TY - JOUR
T1 - Integration of sensing and computing in an intelligent decision support system for homeland security defense
AU - Wu, Qishi
AU - Zhu, Mengxia
AU - Rao, Nageswara S.V.
PY - 2009/4
Y1 - 2009/4
N2 - We propose an intelligent decision support system based on sensor and computer networks that incorporates various component techniques for sensor deployment, data routing, distributed computing, and information fusion. The integrated system is deployed in a distributed environment composed of both wireless sensor networks for data collection and wired computer networks for data processing in support of homeland security defense. We present the system framework and formulate the analytical problems and develop approximate or exact solutions for the subtasks: (i) sensor deployment strategy based on a two-dimensional genetic algorithm to achieve maximum coverage with cost constraints; (ii) data routing scheme to achieve maximum signal strength with minimum path loss, high energy efficiency, and effective fault tolerance; (iii) network mapping method to assign computing modules to network nodes for high-performance distributed data processing; and (iv) binary decision fusion rule that derive threshold bounds to improve system hit rate and false alarm rate. These component solutions are implemented and evaluated through either experiments or simulations in various application scenarios. The extensive results demonstrate that these component solutions imbue the integrated system with the desirable and useful quality of intelligence in decision making.
AB - We propose an intelligent decision support system based on sensor and computer networks that incorporates various component techniques for sensor deployment, data routing, distributed computing, and information fusion. The integrated system is deployed in a distributed environment composed of both wireless sensor networks for data collection and wired computer networks for data processing in support of homeland security defense. We present the system framework and formulate the analytical problems and develop approximate or exact solutions for the subtasks: (i) sensor deployment strategy based on a two-dimensional genetic algorithm to achieve maximum coverage with cost constraints; (ii) data routing scheme to achieve maximum signal strength with minimum path loss, high energy efficiency, and effective fault tolerance; (iii) network mapping method to assign computing modules to network nodes for high-performance distributed data processing; and (iv) binary decision fusion rule that derive threshold bounds to improve system hit rate and false alarm rate. These component solutions are implemented and evaluated through either experiments or simulations in various application scenarios. The extensive results demonstrate that these component solutions imbue the integrated system with the desirable and useful quality of intelligence in decision making.
KW - Data routing
KW - Distributed computing
KW - Dynamic programming
KW - Intelligent decision support system
KW - Sensor deployment
KW - Sensor fusion
UR - http://www.scopus.com/inward/record.url?scp=62349093642&partnerID=8YFLogxK
U2 - 10.1016/j.pmcj.2008.04.010
DO - 10.1016/j.pmcj.2008.04.010
M3 - Article
AN - SCOPUS:62349093642
SN - 1574-1192
VL - 5
SP - 182
EP - 200
JO - Pervasive and Mobile Computing
JF - Pervasive and Mobile Computing
IS - 2
ER -