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Using Genetic Algorithms to Represent Higher-Level Planning in Simulation Models of Conflict
Author(s) -
James Moffat,
Susan Fellows
Publication year - 2010
Publication title -
advances in artificial intelligence
Language(s) - English
Resource type - Journals
eISSN - 1687-7489
pISSN - 1687-7470
DOI - 10.1155/2010/701904
Subject(s) - computer science , planner , process (computing) , representation (politics) , session (web analytics) , basis (linear algebra) , operations research , set (abstract data type) , focus (optics) , information sharing , genetic algorithm , algorithm , industrial engineering , artificial intelligence , machine learning , mathematics , physics , geometry , optics , politics , world wide web , political science , law , programming language , engineering , operating system
The focus of warfare has shifted from the Industrial Age to the Information Age, as encapsulated by the term Network Enabled Capability. This emphasises information sharing, command decision-making, and the resultant plans made by commanders on the basis of that information. Planning by a higher level military commander is, in most cases, regarded as such a difficult process to emulate, that it is performed by a real commander during wargaming or during an experimental session based on a Synthetic Environment. Such an approach gives a rich representation of a small number of data points. However, a more complete analysis should allow search across a wider set of alternatives. This requires a closed-form version of such a simulation. In this paper, we discuss an approach to this problem, based on emulating the higher command process using a combination of game theory and genetic algorithms. This process was initially implemented in an exploratory research initiative, described here, and now forms the basis of the development of a “Mission Planner,” potentially applicable to all of our higher level closed-form simulation models

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