Optimization method improvement for nonlinear constrained single objective system without mathematical models

Optimization problems of nonlinear constrained single objective system are common in engineering and many other fields. Considering practical applications, many optimization methods have been proposed to optimize such systems whose accurate mathematical models are easily constructed. However, as mor...

Full description

Saved in:
Bibliographic Details
Main Authors: HOU Gong-yu, XU Zhe-dong, LIU Xin, NIU Xiao-tong, WANG Qing-le
Format: Article
Language:zho
Published: Science Press 2018-11-01
Series:工程科学学报
Subjects:
Online Access:http://cje.ustb.edu.cn/article/doi/10.13374/j.issn2095-9389.2018.11.014
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1850282682865418240
author HOU Gong-yu
XU Zhe-dong
LIU Xin
NIU Xiao-tong
WANG Qing-le
author_facet HOU Gong-yu
XU Zhe-dong
LIU Xin
NIU Xiao-tong
WANG Qing-le
author_sort HOU Gong-yu
collection DOAJ
description Optimization problems of nonlinear constrained single objective system are common in engineering and many other fields. Considering practical applications, many optimization methods have been proposed to optimize such systems whose accurate mathematical models are easily constructed. However, as more variables are being considered in practical applications, objective systems are becoming more complex, so that corresponding accurate mathematical models are difficult to be constructed. Many previous scholars mainly used back propagation (BP) neural network and basic optimization algorithms to successfully solve systems that are without accurate mathematical models. But the optimization accuracy still needs to be further improved. In addition, samples are needed to solve such system optimization problems. Therefore, to improve the optimization accuracy of nonlinear constrained single objective systems that are without accurate mathematical models while considering the cost of obtaining samples, a new method based on a combination of support vector machine and immune particle swarm optimization algorithm (SVM-IPSO) is proposed. First, the SVM is used to construct the predicted model of nonlinear constrained single objective system. Then, the immune particle swarm algorithm, which incorporates the self-regulatory mechanism of the immune system, is used to optimize the system based on the predicted model. The proposed method is compared with a method based on a combination of BP neural network and particle swarm optimization algorithm (BP-PSO). The optimization effects of the two methods are studied under few training samples by reducing the number of training samples. The simulation results show that the SVM-IPSO has a higher optimization ability under the same sample size conditions, and when the number of samples decreases, the SVM-IPSO method can still obtain more stable and accurate system optimization values than the BP-PSO method. Hence, the SVM-IPSO method provides a new and better solution to this kind of problems.
format Article
id doaj-art-4517c46e2b45416883d5f4d95027670c
institution OA Journals
issn 2095-9389
language zho
publishDate 2018-11-01
publisher Science Press
record_format Article
series 工程科学学报
spelling doaj-art-4517c46e2b45416883d5f4d95027670c2025-08-20T01:47:54ZzhoScience Press工程科学学报2095-93892018-11-0140111402141110.13374/j.issn2095-9389.2018.11.014Optimization method improvement for nonlinear constrained single objective system without mathematical modelsHOU Gong-yuXU Zhe-dong0LIU Xin1NIU Xiao-tong2WANG Qing-le31) School of Mechanics and Civil Engineering, China University of Mining & Technology(Beijing), Beijing 100083, China;1) School of Mechanics and Civil Engineering, China University of Mining & Technology(Beijing), Beijing 100083, China;1) School of Mechanics and Civil Engineering, China University of Mining & Technology(Beijing), Beijing 100083, China;1) School of Mechanics and Civil Engineering, China University of Mining & Technology(Beijing), Beijing 100083, China;Optimization problems of nonlinear constrained single objective system are common in engineering and many other fields. Considering practical applications, many optimization methods have been proposed to optimize such systems whose accurate mathematical models are easily constructed. However, as more variables are being considered in practical applications, objective systems are becoming more complex, so that corresponding accurate mathematical models are difficult to be constructed. Many previous scholars mainly used back propagation (BP) neural network and basic optimization algorithms to successfully solve systems that are without accurate mathematical models. But the optimization accuracy still needs to be further improved. In addition, samples are needed to solve such system optimization problems. Therefore, to improve the optimization accuracy of nonlinear constrained single objective systems that are without accurate mathematical models while considering the cost of obtaining samples, a new method based on a combination of support vector machine and immune particle swarm optimization algorithm (SVM-IPSO) is proposed. First, the SVM is used to construct the predicted model of nonlinear constrained single objective system. Then, the immune particle swarm algorithm, which incorporates the self-regulatory mechanism of the immune system, is used to optimize the system based on the predicted model. The proposed method is compared with a method based on a combination of BP neural network and particle swarm optimization algorithm (BP-PSO). The optimization effects of the two methods are studied under few training samples by reducing the number of training samples. The simulation results show that the SVM-IPSO has a higher optimization ability under the same sample size conditions, and when the number of samples decreases, the SVM-IPSO method can still obtain more stable and accurate system optimization values than the BP-PSO method. Hence, the SVM-IPSO method provides a new and better solution to this kind of problems.http://cje.ustb.edu.cn/article/doi/10.13374/j.issn2095-9389.2018.11.014nonlinear constrained single objective systemsupport vector machineimmune particle swarm optimizationsimulationoptimization
spellingShingle HOU Gong-yu
XU Zhe-dong
LIU Xin
NIU Xiao-tong
WANG Qing-le
Optimization method improvement for nonlinear constrained single objective system without mathematical models
工程科学学报
nonlinear constrained single objective system
support vector machine
immune particle swarm optimization
simulation
optimization
title Optimization method improvement for nonlinear constrained single objective system without mathematical models
title_full Optimization method improvement for nonlinear constrained single objective system without mathematical models
title_fullStr Optimization method improvement for nonlinear constrained single objective system without mathematical models
title_full_unstemmed Optimization method improvement for nonlinear constrained single objective system without mathematical models
title_short Optimization method improvement for nonlinear constrained single objective system without mathematical models
title_sort optimization method improvement for nonlinear constrained single objective system without mathematical models
topic nonlinear constrained single objective system
support vector machine
immune particle swarm optimization
simulation
optimization
url http://cje.ustb.edu.cn/article/doi/10.13374/j.issn2095-9389.2018.11.014
work_keys_str_mv AT hougongyu optimizationmethodimprovementfornonlinearconstrainedsingleobjectivesystemwithoutmathematicalmodels
AT xuzhedong optimizationmethodimprovementfornonlinearconstrainedsingleobjectivesystemwithoutmathematicalmodels
AT liuxin optimizationmethodimprovementfornonlinearconstrainedsingleobjectivesystemwithoutmathematicalmodels
AT niuxiaotong optimizationmethodimprovementfornonlinearconstrainedsingleobjectivesystemwithoutmathematicalmodels
AT wangqingle optimizationmethodimprovementfornonlinearconstrainedsingleobjectivesystemwithoutmathematicalmodels