Title :
An Information-Based Approach to Sensor Management in Large Dynamic Networks
Author :
Kreucher, Christopher M. ; Hero, Alfred O., III ; Kastella, Keith D. ; Morelande, Mark R.
Author_Institution :
Gen. Dynamics Adv. Inf. Syst., Ypsilanti
fDate :
5/1/2007 12:00:00 AM
Abstract :
This paper addresses the problem of sensor management for a large network of agile sensors. Sensor management, as defined here, is the process of dynamically retasking agile sensors in response to an evolving environment. Sensors may be agile in a variety of ways, e.g., the ability to reposition, point an antenna, choose sensing mode, or waveform. The goal of sensor management in a large network is to choose actions for individual sensors dynamically so as to maximize overall network utility. Sensor management in the multiplatform setting is a challenging problem for several reasons. First, the state space required to characterize an environment is typically of very high dimension and poorly represented by a parametric form. Second, the network must simultaneously address a number of competing goals. Third, the number of potential taskings grows exponentially with the number of sensors. Finally, in low-communication environments, decentralized methods are required. The approach we present in this paper addresses these challenges through a novel combination of particle filtering for nonparametric density estimation, information theory for comparing actions, and physicomimetics for computational tractability. The efficacy of the method is illustrated in a realistic surveillance application by simulation, where an unknown number of ground targets are detected and tracked by a network of mobile sensors.
Keywords :
information theory; particle filtering (numerical methods); sensor arrays; sensor fusion; surveillance; target tracking; agile sensors; computational tractability; information theory; information-based approach; large dynamic networks; low-communication environments; mobile sensor network; multiplatform setting; network utility; nonparametric density estimation; particle filtering; physicomimetics; potential taskings; realistic surveillance; sensor management; Environmental management; Estimation theory; Filtering theory; Information filtering; Information filters; Information theory; Physics computing; Sensor phenomena and characterization; State-space methods; Utility programs; Information theory; joint multitarget probability density; multiplatform sensor management; multitarget tracking; particle filtering;
Journal_Title :
Proceedings of the IEEE
DOI :
10.1109/JPROC.2007.893247