Reliability-based design optimization of crane bridges using Kriging-based surrogate models

被引:0
作者
Xiaoning Fan
Pingfeng Wang
FangFang Hao
机构
[1] Taiyuan University of Science and Technology,Department of Mechanical Engineering
[2] University of Illinois at Urbana Champaign,Department of Industrial and Enterprise Systems Engineering
来源
Structural and Multidisciplinary Optimization | 2019年 / 59卷
关键词
Bridge crane; Design; Reliability; Kriging; Surrogate models;
D O I
暂无
中图分类号
学科分类号
摘要
Cranes as indispensable and important hoisting machines of modern manufacturing and logistics systems have been wildly used in factories, mines, and custom ports. For crane designs, the crane bridge is one of the most critical systems, as its mechanical skeleton bearing and transferring the operational load and the weight of the crane itself thus must be designed with sufficient reliability in order to ensure safe crane services. Due to extremely expensive computational costs, current crane bridge design has been primarily focused either on deterministic design based on conventional design formula with empirical parameters from designers’ experiences or on reliability-based design by employing finite-element analysis. To remove this barrier, the paper presents the study of using an advanced surrogate modeling technique for the reliability-based design of the crane bridge system to address the computational challenges and thus enhance design efficiency. The Kriging surrogate models are first developed for the performance functions for the crane system design and used for the reliability-based design optimization. Comparison studies with existing crane design methods indicated that employing the surrogate models could substantially improve the design efficiency while maintaining good accuracy.
引用
收藏
页码:993 / 1005
页数:12
相关论文
共 82 条
[1]  
Bhosekar A(2018)Advances in surrogate based modeling, feasibility analysis, and optimization: a review Comput Chem Eng 108 250-267
[2]  
Ierapetritou M(2015)A multi-objective reliability-based optimization of the crashworthiness of a metallic-GFRP impact absorber using hybrid approximations Stuct Multidisc Optim 52 827-843
[3]  
Cid Montoya M(2012)Latin hypercube sampling with multidimensional uniformity J Stat Plan Inference 142 763-772
[4]  
Costas M(1998)Ductile structural system reliability analysis using importance sampling Struct Saf 20 137-154
[5]  
Díaz J(2017)Design for a crane metallic structure based on imperialist competitive algorithm and inverse reliability strategy Chin J Mech Eng 30 900-912
[6]  
Deutsch JL(2013)Multiobjective reliability-based optimization for design of a vehicle door Finite Elem Anal Des 67 13-21
[7]  
Deutsch CV(2016)Slope reliability analysis using surrogate models via new support vector machines with swarm intelligence Appl Math Model 40 6105-6120
[8]  
Dey A(2011)Reliability based optimization of laminated composite structures using genetic algorithms and artificial neural networks Struct Saf 33 186-195
[9]  
Mahadevan S(2014)Reliability estimation of washing machine spider assembly via classification Int J Adv Manuf Technol 72 1581-1591
[10]  
Fan X-N(2016)Efficient reliability analysis of laminated composites using advanced Kriging surrogate model Compos Struct 149 26-32