DocumentCode :
3393447
Title :
Distributed chemical plume process detection: MILCOM 2005 #1644
Author :
Nofsinger, Glenn ; Cybenko, George
Author_Institution :
Thayer Sch. of Eng., Dartmouth Coll., Hanover, NH
fYear :
2005
fDate :
17-20 Oct. 2005
Firstpage :
1076
Abstract :
We have developed a new approach for detecting and tracking chemical or biological plumes in distributed sensor networks, with the objective of solving the inverse location problem. The canonical plume tracking problem suffers from the challenge of a large state space, and we seek reduced dimensionality using information theoretic and stochastic methods. Working with an airborne plume we model a plume using multiple hypothesis tracking (MHT) techniques as opposed to transport based methods rooted in solutions to differential equations. The simple plume model attributes include: diffusion constant, wind direction, and wind magnitude. The location of the plume prior to current observations is calculated statistically with the use of an estimator-based joint probability. The main contribution of this work is the predictor model - a required step of the MHT algorithm. A customized predictor for plumes (as opposed to Kalman filtering) allows the MHT-like algorithm to treat the plume tracking problem as the extreme instance of the multi-target tacking (MTT) problem. The central question: how can a MHT-like method be implemented for plumes in a sensor network of simple sensors capable of rudimentary binary detection, wind speed, and wind direction. The predictor must handle the problem of data association for plume observations. The context for this work is the development of multiple competing models which is correlated to incoming observations in real time. The models run in a generic multi-purpose framework called PQS (process query system). Simulations were performed demonstrating the viability of the MHT approach with the use of a customized predictor for plume target tracking
Keywords :
Kalman filters; differential equations; filtering theory; military systems; queueing theory; stochastic processes; target tracking; wireless sensor networks; Kalman filtering; biological plumes; canonical plume tracking problem; differential equations; diffusion constant; distributed chemical plume process detection; distributed sensor networks; estimator-based joint probability; generic multipurpose framework; inverse location problem; multiple hypothesis tracking techniques; multitarget tacking problem; process query system; stochastic methods; transport based methods; wind direction; wind magnitude; Biological information theory; Biological system modeling; Biosensors; Chemical and biological sensors; Chemical processes; Differential equations; Predictive models; State-space methods; Stochastic processes; Wind speed; Sensor networks; data association; multiple-target tracking; plume tracking; process query systems;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Military Communications Conference, 2005. MILCOM 2005. IEEE
Conference_Location :
Atlantic City, NJ
Print_ISBN :
0-7803-9393-7
Type :
conf
DOI :
10.1109/MILCOM.2005.1605822
Filename :
1605822
Link To Document :
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