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Formation and adjustment of manned/unmanned combat aerial vehicle cooperative engagement system 被引量:17

Formation and adjustment of manned/unmanned combat aerial vehicle cooperative engagement system
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摘要 Manned combat aerial vehicles (MCAVs), and un-manned combat aerial vehicles (UCAVs) together form a cooper-ative engagement system to carry out operational mission, whichwill be a new air engagement style in the near future. On the basisof analyzing the structure of the MCAV/UCAV cooperative engage-ment system, this paper divides the unique system into three hi-erarchical levels, respectively, i.e., mission level, task-cluster leveland task level. To solve the formation and adjustment problem ofthe latter two levels, three corresponding mathematical modelsare established. To solve these models, three algorithms calledquantum artificial bee colony (QABC) algorithm, greedy strategy(GS) and two-stage greedy strategy (TSGS) are proposed. Finally,a series of simulation experiments are designed to verify the effec-tiveness and superiority of the proposed algorithms. Manned combat aerial vehicles (MCAVs), and un-manned combat aerial vehicles (UCAVs) together form a cooper-ative engagement system to carry out operational mission, whichwill be a new air engagement style in the near future. On the basisof analyzing the structure of the MCAV/UCAV cooperative engage-ment system, this paper divides the unique system into three hi-erarchical levels, respectively, i.e., mission level, task-cluster leveland task level. To solve the formation and adjustment problem ofthe latter two levels, three corresponding mathematical modelsare established. To solve these models, three algorithms calledquantum artificial bee colony (QABC) algorithm, greedy strategy(GS) and two-stage greedy strategy (TSGS) are proposed. Finally,a series of simulation experiments are designed to verify the effec-tiveness and superiority of the proposed algorithms.
出处 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2018年第4期756-767,共12页 系统工程与电子技术(英文版)
基金 supported by the National Natural Science Foundation of China(61573017) the Doctoral Innovation Found of Air Force Engineering University(KGD08101604)
关键词 manned combat aerial vehicle (MCAV) unmannedcombat aerial vehicle (UCAV) cooperative engagement system quantum artificial bee colony (QABC) greedy strategy (GS) two-stage greedy strategy (TSGS) manned combat aerial vehicle (MCAV) unmannedcombat aerial vehicle (UCAV) cooperative engagement system quantum artificial bee colony (QABC) greedy strategy (GS) two-stage greedy strategy (TSGS)
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