Multi-objective optimization for placing airspace surveillance observers
Abstract
Reconnaissance is an important aspect of military planning. Tools that help an alysts monitor and make informed choices are vital for avoiding costly situations.
The use of ground-based radar sensors is a common method for monitoring for both
land-based and airborne threats. Manually finding optimal locations to install sen sors within an area of terrain can be difficult and time intensive, particularly when
multiple objectives exist. The purpose of this thesis is to implement and compare
two heuristic algorithms for automatically generating a set of optimal locations for
airspace surveillance sensors. The algorithms seek to find solutions that maximize
both total area coverage and coverage of a specific area of interest. They also seek so lutions that minimize sensor overlap and price. The research problem was formulated
into a multi-objective optimization. The two algorithms tested include the NSGA-II
and a multi-objective Ant Colony Algorithm (MOACO). A population-halving aug mentation and the Multi-resolution Approach (MRA) developed by Heyns [1] were
also applied to see if algorithm run time could be reduced without impacting final
solution quality. The NSGA-II outperformed the MOACO algorithm with respect to
diversity of the final solution set, however the algorithms performed similarly with
respect to run time and convergence. It was found that population-halving and the
MRA could result in computation time reduction for the tested scenario, however
not at a significant level.
Degree
Student essay
Collections
View/ Open
Date
2021-08-13Author
Anderson, Amanda
Keywords
Facility location
multi-objective optimization
ant colony algorithm
genetic algorithm
pareto optimal
observer placement
3D viewshed
Language
eng