Satellite Constellation Orbit Design Optimization with Combined Genetic Algorithm and Semianalytical Approach

This paper focuses on maximizing the percent coverage and minimizing the revisit time for a small satellite constellation with limited coverage. A target area represented by a polygon defined by grid points is chosen instead of using a target point only. The constellation consists of nonsymmetric an...

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Main Authors: Tania Savitri, Youngjoo Kim, Sujang Jo, Hyochoong Bang
Format: Article
Language:English
Published: Wiley 2017-01-01
Series:International Journal of Aerospace Engineering
Online Access:http://dx.doi.org/10.1155/2017/1235692
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author Tania Savitri
Youngjoo Kim
Sujang Jo
Hyochoong Bang
author_facet Tania Savitri
Youngjoo Kim
Sujang Jo
Hyochoong Bang
author_sort Tania Savitri
collection DOAJ
description This paper focuses on maximizing the percent coverage and minimizing the revisit time for a small satellite constellation with limited coverage. A target area represented by a polygon defined by grid points is chosen instead of using a target point only. The constellation consists of nonsymmetric and circular Low Earth Orbit (LEO) satellites. A global optimization method, Genetic Algorithm (GA), is chosen due to its ability to locate a global optimum solution for nonlinear multiobjective problems. From six orbital elements, five elements (semimajor axis, inclination, argument of perigee, longitude of ascending node, and mean anomaly) are varied as optimization design variables. A multiobjective optimization study is conducted in this study with percent coverage and revisit time as the two main parameters to analyze the performance of the constellation. Some efforts are made to improve the objective function and to minimize the computational load. A semianalytical approach is implemented to speed up the guessing of initial orbital elements. To determine the best parametric operator combinations, the fitness value and the computational time from each study cases are compared.
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id doaj-art-6ca9befd84b94a72a62d060ed9d5c43b
institution Kabale University
issn 1687-5966
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language English
publishDate 2017-01-01
publisher Wiley
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series International Journal of Aerospace Engineering
spelling doaj-art-6ca9befd84b94a72a62d060ed9d5c43b2025-02-03T05:47:58ZengWileyInternational Journal of Aerospace Engineering1687-59661687-59742017-01-01201710.1155/2017/12356921235692Satellite Constellation Orbit Design Optimization with Combined Genetic Algorithm and Semianalytical ApproachTania Savitri0Youngjoo Kim1Sujang Jo2Hyochoong Bang3Department of Aerospace Engineering, Korea Advanced Institute of Science and Technology (KAIST), Daejeon 305-701, Republic of KoreaDepartment of Aerospace Engineering, Korea Advanced Institute of Science and Technology (KAIST), Daejeon 305-701, Republic of KoreaKorea Aerospace Research Institute (KARI), Daejeon 305-701, Republic of KoreaDepartment of Aerospace Engineering, Korea Advanced Institute of Science and Technology (KAIST), Daejeon 305-701, Republic of KoreaThis paper focuses on maximizing the percent coverage and minimizing the revisit time for a small satellite constellation with limited coverage. A target area represented by a polygon defined by grid points is chosen instead of using a target point only. The constellation consists of nonsymmetric and circular Low Earth Orbit (LEO) satellites. A global optimization method, Genetic Algorithm (GA), is chosen due to its ability to locate a global optimum solution for nonlinear multiobjective problems. From six orbital elements, five elements (semimajor axis, inclination, argument of perigee, longitude of ascending node, and mean anomaly) are varied as optimization design variables. A multiobjective optimization study is conducted in this study with percent coverage and revisit time as the two main parameters to analyze the performance of the constellation. Some efforts are made to improve the objective function and to minimize the computational load. A semianalytical approach is implemented to speed up the guessing of initial orbital elements. To determine the best parametric operator combinations, the fitness value and the computational time from each study cases are compared.http://dx.doi.org/10.1155/2017/1235692
spellingShingle Tania Savitri
Youngjoo Kim
Sujang Jo
Hyochoong Bang
Satellite Constellation Orbit Design Optimization with Combined Genetic Algorithm and Semianalytical Approach
International Journal of Aerospace Engineering
title Satellite Constellation Orbit Design Optimization with Combined Genetic Algorithm and Semianalytical Approach
title_full Satellite Constellation Orbit Design Optimization with Combined Genetic Algorithm and Semianalytical Approach
title_fullStr Satellite Constellation Orbit Design Optimization with Combined Genetic Algorithm and Semianalytical Approach
title_full_unstemmed Satellite Constellation Orbit Design Optimization with Combined Genetic Algorithm and Semianalytical Approach
title_short Satellite Constellation Orbit Design Optimization with Combined Genetic Algorithm and Semianalytical Approach
title_sort satellite constellation orbit design optimization with combined genetic algorithm and semianalytical approach
url http://dx.doi.org/10.1155/2017/1235692
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AT youngjookim satelliteconstellationorbitdesignoptimizationwithcombinedgeneticalgorithmandsemianalyticalapproach
AT sujangjo satelliteconstellationorbitdesignoptimizationwithcombinedgeneticalgorithmandsemianalyticalapproach
AT hyochoongbang satelliteconstellationorbitdesignoptimizationwithcombinedgeneticalgorithmandsemianalyticalapproach