Using a genetic algorithm to solve the troops-to-tasks problem in military operations planning

Forfatter
Fauske, Maria Fleischer
Publisert
2017
Emneord
Militære operasjoner
Planlegging
Genetiske algoritmer
Permalenke
http://hdl.handle.net/20.500.12242/824
https://ffi-publikasjoner.archive.knowledgearc.net/handle/20.500.12242/824
DOI
10.1177/1548512917711310
Samling
Articles
Description
Fauske, Maria Fleischer. Using a genetic algorithm to solve the troops-to-tasks problem in military operations planning. The Journal of Defence Modeling and Simulation: Applications, Methodology, Technology 2017 ;Volum 14.(4) s. 439-446.
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Sammendrag
The troops-to-tasks analysis in military operational planning is the process where the military staff investigates who should do what, where, and when in the operation. In this paper, we describe a genetic algorithm for solving troops-to-tasks problems, which are typically solved manually. The study was motivated by a request from Norwegian military staff, who acknowledged the potential for solving the troops-to-tasks analysis more effectively by using optimization techniques. Also, NATO’s operational planning tool, TOPFAS, lacks an optimization module for the troops-to-tasks analysis. The troops-to-tasks problem generalizes the well-known resource-constrained project scheduling problem, and thus it is very difficult to solve. As the troops-to-tasks problem is particularly complex, the main purpose of our study was to develop an algorithm capable of solving real-sized problem instances. We developed a genetic algorithm with new features, which were crucial to finding good solutions. We tested the algorithm on two different data sets representing high-intensity military operations. We compared the performance of the algorithm to that of a mixed integer linear program solved by CPLEX. In contrast to CPLEX, the algorithm found feasible solutions within an acceptable time frame for all instances.
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