中国科学院机构知识库网格
Chinese Academy of Sciences Institutional Repositories Grid
A feasibility study on applying meta-heuristic optimization and Gaussian process regression for predicting the performance of pantograph-catenary system

文献类型:期刊论文

作者Zhang MH(张莫晗); Yin B(银波); Sun ZX(孙振旭); Bai, Ye; Yang GW(杨国伟)
刊名ACTA MECHANICA SINICA
出版日期2024
卷号40期号:1页码:12
ISSN号0567-7718
关键词Pantograph-catenary system Gaussian process regression Surrogate model Physical-based model
DOI10.1007/s10409-023-23282-x
通讯作者Yin, Bo(yinbo@imech.ac.cn)
英文摘要As the pantograph-catenary system provides electric energy for high-speed trains, it is vital to evaluate the contact force (CF) between pantograph and catenary for stable energy supply. The magnitude and variation range of CF determines the quality of current receiving and safe operation of the train. Therefore, a rapid and accurate prediction of CF is of great significance. However, collecting CF data through experiments is challenging, and obtaining timely results using numerical simulations is not always feasible. In this study, we propose an efficient simulation-based surrogate approach based on Gaussian process regression (GPR), combined with meta-heuristic optimization, to predict key parameters of pantograph-catenary system, which are responsible for the energy transfer quality. Firstly, a pantograph-catenary model is established and validated using finite element method (FEM), which serves to generate training and test data. Secondly, Gaussian process regression is utilized for estimation. A new developed meta-heuristic optimization, i.e., binary hunger game search (HGS), is applied on feature selection. To enhance the performance of HGS, chaos mechanism is embedded, resulting in Chaos-HGS GPR (CHGS-GPR). Finally, the predictive results of CHGS-GPR are evaluated. It is found that the proposed CHGS-GPR provides rather accurate prediction for the mean value of CF, and can be extended to the preliminary design of railway lines, real-time evaluation, and control of train operations.
分类号二类
WOS关键词VEHICLE SUSPENSION
资助项目China National Railway Group Science and Technology Program[N2022T001]
WOS研究方向Engineering ; Mechanics
语种英语
WOS记录号WOS:001150527300004
资助机构China National Railway Group Science and Technology Program
其他责任者Yin, Bo
源URL[http://dspace.imech.ac.cn/handle/311007/94264]  
专题力学研究所_流固耦合系统力学重点实验室(2012-)
推荐引用方式
GB/T 7714
Zhang MH,Yin B,Sun ZX,et al. A feasibility study on applying meta-heuristic optimization and Gaussian process regression for predicting the performance of pantograph-catenary system[J]. ACTA MECHANICA SINICA,2024,40(1):12.
APA 张莫晗,银波,孙振旭,Bai, Ye,&杨国伟.(2024).A feasibility study on applying meta-heuristic optimization and Gaussian process regression for predicting the performance of pantograph-catenary system.ACTA MECHANICA SINICA,40(1),12.
MLA 张莫晗,et al."A feasibility study on applying meta-heuristic optimization and Gaussian process regression for predicting the performance of pantograph-catenary system".ACTA MECHANICA SINICA 40.1(2024):12.

入库方式: OAI收割

来源:力学研究所

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