Global Sensor Management: Real-Time Reallocation of Military Assets among Competing Tasks and Functions

No Thumbnail Available

Date

2009-01-07

Journal Title

Series/Report No.

Journal ISSN

Volume Title

Publisher

Abstract

The United States military maintains a network of sensor assets for the multiple purposes of detecting threats, collecting intelligence, monitoring space, and other objectives. Because of its nature, the network must achieve high probabilities of successfully completing all of its varying missions. There is a requirement to assign these sensors to tasks and functions in such a manner as to maximize the capability to meet each of the objectives, remaining flexible enough to be changed in response to the dynamic nature of the environment in which it is employed. Due to the environment, it is imperative to quickly obtain a good solution that defines an allocation of sensors to tasks. While it is possible to accurately determine the best network allocation based on a total enumeration of potential sensor assignments, this becomes intractable for large problems. Further, once an initial allocation scheme is determined, some sensors may need to be reassigned in response to certain types of events or sensors may simply fail. This research addresses these issues through the development of a heuristic approach that finds optimal or nearly optimal solutions to representative sensor networks in only a fraction of the time required to guarantee optimality. The approach is also expanded to respond to changes in the network due to the loss of an assigned sensor. Evaluation of the heuristic’s performance using several methods demonstrates its utility in achieving the objectives of determining the best possible allocation of sensors given the time limitations and its ability to respond to the dynamic nature of the environment in which it is intended to operate.

Description

Keywords

resource allocation, military applications, heuristic

Citation

Degree

PhD

Discipline

Industrial Engineering

Collections