Linear Array Pattern Synthesis Using An Improved Multiobjective Genetic Algorithm

In this paper, we propose an improved nondominated sorting genetic algorithm-II with scope constrained (INSGA-II/SC) with three modifications, which are dynamic nondomination strategy, scope-constrained strategy, and front uniformly distributed strategy. Here, the metric for multiobjective optimizat...

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Main Authors: C. Han, L. Wang, Z. Zhang, J. Xie, Z. Xing
Format: Article
Language:English
Published: Spolecnost pro radioelektronicke inzenyrstvi 2017-12-01
Series:Radioengineering
Subjects:
Online Access:https://www.radioeng.cz/fulltexts/2017/17_04_1048_1059.pdf
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spelling doaj-7447b224b7334be99f6f0d063cbb5e1d2020-11-24T23:25:35ZengSpolecnost pro radioelektronicke inzenyrstviRadioengineering1210-25122017-12-0126410481059Linear Array Pattern Synthesis Using An Improved Multiobjective Genetic AlgorithmC. HanL. WangZ. ZhangJ. XieZ. XingIn this paper, we propose an improved nondominated sorting genetic algorithm-II with scope constrained (INSGA-II/SC) with three modifications, which are dynamic nondomination strategy, scope-constrained strategy, and front uniformly distributed strategy. Here, the metric for multiobjective optimization mainly focuses on the computation complexity, convergence, and diversity of the final solutions. For a large search space in the initial process and a fast convergence in the last process, dynamic nondomination factor is considered in the rank operator. We can find a manageable number of Pareto solutions that are in the constrained scope instead of the entire Pareto front (PF) to reduce the computation complexity by scope-constrained strategy. In order to obtain a high performance for good representatives of the entire PF, the solutions closer to the uniformly distributed points on the current front will be chosen. In this paper, the proposed methods and two efficient multiobjective optimization methods are used for the optimization of mathematical problems and array pattern synthesis with lower side lobe level (SLL) and null. Numerical examples show that INSGA-II/SC has a high performance of diversity and convergence for the final solutions when compared with the other techniques published in the literature.https://www.radioeng.cz/fulltexts/2017/17_04_1048_1059.pdfMultiobjective optimizationconvergencediversityarray pattern synthesisgenetic algorithm
collection DOAJ
language English
format Article
sources DOAJ
author C. Han
L. Wang
Z. Zhang
J. Xie
Z. Xing
spellingShingle C. Han
L. Wang
Z. Zhang
J. Xie
Z. Xing
Linear Array Pattern Synthesis Using An Improved Multiobjective Genetic Algorithm
Radioengineering
Multiobjective optimization
convergence
diversity
array pattern synthesis
genetic algorithm
author_facet C. Han
L. Wang
Z. Zhang
J. Xie
Z. Xing
author_sort C. Han
title Linear Array Pattern Synthesis Using An Improved Multiobjective Genetic Algorithm
title_short Linear Array Pattern Synthesis Using An Improved Multiobjective Genetic Algorithm
title_full Linear Array Pattern Synthesis Using An Improved Multiobjective Genetic Algorithm
title_fullStr Linear Array Pattern Synthesis Using An Improved Multiobjective Genetic Algorithm
title_full_unstemmed Linear Array Pattern Synthesis Using An Improved Multiobjective Genetic Algorithm
title_sort linear array pattern synthesis using an improved multiobjective genetic algorithm
publisher Spolecnost pro radioelektronicke inzenyrstvi
series Radioengineering
issn 1210-2512
publishDate 2017-12-01
description In this paper, we propose an improved nondominated sorting genetic algorithm-II with scope constrained (INSGA-II/SC) with three modifications, which are dynamic nondomination strategy, scope-constrained strategy, and front uniformly distributed strategy. Here, the metric for multiobjective optimization mainly focuses on the computation complexity, convergence, and diversity of the final solutions. For a large search space in the initial process and a fast convergence in the last process, dynamic nondomination factor is considered in the rank operator. We can find a manageable number of Pareto solutions that are in the constrained scope instead of the entire Pareto front (PF) to reduce the computation complexity by scope-constrained strategy. In order to obtain a high performance for good representatives of the entire PF, the solutions closer to the uniformly distributed points on the current front will be chosen. In this paper, the proposed methods and two efficient multiobjective optimization methods are used for the optimization of mathematical problems and array pattern synthesis with lower side lobe level (SLL) and null. Numerical examples show that INSGA-II/SC has a high performance of diversity and convergence for the final solutions when compared with the other techniques published in the literature.
topic Multiobjective optimization
convergence
diversity
array pattern synthesis
genetic algorithm
url https://www.radioeng.cz/fulltexts/2017/17_04_1048_1059.pdf
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