Treffer: Minimum-Fuel Low-Thrust Trajectory Optimization via a Direct Adaptive Evolutionary Approach

Title:
Minimum-Fuel Low-Thrust Trajectory Optimization via a Direct Adaptive Evolutionary Approach
Authors:
Source:
BIRD. BCAM's Institutional Repository Data
instname
Publisher Information:
Institute of Electrical and Electronics Engineers (IEEE), 2024.
Publication Year:
2024
Document Type:
Fachzeitschrift Article
File Description:
application/pdf
ISSN:
2371-9877
0018-9251
DOI:
10.1109/taes.2023.3335906
Rights:
IEEE Copyright
CC BY NC SA
Accession Number:
edsair.doi.dedup.....7a9c2bcc4a6461e437edd3b7475ee68f
Database:
OpenAIRE

Weitere Informationen

Space missions with low-thrust propulsion systems are of appreciable interest to space agencies because of their practicality due to higher specific impulses. This research proposes a technique to the solution of minimum-fuel non-coplanar orbit transfer problem. A direct adaptive method via Fitness Landscape Analysis (FLA) is coupled with a constrained evolutionary technique to explore the solution space for designing low-thrust orbit transfer trajectories. Taking advantage of the solution for multi-impulse orbit transfer problem, and parameterization of thrust vector, the orbital maneuver is transformed into a constrained continuous optimization problem. A constrained Estimation of Distribution Algorithms (EDA) is utilized to discover optimal transfer trajectories, while maintaining feasibility of the solutions. The low-thrust trajectory optimization problem is characterized via three parameters, referred to as problem identifiers, and the dispersion metric is utilized for analyzing the complexity of the solution domain. Two adaptive operators including the kernel density and outlier detection distance threshold within the framework of the employed EDA are developed, which work based on the landscape feature of the orbit transfer problem. Simulations are proposed to validate the efficacy of the proposed methodology in comparison to the non-adaptive approach. Results indicate that the adaptive approach possesses more feasibility ratio and higher optimality of the obtained solutions.
BEAZ Bizkaia, 3/12/DP/2021/00150; SPRI Group, Ekintzaile Program EK-00112-2021