Path Planning under Dynamic Threat Environment

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This paper studies the solution to combat aircrafts path planning problem in confrontational battle space. First of all, according to the dynamic movement characteristics of emergent threats, a path planning target function model is built based on dynamic threat; then based on the defects of basic genetic algorithm, a kind of improved genetic algorithm based on predatory search strategies is further designed; finally the model and the algorithm are tested effective by simulation verification.

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1790-1794

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March 2014

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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