Journal of Systems Engineering and Electronics ›› 2022, Vol. 33 ›› Issue (5): 1123-1134.doi: 10.23919/JSEE.2022.000109
收稿日期:
2021-04-01
出版日期:
2022-10-27
发布日期:
2022-10-27
Jun TANG1(), Gang LIU2,*(), Qingtao PAN1()
Received:
2021-04-01
Online:
2022-10-27
Published:
2022-10-27
Contact:
Gang LIU
E-mail:tangjun06@nudt.edu.cn;liugang@hnist.edu.cn;panqingtao@nudt.edu.cn
About author:
Supported by:
. [J]. Journal of Systems Engineering and Electronics, 2022, 33(5): 1123-1134.
Jun TANG, Gang LIU, Qingtao PAN. Review on artificial intelligence techniques for improving representative air traffic management capability[J]. Journal of Systems Engineering and Electronics, 2022, 33(5): 1123-1134.
"
Time | Control technology | Flight characteristic | Navigation characteristic |
1929?1934 | Visual flight rules | Fewer planes, shorter voyages and slower speeds | Flag and gun |
1934?1945 | Procedure control system | More aircraft, faster speed, mainly military flights | Air traffic control center, tower, terminal |
1945?1980s | Radar control | Fast speed, long voyages, more flights | Primary radar, secondary surveillance radar |
1980s? | Air-ground cooperative ATC | Airway/airport congestion, developed airborne equipment | Satellite technology |
"
Method | Expert system | Knowledge engineering | Agent-model | Machine learning/ deep learning | Mathematical | Others (distributed, IT, etc.) | Year |
Gosling [ | √ | √ | ? | ? | ? | √ | 1990 |
Li et al. [ | √ | √ | ? | ? | ? | ? | 1997 |
Krishnan et al. [ | ? | ? | ? | √ | ? | √ | 2012 |
Findler et al. [ | ? | √ | ? | ? | ? | √ | 1991 |
Mever et al. [ | ? | √ | ? | ? | ? | √ | 2013 |
Kuchar et al. [ | ? | ? | ? | ? | √ | ? | 2000 |
Radanovic et al. [ | ? | ? | ? | ? | √ | ? | 2018 |
Jilkov et al. [ | ? | ? | ? | ? | √ | ? | 2018 |
Isaacson et al. [ | √ | √ | ? | ? | ? | √ | 2001 |
Tran et al. [ | ? | ? | √ | ? | ? | √ | 2019 |
Kulkani et al. [ | ? | ? | ? | √ | ? | √ | 2015 |
Klüver et al. [ | ? | ? | ? | √ | ? | √ | 2017 |
"
Method | [Multi-agent, machine learning] | [Centralized, decentralized] | Collaboration with airspace users | Multi-objective optimization | [Time uncertainty, small training set] | Intelligent optimization algorithm | Multilevel grid spatiotemporal index | [Multi-agent, machine learning] | Year |
Jarvis et al. [ | [√, ?] | [√, ?] | √ | ? | [?, ?] | √ | ? | [√, ?] | 2010 |
Schefers et al. [ | [?, ?] | [√, ?] | ? | √ | [√, ?] | ? | ? | [?, ?] | 2018 |
Wu et al. [ | [?, ?] | [√, ?] | ? | √ | [?, ?] | √ | ? | [?, ?] | 2018 |
Cao et al. [ | [?,√] | [√, ?] | ? | ? | [?,√] | ? | ? | [?,√] | 2018 |
Miao et al. [ | [?, ?] | [√, ?] | ? | ? | [?, ?] | ? | √ | [?, ?] | 2019 |
Agogino et al. [ | [√,√] | [?,√] | ? | ? | [?,?] | ? | ? | [√,√] | 2012 |
McCrea et al. [ | [?, ?] | [√, ?] | ? | ? | [?, ?] | ? | ? | [?, ?] | 2008 |
Cruciol et al. [ | [?,√] | [√, ?] | ? | ? | [?, ?] | ? | ? | [?,√] | 2015 |
Yu et al. [ | [?,√] | [?, ?] | ? | ? | [?, ?] | ? | ? | [?,√] | 2019 |
Wang et al. [ | [?,√] | [√, ?] | ? | ? | [?, ?] | ? | ? | [?,√] | 2017 |
Schirmer et al. [ | [?, ?] | [√, ?] | ? | ? | [?, ?] | √ | ? | [?, ?] | 2018 |
Gerdes et al. [ | [?, ?] | [√, ?] | ? | ? | [?, ?] | √ | ? | [?, ?] | 2018 |
Insaurralde et al. [ | [?, ?] | [?, ?] | ? | ? | [?, ?] | √ | ? | [?, ?] | 2017 |
Kravaris et al. [ | [?, √] | [√, ?] | ? | ? | [?, ?] | ? | ? | [?, √] | 2017 |
Cai et al. [ | [?, ?] | [√, ?] | ? | ? | [?, ?] | √ | ? | [?, ?] | 2012 |
"
Method | Reinforcement learning | Automata theory | Intelligent agents | Swarm theory | [Environment, Human] | Capacity | Delay | Cost | Year |
Pechoucek et al. [ | √ | ? | ? | ? | [√, √] | ? | ? | ? | 2006 |
Tumer et al. [ | √ | ? | ? | ? | [?, ?] | √ | ? | ? | 2007 |
Wolfe et al. [ | √ | ? | ? | ? | [?, √] | ? | ? | ? | 2009 |
Li et al. [ | √ | ? | ? | ? | [√, ?] | ? | √ | ? | 2010 |
Crespo et al. [ | √ | ? | ? | ? | [?, ?] | √ | √ | ? | 2017 |
Cruciol et al. [ | √ | ? | ? | ? | [?, √] | √ | ? | ? | 2013 |
Bayen et al. [ | ? | √ | ? | ? | [√, ?] | √ | √ | ? | 2003 |
Wolfe et al. [ | ? | ? | √ | ? | [?, ?] | ? | √ | √ | 2007 |
Torres et al. [ | ? | ? | ? | √ | [√, ?] | ? | √ | √ | 2012 |
"
Method | [Machine learning, neural network] | Agent | Data fusion | Others | Airplane | UAV | Year |
Apiecionek et al. [ | [?, ?] | ? | √ | √ | √ | ? | 2015 |
Sanchez-Lopez et al. [ | [?, ?] | √ | ? | √ | ? | √ | 2016 |
Bouwmeester et al. [ | [?, ?] | ? | √ | ? | √ | √ | 2015 |
Sinopoli et al. [ | [?, ?] | ? | √ | ? | ? | √ | 2001 |
Khansari-Zadeh et al. [ | [√, √] | ? | √ | ? | √ | ? | 2011 |
Wu et al. [ | [?, ?] | ? | √ | √ | ? | √ | 2005 |
Zhilenkov et al. [ | [?, √] | ? | √ | ? | ? | √ | 2018 |
Popova et al. [ | [?, ?] | ? | √ | √ | ? | √ | 2016 |
Kochenderfer et al. [ | [√, ?] | ? | ? | ? | √ | ? | 2012 |
Durand et al. [ | [?, √] | ? | ? | ? | √ | ? | 2000 |
Sislak et al. [ | [?, ?] | √ | ? | ? | √ | ? | 2011 |
Schetinin et al. [ | [√, ?] | ? | ? | √ | √ | ? | 2018 |
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