Task allocation for networked autonomous underwater vehicles
by Kulkarni, Indraneel S., M.S., RUTGERS THE STATE UNIVERSITY OF NEW JERSEY - NEW BRUNSWICK, 2010, 70 pages; 1480150

Abstract:

Underwater Acoustic Sensor Networks (UW-ASNs) consist of stationary or mobile nodes such as Autonomous Underwater Vehicles (AUVs), which may be classified as propeller-driven vehicles and gliders, that are equipped with a variety of sensors for performing collaborative monitoring tasks. UW-ASNs are envisioned for missions like oceanographic data collection, ocean sampling, offshore exploration, disaster prevention, tsunami and seaquake warning, assisted navigation, distributed tactical surveillance, and mine reconnaissance. A task allocation and optimization framework for networked AUVs that participate as a team to accomplish such missions is developed in this work. These missions entrusted to the AUVs are sometimes critical to human life and property, are bound by severe time and energy constraints, and involve a high degree of inter-vehicular communication. The objective of the framework is to form the best possible team, which is a subset of all deployed AUVs that is best suited to accomplish the mission, while adhering to the constraints. Successful completion of the mission is dependent on effective communication between the networked AUVs and to achieve this a geocasting based networking framework is also proposed.

Research specific to this area has been limited. Hence, a framework based on energy minimization for the team of AUVs to complete the mission in given time bound is proposed. Further, the effect of size of geocast region, effect of underwater current on the choice of geocast region and on localized nature of the problem, and the performance of Propeller Driven Vehicles (PDVs) and gliders is compared.

 
AdviserDario Pompili
SchoolRUTGERS THE STATE UNIVERSITY OF NEW JERSEY - NEW BRUNSWICK
SourceMAI/ 49-01, p. , Sep 2010
Source TypeThesis
SubjectsComputer engineering; Electrical engineering; Ocean engineering
Publication Number1480150
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