Title :
Non-Bayesian Quickest Change Detection With Stochastic Sample Right Constraints
Author :
Jun Geng ; Lifeng Lai
Author_Institution :
Dept. of Electr. & Comput. Eng., Worcester Polytech. Inst., Worcester, MA, USA
Abstract :
In this paper, we study the design and analysis of optimal detection scheme for sensors that are deployed to monitor the change in the environment and are powered by energy harvested from the environment. In this type of applications, detection delay is of paramount importance. We model this problem as quickest change detection problem with stochastic energy constraints. In particular, a wireless sensor powered by renewable energy takes observations from a random sequence, whose distribution will change at an unknown time. Such a change implies events of interest. The energy in the sensor is consumed by taking observations and is replenished randomly. The sensor cannot take observations if there is no energy left in the battery. Our goal is to design optimal power allocation and detection schemes to minimize the worst case detection delay, which is the difference between the time when the change occurs and the time when an alarm is raised. Two types of average run length (ARL) constraints, namely an algorithm level ARL constraint and a system level ARL constraint, are considered. We propose a low complexity scheme in which the energy allocation rule is to spend energy to take observations as long as the battery is not empty and the detection scheme is the Cumulative Sum test. We show that this scheme is optimal for the formulation with the algorithm level ARL constraint and is asymptotically optimal for the formulations with the system level ARL constraint.
Keywords :
delays; energy harvesting; random sequences; sensor placement; signal detection; statistical testing; stochastic processes; telecommunication power supplies; wireless sensor networks; algorithm level ARL constraint; average run length constraints; battery; cumulative sum test; energy allocation rule; energy harvesting; low complexity scheme; nonBayesian Quickest Change Detection; optimal detection scheme; optimal power allocation design; random sequence; renewable energy resources; sensor deployment; stochastic sample right constraints; system level ARL constraint; wireless sensor network; worst case detection delay; Batteries; Delays; Monitoring; Probability density function; Renewable energy sources; Resource management; Sensors; Cumulative Sum test; energy harvesting sensor; non-Bayesian quickest change detection; sequential detection;
Journal_Title :
Signal Processing, IEEE Transactions on
DOI :
10.1109/TSP.2013.2273442