Radar Placement Optimization Based on Adaptive Multi-Objective Meta-Heuristics
Citation
TEMA, Emrah Y., Shaaban SAHMOUD & Berna KİRAZ."Radar Placement Optimization Based on Adaptive Multi-Objective Meta-Heuristics". Expert Systems with Applications, 239 (2024):122568.Abstract
Airspace surveillance is a significant issue for many countries to control and manage their airspace. The
number of radars used and their coverage rate are the main issues to consider in this case. Therefore, this
paper addresses the problem of finding the best radar locations to obtain the highest coverage rate with
the least possible number of radars in a certain region. The radar placement problem is considered as a
multi-objective optimization problem with two objectives: the number of radars and the coverage rate. To
perfectly solve this optimization problem, a set of multi-objective meta-heuristic approaches based on simulated
annealing, memory-based steady-state genetic algorithm, a decomposition-based multi-objective algorithm with
differential evolution, and non-dominated sorting genetic algorithm (NSGA-II) are utilized. Algorithms are
tested on a dataset created using DTED-1 map elevation data for two different selected regions. Based on
the results, the NSGA-II algorithm achieves the best results and the highest coverage ratios among the tested
algorithms. Two improved versions of the NSGA-II algorithm are also proposed to enhance its performance and
make it more suitable for solving this optimization problem. The experimental results show that a coverage
rate of 98% could be achieved with a small number of radars, and by increasing the number of radars, it
exceeds 99%.