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New development thoughts on the bio-inspired intelligence based control for unmanned combat aerial vehicle 被引量:33

New development thoughts on the bio-inspired intelligence based control for unmanned combat aerial vehicle
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摘要 Bio-inspired intelligence is in the spotlight in the field of international artificial intelligence,and unmanned combat aerial vehicle(UCAV),owing to its potential to perform dangerous,repetitive tasks in remote and hazardous,is very promising for the technological leadership of the nation and essential for improving the security of society.On the basis of introduction of bioinspired intelligence and UCAV,a series of new development thoughts on UCAV control are proposed,including artificial brain based high-level autonomous control for UCAV,swarm intelligence based cooperative control for multiple UCAVs,hy-brid swarm intelligence and Bayesian network based situation assessment under complicated combating environments, bio-inspired hardware based high-level autonomous control for UCAV,and meta-heuristic intelligence based heterogeneous cooperative control for multiple UCAVs and unmanned combat ground vehicles(UCGVs).The exact realization of the proposed new development thoughts can enhance the effectiveness of combat,while provide a series of novel breakthroughs for the intelligence,integration and advancement of future UCAV systems. Bio-inspired intelligence is in the spotlight in the field of international artificial intelligence,and unmanned combat aerial vehicle(UCAV),owing to its potential to perform dangerous,repetitive tasks in remote and hazardous,is very promising for the technological leadership of the nation and essential for improving the security of society.On the basis of introduction of bioinspired intelligence and UCAV,a series of new development thoughts on UCAV control are proposed,including artificial brain based high-level autonomous control for UCAV,swarm intelligence based cooperative control for multiple UCAVs,hy-brid swarm intelligence and Bayesian network based situation assessment under complicated combating environments, bio-inspired hardware based high-level autonomous control for UCAV,and meta-heuristic intelligence based heterogeneous cooperative control for multiple UCAVs and unmanned combat ground vehicles(UCGVs).The exact realization of the proposed new development thoughts can enhance the effectiveness of combat,while provide a series of novel breakthroughs for the intelligence,integration and advancement of future UCAV systems.
出处 《Science China(Technological Sciences)》 SCIE EI CAS 2010年第8期2025-2031,共7页 中国科学(技术科学英文版)
基金 supported by the National Natural Science Foundation of China(Grant Nos.60975072,60604009) the Aeronautical Science Foundation of China(Grant No.2008ZC01006) Beijing NOVA Program Foundation(Grant No.2007A017) the Fundamental Research Funds for the Central Universities(Grant No.YWF-10-01-A18) the Program for New Century Excellent Talents in University of China(Grant No.NCET-10-0021)
关键词 BIO-INSPIRED INTELLIGENCE unmanned COMBAT aerial vehicle(UCAV) artificial brain autonomous CONTROL bayesian network BIO-INSPIRED hardware heterogeneous cooperative CONTROL bio-inspired intelligence unmanned combat aerial vehicle(UCAV) artificial brain autonomous control bayesian network bio-inspired hardware heterogeneous cooperative control
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