TY - GEN
T1 - Surrogate Assisted Efficient Multi-objective Optimization for an Observation Satellite Constellation
AU - Li, Xuan
AU - Shi, Renhe
AU - Yixing, Song
AU - Xie, Zeyang
AU - Zhang, Baoshou
N1 - Publisher Copyright:
© Beijing HIWING Scientific and Technological Information Institute 2025.
PY - 2025
Y1 - 2025
N2 - Observation satellite constellation uses onboard remote sensors to cooperatively obtain the ground information from space, which has been widely used in Earth resource detection and military reconnaissance. To efficiently improve both the resolution and coverage performances of the observation satellite constellation, a surrogate-assisted efficient multi-objective optimization scheme is developed in this paper. The multi-objective optimization problem is defined at first to simultaneously improve the payload resolution and coverage performance. To reduce the computational cost for constellation multi-objective optimization, a radial basis function assisted non-dominated sorting genetic algorithm II method (RBF-NSGA-II) is proposed. In this approach, RBF surrogate is used to approximate the expensive constellation simulation model for optimization. During the optimization process, the surrogate is adaptively refined via k-means clustering method, which leads the search to the Pareto frontier rapidly. Finally, the proposed RBF-NSGA-II is applied to the constellation multi-objective optimization problem compared with the standard NSGA-II algorithm. The optimization results indicate that RBF-NAGA-II outperforms the competitive NSGA-II in terms of the hypervolume index. Moreover, the optimization cost of RBF-NSGA-II is reduced by 75%, which demonstrates the efficiency of the proposed method. After RBF-NSGA-II based optimization, 169 feasible Pareto solutions are obtained. Compared with the initial solution, the coverage rate of the optimized constellation configuration is increased by 37.08% at most. At the same time, the resolution is increased by 47.22% at most. The optimization results illustrate the effectiveness and practicability of the surrogate-assisted multi-objective optimization scheme for the studied observation satellite constellation.
AB - Observation satellite constellation uses onboard remote sensors to cooperatively obtain the ground information from space, which has been widely used in Earth resource detection and military reconnaissance. To efficiently improve both the resolution and coverage performances of the observation satellite constellation, a surrogate-assisted efficient multi-objective optimization scheme is developed in this paper. The multi-objective optimization problem is defined at first to simultaneously improve the payload resolution and coverage performance. To reduce the computational cost for constellation multi-objective optimization, a radial basis function assisted non-dominated sorting genetic algorithm II method (RBF-NSGA-II) is proposed. In this approach, RBF surrogate is used to approximate the expensive constellation simulation model for optimization. During the optimization process, the surrogate is adaptively refined via k-means clustering method, which leads the search to the Pareto frontier rapidly. Finally, the proposed RBF-NSGA-II is applied to the constellation multi-objective optimization problem compared with the standard NSGA-II algorithm. The optimization results indicate that RBF-NAGA-II outperforms the competitive NSGA-II in terms of the hypervolume index. Moreover, the optimization cost of RBF-NSGA-II is reduced by 75%, which demonstrates the efficiency of the proposed method. After RBF-NSGA-II based optimization, 169 feasible Pareto solutions are obtained. Compared with the initial solution, the coverage rate of the optimized constellation configuration is increased by 37.08% at most. At the same time, the resolution is increased by 47.22% at most. The optimization results illustrate the effectiveness and practicability of the surrogate-assisted multi-objective optimization scheme for the studied observation satellite constellation.
KW - multi-objective optimization
KW - satellite constellation optimization
KW - surrogate based optimization
UR - http://www.scopus.com/pages/publications/105002467917
U2 - 10.1007/978-981-96-3592-4_16
DO - 10.1007/978-981-96-3592-4_16
M3 - Conference contribution
AN - SCOPUS:105002467917
SN - 9789819635917
T3 - Lecture Notes in Electrical Engineering
SP - 149
EP - 159
BT - Proceedings of 4th 2024 International Conference on Autonomous Unmanned Systems, 4th ICAUS 2024 - Volume VII
A2 - Liu, Lianqing
A2 - Niu, Yifeng
A2 - Fu, Wenxing
A2 - Qu, Yi
PB - Springer Science and Business Media Deutschland GmbH
T2 - 4th International Conference on Autonomous Unmanned Systems, ICAUS 2024
Y2 - 19 September 2024 through 21 September 2024
ER -