提出了对洛尔登最差的平均检测延迟度量的修改,以解释异常的轨迹,以最大化候选检测程序的检测延迟。我们确定,当传感器均匀时,累积求和型测试可以准确解决所得的顺序检测问题。对于异质传感器的情况,可以修改提出的检测方案以提供渐近最佳算法。我们通过提供数值模拟来验证我们的理论分析来结束。
The problem of sequentially detecting a moving anomaly which affects different parts of a sensor network with time is studied. Each network sensor is characterized by a non-anomalous and anomalous distribution, governing the generation of sensor data. Initially, the observations of each sensor are generated according to the corresponding non-anomalous distribution. After some unknown but deterministic time instant, a moving anomaly emerges, affecting different sets of sensors as time progresses. As a result, the observations of the affected sensors are generated according to the corresponding anomalous distribution. Our goal is to design a stopping procedure to detect the emergence of the anomaly as quickly as possible, subject to constraints on the frequency of false alarms. The problem is studied in a quickest change detection framework where it is assumed that the evolution of the anomaly is unknown but deterministic. To this end, we propose a modification of Lorden's worst average detection delay metric to account for the trajectory of the anomaly that maximizes the detection delay of a candidate detection procedure. We establish that a Cumulative Sum-type test solves the resulting sequential detection problem exactly when the sensors are homogeneous. For the case of heterogeneous sensors, the proposed detection scheme can be modified to provide a first-order asymptotically optimal algorithm. We conclude by presenting numerical simulations to validate our theoretical analysis.