A trajectory design method for RLV via artificialmemory-principle optimization

A trajectory optimization method for RLV based on artificial memory principles is proposed. Firstly the optimization problem is modelled in Euclidean space. Then in order to solve the complicated optimization problem of RLV in entry phase, Artificial-memory-principle optimization (AMPO) is introduce...

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Main Authors: Li Hao, Wei Changzhu
Format: Article
Language:English
Published: EDP Sciences 2018-01-01
Series:MATEC Web of Conferences
Online Access:https://doi.org/10.1051/matecconf/201818910019
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spelling doaj-c660c09146354fa995fa4f8caf71d9fb2021-02-02T05:55:31ZengEDP SciencesMATEC Web of Conferences2261-236X2018-01-011891001910.1051/matecconf/201818910019matecconf_meamt2018_10019A trajectory design method for RLV via artificialmemory-principle optimizationLi HaoWei ChangzhuA trajectory optimization method for RLV based on artificial memory principles is proposed. Firstly the optimization problem is modelled in Euclidean space. Then in order to solve the complicated optimization problem of RLV in entry phase, Artificial-memory-principle optimization (AMPO) is introduced. AMPO is inspired by memory principles, in which a memory cell consists the whole information of an alternative solution. The information includes solution state and memory state. The former is an evolutional alternative solution, the latter indicates the state type of memory cell: temporary, short-and long-term. In the evolution of optimization, AMPO makes a various search (stimulus) to ensure adaptability, if the stimulus is good, memory state will turn temporary to short-term, even long-term, otherwise it not. Finally, simulation of different methods is carried out respectively. Results show that the method based on AMPO has better performance and high convergence speed when solving complicated optimization problems of RLV.https://doi.org/10.1051/matecconf/201818910019
collection DOAJ
language English
format Article
sources DOAJ
author Li Hao
Wei Changzhu
spellingShingle Li Hao
Wei Changzhu
A trajectory design method for RLV via artificialmemory-principle optimization
MATEC Web of Conferences
author_facet Li Hao
Wei Changzhu
author_sort Li Hao
title A trajectory design method for RLV via artificialmemory-principle optimization
title_short A trajectory design method for RLV via artificialmemory-principle optimization
title_full A trajectory design method for RLV via artificialmemory-principle optimization
title_fullStr A trajectory design method for RLV via artificialmemory-principle optimization
title_full_unstemmed A trajectory design method for RLV via artificialmemory-principle optimization
title_sort trajectory design method for rlv via artificialmemory-principle optimization
publisher EDP Sciences
series MATEC Web of Conferences
issn 2261-236X
publishDate 2018-01-01
description A trajectory optimization method for RLV based on artificial memory principles is proposed. Firstly the optimization problem is modelled in Euclidean space. Then in order to solve the complicated optimization problem of RLV in entry phase, Artificial-memory-principle optimization (AMPO) is introduced. AMPO is inspired by memory principles, in which a memory cell consists the whole information of an alternative solution. The information includes solution state and memory state. The former is an evolutional alternative solution, the latter indicates the state type of memory cell: temporary, short-and long-term. In the evolution of optimization, AMPO makes a various search (stimulus) to ensure adaptability, if the stimulus is good, memory state will turn temporary to short-term, even long-term, otherwise it not. Finally, simulation of different methods is carried out respectively. Results show that the method based on AMPO has better performance and high convergence speed when solving complicated optimization problems of RLV.
url https://doi.org/10.1051/matecconf/201818910019
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AT weichangzhu atrajectorydesignmethodforrlvviaartificialmemoryprincipleoptimization
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AT weichangzhu trajectorydesignmethodforrlvviaartificialmemoryprincipleoptimization
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