A multi-objective multi-memetic algorithm for network-wide conflict-free 4D flight trajectories planning

被引:0
作者
Su YAN [1 ]
Kaiquan CAI [2 ]
机构
[1] School of Electronics and Information Engineering,Beihang University
[2] Beijing Key Laboratory of Network Enabled Collaborative ATM
关键词
Air traffic flow management; 4D trajectory planning; Multi-memetic algorithm; Multi-objective optimization; Network-wide strategic conflict management;
D O I
暂无
中图分类号
V355 [空中管制与飞行调度];
学科分类号
08 ; 0825 ;
摘要
Under the demand of strategic air traffic flow management and the concept of trajectory based operations(TBO),the network-wide 4D flight trajectories planning(N4DFTP) problem has been investigated with the purpose of safely and efficiently allocating 4D trajectories(4DTs)(3D position and time) for all the flights in the whole airway network.Considering that the introduction of large-scale 4DTs inevitably increases the problem complexity,an efficient model for strategiclevel conflict management is developed in this paper.Specifically,a bi-objective N4 DFTP problem that aims to minimize both potential conflicts and the trajectory cost is formulated.In consideration of the large-scale,high-complexity,and multi-objective characteristics of the N4DFTP problem,a multi-objective multi-memetic algorithm(MOMMA) that incorporates an evolutionary global search framework together with three problem-specific local search operators is implemented.It is capable of rapidly and effectively allocating 4DTs via rerouting,target time controlling,and flight level changing.Additionally,to balance the ability of exploitation and exploration of the algorithm,a special hybridization scheme is adopted for the integration of local and global search.Empirical studies using real air traffic data in China with different network complexities show that the proposed MOMMA is effective to solve the N4 DFTP problem.The solutions achieved are competitive for elaborate decision support under a TBO environment.
引用
收藏
页码:1161 / 1173
页数:13
相关论文
共 18 条
[1]  
Strategic flight assignment approach based on multi-objective parallel evolution algorithm with dynamic migration interval[J]. Zhang Xuejun,Guan Xiangmin,Zhu Yanbo,Lei Jiaxing.Chinese Journal of Aeronautics. 2015(02)
[2]  
A strategic flight conflict avoidance approach based on a memetic algorithm[J]. Guan Xiangmin,Zhang Xuejun,Han Dong,Zhu Yanbo,Lv Ji,Su Jing.Chinese Journal of Aeronautics. 2014(01)
[3]  
An empirically grounded agent based simulator for the air traffic management in the SESAR scenario[J] . G. Gurtner,C. Bongiorno,M. Ducci,S. Miccichè.Journal of Air Transport Management . 2017
[4]  
Adequate is better: particle swarm optimization with limited-information[J] . Wen-Bo Du,Yang Gao,Chen Liu,Zheng Zheng,Zhen Wang.Applied Mathematics and Computation . 2015
[5]  
Flight trajectory design in the presence of contrails: Application of a multiphase mixed-integer optimal control approach[J] . Manuel Soler,Bo Zou,Mark Hansen.Transportation Research Part C . 2014
[6]  
An efficient algorithm for smoothing airspace congestion by fine-tuning take-off times[J] . Jenaro Nosedal,Miquel A. Piera,Sergio Ruiz,Alvaro Nosedal.Transportation Research Part C . 2014
[7]  
A 4D-sequencing approach for air traffic management[J] . D. Prot,C. Rapine,S. Constans,R. Fondacci.European Journal of Operational Research . 2014
[8]  
Strategic de-confliction in the presence of a large number of 4D trajectories using a causal modeling approach[J] . Sergio Ruiz,Miquel A. Piera,Jenaro Nosedal,Andrea Ranieri.Transportation Research Part C . 2013
[9]   A light-propagation model for aircraft trajectory planning [J].
Dougui, Nourelhouda ;
Delahaye, Daniel ;
Puechmorel, Stephane ;
Mongeau, Marcel .
JOURNAL OF GLOBAL OPTIMIZATION, 2013, 56 (03) :873-895
[10]  
Relational time-space data structure to enable strategic de-confliction with a global scope in the presence of a large number of 4D trajectories[J] . Lorenzo Castelli,Dirk Schaeffer,Sergio Ruiz,Miquel A. Piera.Journal of Aerospace Operations . 2013 (1-2)