Self-Adaptive Genetic Algorithm For Bucket Wheel Reclaimer Real-Parameter Optimization

Bucket wheel reclaimer (BWR) is a complex engineering machine widely used in the open pit mine; it is characterized by the low efficiency and high maintenance cost. The boom, namely a typical framework structure, is a core component of BWR, which affects the performance of the BWR directly. For addr...

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Main Authors: Yongliang Yuan, Guohu Wang
Format: Article
Language:English
Published: IEEE 2019-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/8685150/
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spelling doaj-9800371b2fcb44b59850108f44fbfe3c2021-03-29T22:32:00ZengIEEEIEEE Access2169-35362019-01-017477624776810.1109/ACCESS.2019.29101858685150Self-Adaptive Genetic Algorithm For Bucket Wheel Reclaimer Real-Parameter OptimizationYongliang Yuan0https://orcid.org/0000-0002-4551-7797Guohu Wang1https://orcid.org/0000-0002-6330-2271School of Mechanical Engineering, Dalian University of Technology, Dalian, ChinaSchool of Mechatronics Engineering, Zhengzhou University of Industrial Technology, Zhengzhou, ChinaBucket wheel reclaimer (BWR) is a complex engineering machine widely used in the open pit mine; it is characterized by the low efficiency and high maintenance cost. The boom, namely a typical framework structure, is a core component of BWR, which affects the performance of the BWR directly. For addressing this issue, this paper proposes a self-adaptive genetic algorithm (AGA) to improve the performance of the genetic algorithm (GA). The standard genetic algorithm has been improved to enhance the optimization efficiency, because the optimization problem is believed to be highly non-linear. The AGA has been verified by two framework structures, and the results of AGA are compared with the corresponding results of previous literature. Furthermore, the AGA is applied to obtain the optimal size and shape of the BWR boom by taking the BWR boom as a space framework structure, and improve BWR's performance by meeting the requirements of the intensity and rigidity. The results show that the improved genetic algorithm has a higher efficiency than the standard GA. The structure optimization of the BWR boom is performed using the AGA. From the optimization, BWR boom's weight decreases by 23.46% from the initial weight.https://ieeexplore.ieee.org/document/8685150/Bucket wheel reclaimerframework structureimproved genetic algorithmstructural shape optimization
collection DOAJ
language English
format Article
sources DOAJ
author Yongliang Yuan
Guohu Wang
spellingShingle Yongliang Yuan
Guohu Wang
Self-Adaptive Genetic Algorithm For Bucket Wheel Reclaimer Real-Parameter Optimization
IEEE Access
Bucket wheel reclaimer
framework structure
improved genetic algorithm
structural shape optimization
author_facet Yongliang Yuan
Guohu Wang
author_sort Yongliang Yuan
title Self-Adaptive Genetic Algorithm For Bucket Wheel Reclaimer Real-Parameter Optimization
title_short Self-Adaptive Genetic Algorithm For Bucket Wheel Reclaimer Real-Parameter Optimization
title_full Self-Adaptive Genetic Algorithm For Bucket Wheel Reclaimer Real-Parameter Optimization
title_fullStr Self-Adaptive Genetic Algorithm For Bucket Wheel Reclaimer Real-Parameter Optimization
title_full_unstemmed Self-Adaptive Genetic Algorithm For Bucket Wheel Reclaimer Real-Parameter Optimization
title_sort self-adaptive genetic algorithm for bucket wheel reclaimer real-parameter optimization
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2019-01-01
description Bucket wheel reclaimer (BWR) is a complex engineering machine widely used in the open pit mine; it is characterized by the low efficiency and high maintenance cost. The boom, namely a typical framework structure, is a core component of BWR, which affects the performance of the BWR directly. For addressing this issue, this paper proposes a self-adaptive genetic algorithm (AGA) to improve the performance of the genetic algorithm (GA). The standard genetic algorithm has been improved to enhance the optimization efficiency, because the optimization problem is believed to be highly non-linear. The AGA has been verified by two framework structures, and the results of AGA are compared with the corresponding results of previous literature. Furthermore, the AGA is applied to obtain the optimal size and shape of the BWR boom by taking the BWR boom as a space framework structure, and improve BWR's performance by meeting the requirements of the intensity and rigidity. The results show that the improved genetic algorithm has a higher efficiency than the standard GA. The structure optimization of the BWR boom is performed using the AGA. From the optimization, BWR boom's weight decreases by 23.46% from the initial weight.
topic Bucket wheel reclaimer
framework structure
improved genetic algorithm
structural shape optimization
url https://ieeexplore.ieee.org/document/8685150/
work_keys_str_mv AT yongliangyuan selfadaptivegeneticalgorithmforbucketwheelreclaimerrealparameteroptimization
AT guohuwang selfadaptivegeneticalgorithmforbucketwheelreclaimerrealparameteroptimization
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