Surrogate-Assisted Particle Swarm Optimization Algorithm With Pareto Active Learning for Expensive Multi-Objective Optimization

被引:134
作者
Lv, Zhiming [1 ]
Wang, Linqing [1 ]
Han, Zhongyang [1 ]
Zhao, Jun [1 ]
Wang, Wei [1 ]
机构
[1] Dalian Univ Technol, Fac Elect Informat & Elect Engn, Dalian 116024, Peoples R China
关键词
Multiobjective optimization; Pareto active learning; particle swarm optimization (PSO); surrogate;
D O I
10.1109/JAS.2019.1911450
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
For multi-objective optimization problems, particle swarm optimization (PSO) algorithm generally needs a large number of fitness evaluations to obtain the Pareto optimal solutions. However, it will become substantially time-consuming when handling computationally expensive fitness functions. In order to save the computational cost, a surrogate-assisted PSO with Pareto active learning is proposed. In real physical space (the objective functions are computationally expensive), PSO is used as an optimizer, and its optimization results are used to construct the surrogate models. In virtual space, objective functions are replaced by the cheaper surrogate models, PSO is viewed as a sampler to produce the candidate solutions. To enhance the quality of candidate solutions, a hybrid mutation sampling method based on the simulated evolution is proposed, which combines the advantage of fast convergence of PSO and implements mutation to increase diversity. Furthermore, epsilon-Pareto active learning (epsilon-PAL) method is employed to pre-select candidate solutions to guide PSO in the real physical space. However, little work has considered the method of determining parameter epsilon. Therefore, a greedy search method is presented to determine the value of where the number of active sampling is employed as the evaluation criteria of classification cost. Experimental studies involving application on a number of benchmark test problems and parameter determination for multi-input multi-output least squares support vector machines (MLSSVM) are given, in which the results demonstrate promising performance of the proposed algorithm compared with other representative multi-objective particle swarm optimization (MOPSO) algorithms.
引用
收藏
页码:838 / 849
页数:12
相关论文
共 30 条
[1]  
[Anonymous], J MACH LEARN RES
[2]  
[Anonymous], 2008, Tech. Rep.
[3]  
Bittner F, 2013, 2013 IEEE INTERNATIONAL ELECTRIC MACHINES & DRIVES CONFERENCE (IEMDC), P15
[4]   Active Learning of Pareto Fronts [J].
Campigotto, Paolo ;
Passerini, Andrea ;
Battiti, Roberto .
IEEE TRANSACTIONS ON NEURAL NETWORKS AND LEARNING SYSTEMS, 2014, 25 (03) :506-519
[5]   Scheduling Semiconductor Testing Facility by Using Cuckoo Search Algorithm With Reinforcement Learning and Surrogate Modeling [J].
Cao, ZhengCai ;
Lin, ChengRan ;
Zhou, MengChu ;
Huang, Ran .
IEEE TRANSACTIONS ON AUTOMATION SCIENCE AND ENGINEERING, 2019, 16 (02) :825-837
[6]   Aerodynamic shape optimization of aircraft components using an advanced multi-objective evolutionary approach [J].
Da Ronco, Claudio Comis ;
Ponza, Rita ;
Benini, Ernesto .
COMPUTER METHODS IN APPLIED MECHANICS AND ENGINEERING, 2015, 285 :255-290
[7]   Requirements for papers focusing on new or improved global optimization algorithms [J].
Haftka, Raphael T. .
STRUCTURAL AND MULTIDISCIPLINARY OPTIMIZATION, 2016, 54 (01) :1-1
[8]   Real time prediction for converter gas tank levels based on multi-output least square support vector regressor [J].
Han, Zhongyang ;
Liu, Ying ;
Zhao, Jun ;
Wang, Wei .
CONTROL ENGINEERING PRACTICE, 2012, 20 (12) :1400-1409
[9]   Adaptive Multiobjective Particle Swarm Optimization Based on Parallel Cell Coordinate System [J].
Hu, Wang ;
Yen, Gary G. .
IEEE TRANSACTIONS ON EVOLUTIONARY COMPUTATION, 2015, 19 (01) :1-18
[10]   An efficient multi-objective PSO algorithm assisted by Kriging metamodel for expensive black-box problems [J].
Jie, Haoxiang ;
Wu, Yizhong ;
Zhao, Jianjun ;
Ding, Jianwan ;
Liangliang .
JOURNAL OF GLOBAL OPTIMIZATION, 2017, 67 (1-2) :399-423